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1 FINANCIAL DEVELOPMENT AND ECONOMIC GROWTH IN NIGERIA BY OSUJI CHRISTIAN OBINNA REG. NO: PG/M.Sc/07/42809 DEPARTMENT OF ECONOMICS UNIVERSITY OF NIGERIA, NSUKKA APRIL, 2010 i TITLE PAGE FINANCIAL DEVELOPMENT AND ECONOMIC GROWTH IN NIGERIA BY OSUJI CHRISTIAN OBINNA REG. NO: PG/M.Sc/07/42809 AN M.SC PROJECT SUBMITTED TO DEPARTMENT OF ECONOMICS, UNIVERSITY OF NIGERIA, NSUKKA, IN PARTIAL FULFILLMENT OF THE REQUIREMENTS FOR THE AWARD OF MASTER OF SCIENCE (M.SC) DEGREE IN ECONOMICS APRIL, 2010 ii CERTIFICATION This is to certify that Osuji Obinna Christian, a post-graduate student of the Department of Economics, University of Nigeria, Nsukka, and whose registration number is PG/M.SC/07/42809 has satisfactorily completed the requirement for the award of Master of Science (M.SC) in Economics. -------------------------------MR. J. O OLERU SUPERVISOR -------------------------------PROF C.C AGU Head of Department iii APPROVAL PAGE This project has been approved for the award of the Degree of Master of Science (M.SC) of the Department of Economics, University of Nigeria Nsukka. -------------------------------MR. J. O OLERU SUPERVISOR -------------------------------PROF C.C AGU Head of Department -------------------------------Prof (Mrs.) Patience Onokala Dean, Faculty of Social Sciences -------------------------------External Examiner iv DEDICATION To my hardworking, industrious, resourceful and resilient mother who sacrificed all she had to ensure that I tread on the path which she never trod. v ACKNOWLEDGEMENT To Almighty God who laid the foundation of my education and enabled me to read and understand, I give praise, lord may your name be praised both now and ever. Amen! I appreciate the contribution of my supervisor Mr. J. O Oleru who amidst his tight schedules made out time to scrutinize, correct and guide me throughout the duration I wrote this project. I sincerely thank all my lecturers in the department of economics, Prof’s Agu, Onah, Ikpeze, Rev Dr (Fr.) Ichoku, Dr Amuka, Dr Asogwa, Dr Moses O, Dr Fonta W, E. O Onyeukwu, Urama N, for their commitment and handwork. I also appreciate all the non-academic staff in the Dept. My immeasurable thanks go to my Uncle Mr. Osuji Ndubuisi for his unprecedented love and providence. I am not forgetting Mr. Anyanwu Cletus, thanks for your hospitality. A home outside the home is what I found amongst my roommates Baba, Ojini (Obi my Man), Isaach, and Mark, your goodwill and support is highly appreciated. Without some deep friendship my life would have been zestless; to you Chiamaka I say “Gracias” for your memorable companionship. Worthy of remembrance are my classmates Austin, Pricilla, Sammy, Ebinwa, Ify, CJ, Mike, Aribaba, Sir Pee, Sunny, Chris, Gabdon, Amogu, Lizzy, Chi, Spencer my other friends Uncle Dee, Bode, Papilo, SPG, Sam, Nono, Nk and Chigo. Fondly remembered are my younger ones Nene, Chi baby, Misco, Senior, Eme, Nneka, Bombom and Junior. You people are wonderful; your warmth was inspiring and your love soothing. Finally, I thank in a special way my parents Mr. and Mrs. Linus Osuji for being the being the pillar of my life. Thanks for solidifying my aspirations with your support; I am proud to have you as parents. To God be the Glory!!! vi TABLE OF CONTENTS Title page ---------------------------------------------------------------------------------------------- i Certification ------------------------------------------------------------------------------------------- ii Approval page ---------------------------------------------------------------------------------------- iii Dedication --------------------------------------------------------------------------------------------- iv Acknowledgement ------------------------------------------------------------------------------------ v Table of Contents ------------------------------------------------------------------------------------ vi Abstract ------------------------------------------------------------------------------------------------ viii CHAPTER ONE: Introduction 1.1 Background of the Study ------------------------------------------------------------------------- 1 1.2 Statement of the Problem -------------------------------------------------------------------------- 3 1.3 Objectives of the Study --------------------------------------------------------------------------- 7 1.4 Statement of Hypothesis --------------------------------------------------------------------------- 7 1.5 Significance of the Study -------------------------------------------------------------------------- 8 1.6 Scope of the Study -----------------------------------------------------------------------------------9 CHAPTER TWO: Literature Survey 2.1 Theoretical Studies ---------------------------------------------------------------------------------- 10 2.2 Empirical Studies -------------------------------------------------------------------------------------12 2.3 Overview of the Financial Sector in Nigeria ----------------------------------------------------- 20 2.4 Limitations of Previous Studies -------------------------------------------------------------------- 23 vii CHAPTER THREE: Methodology 3.1 The Model ------------------------------------------------------------------------------------------- 25 3.2 Model Specification -------------------------------------------------------------------------------- 26 3.3 Justification of Model ------------------------------------------------------------------------------ 30 3.4 Estimation Procedure ------------------------------------------------------------------------------- 30 3.5 Data and Sources of Data -------------------------------------------------------------------------- 33 CHAPTER FOUR: Data Presentation, Analysis and Interpretation 4.1 Unit Roots Test Result ----------------------------------------------------------------------------- 36 4.2 Co integration Test Result ------------------------------------------------------------------------- 37 4.3 Vector Error Correction Model Result ----------------------------------------------------------- 40 4.4 Impulse Response Function ------------------------------------------------------------------------ 46 CHAPTER FIVE: Summary of Findings and Recommendation 5.1 Summary of Findings ------------------------------------------------------------------------------- 48 5.2 Policy Recommendation ---------------------------------------------------------------------------- 50 References ------------------------------------------------------------------------------------------------- 52 Appendix viii ABSTRACT The study examines the causal relationship between financial development and economic growth in Nigeria for the period 1960 to 2008 using dynamic time series model. Granger causality is tested within multivariate co integration and vector error correction model (VECM) framework. Four different measures of financial development are used to capture the different channels through which finance can affect growth. The empirical findings provide evidence that there is a stable positive long run relationship between financial development and economic growth. The result further showed that in Nigeria the direction of causality between financial development and economic growth is sensitive to the choice of proxy used for financial development. Financial development cause economic growth when private sector credit is used as proxy but when money to income ratio, bank deposits and domestic credit ratios are alternatively used as proxies, growth is found to cause financial development. 1 CHAPTER ONE INTRODUCTION 1.1 BACKGROUND OF THE STUDY The pioneering contributions of Schumpeter (1911), and later McKinnon (1973) and Shaw (1973) regarding the relationship between financial development and economic growth has remained an important issue of debate in developing economies. The theoretical argument for linking financial development to growth is that a well-developed financial system performs several critical functions to enhance the efficiency of intermediation by reducing information, transaction, and monitoring costs. A modern financial system promotes investment by identifying and funding good business opportunities, mobilizes savings, monitors the performance of managers, enables the trading, hedging, and diversification of risk, and facilitates the exchange of goods and services. These functions result in a more efficient allocation of resources, in a more rapid accumulation of physical and human capital, and in faster technological progress, which in turn feed economic growth [Creane, et al. (2004)]. Long-term sustainable economic growth depends on the ability to raise the rates of accumulation of physical and human capital, to use the resulting productive assets more efficiently and ensuring the access of the whole population to these assets. Financial intermediation supports this investment process by mobilizing household and foreign savings for investment by firms; ensuring that these funds are allocated to the most productive use, spreading risk and providing liquidity so that firms can operate the new capacity efficiently. Financial development thus involves the establishment and expansion of institutions, instruments and markets that support this investment and growth process through improvements in quantity, quality and efficiency of these financial intermediary services. 2 However, economist still holds startling different opinions regarding the importance of the financial system for economic growth. While many economists have underlined the importance of financial sector development in the process of economic development others still think that its importance is over stressed. McKinnon and Shaw argued that government repression of financial systems through interest rate ceilings and directed credit to preferential non-productive sectors, among other restrictive measures, impedes financial development which they claim is essential for economic growth. The endogenous growth literature as well stresses the significance of financial development for long-run economic growth through the impact of financial sector services on capital accumulation and technological innovation. These services include mobilizing savings, acquiring information about investments and allocating resources, monitoring managers and exerting corporate control, and facilitating risk amelioration (Greenwood and Jovanovic, 1990; Bencivenga and Smith, 1991). On the other hand, influential economists such as Robinson (1952), Kuznets (1955), Jung (1986) Lucas (1988), and Ireland (1994) contend that the role of financial development is either overstated or that financial development follows expansion of the real economy. This would indicate, in contrast to McKinnon and Shaw and the endogenous growth theorists that causality, if it exists, runs from economic growth to financial development. Somewhere between these two views is also the one that claims a mutual impact of finance and growth otherwise known as “the bidirectional causality view”. Demetriades and Hussein (1996), Greenwood and Smith (1997) and Luintel and Khan (1999) are some of the studies that provide evidence of bi-directional causality 3 It is in the light of these conflicting views that this study aims at explaining the relationship between financial development and growth in Nigeria. For Nigeria, studying the relationship between financial development and economic growth is a vital one considering the continuing progress/reforms in its financial sector. Considered as an integral part of macroeconomic policy the financial sector reforms are expected to bring about significant economic benefits particularly through a more effective mobilization of savings and a more efficient allocation of resources thus putting the economy on the path of sustainable economic growth and development. Although it is common to consider cross-country regression to judge the growth effects of financial development, it is also important to study individual-country evidence at least at a simple level to see whether higher levels of financial development are significantly and robustly correlated with faster rates of economic growth, physical capital accumulation and economic efficiency improvements. 1.2 STATEMENT OF THE PROBLEM Economic development in Nigeria has been characterized by fits and starts. Several factors have hampered economic growth; one of such factors often associated with this unsatisfactory growth performance is shallow finance. This factor is critical in view of the general belief that scarcity of long term finance in developing countries is the major impediment to higher investment and output growth in these economies Nnanna etal (2004). Thus, it is now well recognized that financial development is crucial for economic growth. This recognition dating back to Schumpeter (1911) who argued that the services provided by the financial intermediaries are important for innovation and development. 4 As this assertion may seem, there is also the argument that financial development contributes significantly to the economic development of developed countries while the developing countries have not fared well in this regard Singh (1997). Hence, even though a growing body of work reflects the close relationship between financial development and economic growth, it is still possible to encounter especially empirical researches evidencing all possibilities as positive, negative, no association or negligible relationships. While Cross country and more recently, panel data studies show evidence of a positive impact of financial development on growth, Time series on the other hand, offer contradictory results. Furthermore, the direction of causality between financial development and economic growth is crucial because it has significantly different implications for development policy; however, this causal relationship remains unclear. Nigeria on its part has made notable efforts over the past years to reform its financial system going from the deregulation and liberalization of the financial sector activities under SAP 1986, banking consolidation of 2004 and the recent financial system strategy (FSS) 2007 which hopes to make the country’s financial sector the growth catalyst that would ultimately engineer Nigeria’s evolution into an international financial center and a natural destination for financial products and services. Despite these great efforts Nigeria’s economic growth has been dwindling and has still remained fragile not strong enough to significantly reduce the prevailing level of poverty even though the various indicators used in measuring financial development has been increasing steadily over the years. See table 1 below: 5 Table 1 YEAR FINANCAIL FINANCAIL DEVELOPMENT DEVELOPMENT (M2/GDP)% (CPS/GDP)% 1960 12.2 4.9 1965 15.0 7.5 1970 18.5 6.7 1975 19.7 7.8 1980 30.4 15.0 1985 38.7 20.8 1990 25.7 25.7 1995 16.5 10.9 2000 22.6 13.0 2005 19.3 13.8 2006 21.7 14.3 2007 28.1 25.5 2008 38.4 33.8 Where CPS = Credit to Private Sector; M2 = Money Supply Source CBN Statistical Bulletin 2008 From the table above, one would ask; what is the relationship between the growth in these financial development indicators and Nigeria’s economic growth over the years? Secondly, considering the fact that correlation does not imply causation in any way; can changes in Nigeria’s growth rate be attributed to improvements and innovations in its financial sector? Does this financial growth promote economic development in Nigeria? Referring to earlier studies done on this area especially the works of Aigbokan (1995), Odedokun (1995) and Ndebbio (2004) as it pertains to Nigeria, their studies in testing for causality failed to employ multivariate co integration and vector error correction model (VECM) thus failed in making a clear distinction between long run and short run causality. This distinction is very important since as Darrat (1999) states “most of the benefits of higher levels of financial development could be realized in the short run while in the long run as the economy grows and becomes mature these effects slowly disappear”. 6 Moreso, the time span of some of the studies were too brief to capture the long run relationship between financial development and economic growth as the number of observations did not exceed 25 years. The work of Ndebbio (2004) was based on a cross country regression approach and generally there has been a growing concern about cross country empirical approach and its use for causal inference in particular. The studies based on cross country suffer from potential biases induced by simultaneity, omitted variables and unobserved country specific effect on the finance – growth nexus. This was acknowledged by Levine (1997) and Luintel and Khan (1999) who further explained that aggregation blurs important events and differences across countries. Similarly, the studies were based on financial measures that may not capture the mechanism through which financial development cause economic growth. Accordingly, it is appropriate and timely to empirically re-examine the financial development and economic growth relationship in Nigeria, utilizing larger sample size, introducing alternative indicators of financial development and testing for causality in a multivariate co integration framework. This forms the bedrock of this research effort. In essence the study will seek to answer the following research questions: (i) What is the relationship between financial development and economic growth in Nigeria? (ii) What are the direction of causality between financial development and economic growth in Nigeria? (iii) Finally, what are the policy implications of these relationships? 7 Answering the above research questions would help us to see whether, how and to what extent the financial system contributes to economic growth in Nigeria. 1.3 OBJECTIVE OF THE STUDY This study intends to investigate the link between financial development and economic growth in Nigeria from 1960-2008. Are differences in financial development and structure importantly associated with differences in economic growth rates? Specifically, the study will address the following objectives: 1. To examine the relationship between financial development and economic growth in Nigeria. 2. To determine the direction of causality between financial development and economic growth. 1.4 STATEMENT OF HYPOTHESES To assess the nature of the finance-growth relationship, the following hypotheses have been suggested: 1. Financial development has no positive significant relationship with economic growth in Nigeria. 2. There is no direction of causality between financial development and economic growth in Nigeria. 8 1.5 SIGNIFICANCE OF THE STUDY Whether financial development influences economic growth is not just a matter of intellectual curiosity, it is a crucial policy issue as research that clarifies our understanding about the role of finance in economic growth will have policy implications and shape policy oriented research. Thus, the importance of this study lies in the fact that it will provide an insight as to whether financial sector development is a necessary and sufficient condition for higher growth rates in Nigerian economy. Information about the impact of finance on economic growth will influence the priority that policy makers and advisers attach to reforming financial sector policies. Furthermore, convincing evidence that the financial system influences long-run economic growth will advertise the urgent need for research on the political, legal, regulating and policy determinants of financial development. In contrast, if a sufficiently abundant quantity of research indicates that the operation of the financial sector merely responds to economic development, then this will almost certainly mitigate the intensity of research on the determinants and evolution of financial systems. 1.6 SCOPE OF THE STUDY To assess the current state of knowledge on the finance-growth nexus in Nigeria, a time series data will be employed. The study will cover the period 1960 to 2008. 9 CHAPTER TWO LITERATURE SURVEY This section reviews various studies on both theoretical and empirical relationships between financial development and economic growth. 2.1 THEORETICAL STUDIES Studies undertaken to examine the relationship between financial development and economic growth goes far back to the work of Bagehot (1873), Schumpeter (1911), and Hicks (1969). In his study for instance, Schumpeter (1911) discusses the finance growth relationship as a supply-leading one, in which the financial sector leads economic growth by successfully identifying and funding high yielding projects. This is based on the view that a financial system that is functioning well would encourage technological innovation by selecting and financing businesses that are expected to be successful. Bagehot (1873) and Hicks (1969) on the other hand, argued that financial development was an important channel in the industrialization of England, by helping the movement of large amounts of funds for “immense” works. Later works include that of Greenwood and Jovanovic (1990), Levine (1991), Bencivenga and Smith (1991) and Saint-Paul (1992), which involved theoretical models, wherein an efficient financial market raises the quality of investments, thus leading to economic growth. Specifically, Greenwood and Jovanovic (1990) built in their model a financial sector whose main objective is to direct funds to high-yielding investments with the assistance of information. This then would lead to economic growth, which would in turn enable the implementation of costly financial structures. 10 In his model, Levine (1991) explains how stock markets influence growth by improving firm efficiency. Furthermore, Bencivenga and Smith (1991) explain in their study, that a wellfunctioning financial system would improve the level of investment towards non-liquid objects, which will be beneficial to the economy. Saint-Paul (1992) on the other hand, explains the role of the financial sector in helping business enterprises in specialization by allowing investors to hedge by holding a diversified portfolio. This in turn would lead to productivity growth. Supporting this, Atje and Jovanovic (1993) explain how the financial system can help investors disperse risk and provide funding, thereby guiding them to the best investments which are profitable to the economy. More studies include that of Maurice Obstfled (1994) who argued that financial openness and access to international financial markets bring benefits to businesses as well as the economy. Bencivenga, Smith and Starr (1995) argued that industries, which require a longer period to implement new technologies benefit more relatively, from developments in the financial market. Rajan and Zingales (1998) concluded that as the market develops, firms that are less-firmly established and have difficulty with self-funding projects, would benefit better from external funding methods, and therefore expand relatively faster. Blackburn and Hung (1996) found that in a developed financial system, the task of monitoring projects can be undertaken by financial intermediaries, lowering transaction costs and channeling greater savings towards new investments, thus boosting economic growth. Moreover, the authors explain how a country can be trapped in a situation of low economic growth and low financial development. More recently, Levine and Zervos (1998) in their study argued that higher returns and improved risk could encourage a lower savings rate, which would lower economic growth with more liquid 11 and internationally integrated financial markets. In line with this, Tsuru (2000) explained how the development of the financial sector is able to affect the saving rate, thus affecting the rate of economic growth. 2.2 EMPIRICAL LITERATURE An extensive amount of empirical investigations have been conducted aimed at testing the conflicting theoretical developments in the finance- growth nexus using different techniques. While some studies looks at the relationship between the two, a large number of studies are concerned with the question first asked by Patrick (1966) as to what direction does causality between finance and growth run, others in a similar vein deal specifically with stock market indicators. Using a broad cross county analysis Goldsmith (1969) reports a rough correlation between financial development and economic activity for a sample of 35 countries covering the period 1860-1963. King and Levine (1993 a, b) using IMF data and various financial indicators for roughly 80 countries over the 1960-1989 period concluded that there is a positive relationship between financial indicators and growth and that financial development is robustly correlated with subsequent rates of growth, capital accumulation and economic efficiency. They emphasized those policies that alter efficiency of financial intermediation exact a first order influence on growth. In another cross-section study, DeGregorio and Guidotti (1995) examining a sample of about 100 countries during 1960-1985 found out that financial development is associated with improved growth performance. The authors clearly stated that the impact of financial development increases from high to low income countries. 12 They subsequently analyzed panel data of 12 latin American countries, using six year averages for 1950-85. Particularly for the 1970’s and 1980’s unregulated financial liberalization and expectations of government bailouts explain a reversed relationship between financial development and economic growth. This result leads to the policy that financial liberalization requires appropriate regulation framework in order to avoid financial crisis. Ram (1999) finds a positive association between financial factors and economic development only for high growth countries applying panel techniques to a sample of four Latin American and South East Asian countries over the period 1965-1985. Levine etal (2000) using a sample of 74 development and less developed countries over the period 1960-1995, go beyond previous studies recognizing the potential biases induced by simultaneity, omitted variables and unobserved county – specific effect on the finance – growth nexus. They found that the strong positive relationship between financial development and output growth can be partly explained by the impact of the exogenous components like finance development on economic growth. They interpreted these results as supportive of the growth enhancing hypothesis of financial development. Deidda and Fattouh (2002) state that financial depth and growth are only associated positively for a high income sub sample. They offer the explanation that in developing countries the fixed resources cost associated with the provision of financial services inhibits growth they therefore conclude that there is non-linearity between finance and growth. On the question of causality, Fritz (1984) uses the Philippines as a sample economy to conduct causality test for time series of quarterly date from 1969 till 1981. He finds evidence for the hypothesis that in the initial stages of the development process causality is reversed with the real economy demanding an increase in financial services. 13 Other studies include that by Jung (1986) which used a vector auto regressive (VAR) approach to test the causality between financial development and economic growth for a sample of 56 countries (both developed and developing). He uses two alterative measure of financial development, one is a currency ratio (currency over M1.) and the other one a monetization variable (M2 over GDP). For the LDCS he finds a supply leading more often than a demand following indicating the importance of financial development for developing countries. The opposite is true for developed countries even though only when the currency is used. As far as the temporal causality pattern is concerned the finding moderately supports Patrick hypothesis. Murinde and Eng (1994) in their study found the causality between financial development and economic growth running in both directions in the case of Singapore. Aigbokan (1995) applying granger causality model to investigate the causal relationship between real and financial sector growth in Nigeria finds evidence that largely supports the supply leading hypothesis that financial development induces real growth. Odedokun (1996) analyses a sample of 71 developing countries over varying periods that generally span the 1960’s and 1980’s the findings are strongly in favour of the finance causes growth hypothesis. Using time series regression analysis, the author comes to the conclusion that financial intermediation promotes economic growth in roughly 85 percent of the countries. He also observed the growth-promoting effects of financial intermediation primarily in lowincome LDC’s. Rousseau and Wachtel (1998) found one way causality in the relationship between financial development and economic growth in the case of 5 percent OECD countries during the period of fast industrialization (1871-1979) 14 Beck, Levine and loayza (2002) found that banks have a strong causal effect on economic growth using panel data analysis. Some studies however come to a different conclusion with respect to the causality issue. Demetriades and Hussein (1996) also conducts causality test between financial development and real GDP for 16 less developed countries using time series techniques. Their findings provide little support for the hypothesis that financial factors play a leading role in the process of economic development. There is more evidence for the opposite pattern of growth causing finance and for bi-directional causality. Another important finding of their study is that causality patterns vary across countries indicating a need for case studies and careful time series analysis. In a case study of India Demetriade and Luintel (1996) show empirical links between banking sector controls and the process of financial deepening and between financial deepening and growth. Arestis and Demetriade (1997) use time series analysis and Johnson Co integration analysis for the US and Germany. For Germany, they find an effect of banking development on growth. In the US there is insufficient evidence to claim a growth effect of financial development and the data point to direction that GDP contributes to both banking system and stock market development. Luintel and Khan (1999) apply a multivariate vector auto regression framework to a sample of ten mostly developing countries over a period of 36- 41 yrs and find evidence of bi – directional causality for all countries. 15 On specific aspects of financial development, Roubini and Sala i Martin (1992) using a crossSection of 98 countries for the period 1960-1985, showed that various measures of financial repression affect growth negatively. More so inflation rates and reserve ratios are negatively correlated with growth after controlling for other factors. Dealing specifically with stock market indicators, Atje and Jovanovich (1993) examined the role of stock market on development using two proxies of financial development, one measuring bank intermediation and one approximating stock market activity. They concluded that stock market activities had positive effect on growth. They could not however establish or significant relationship between bank liabilities and growth. In contrast to that Harris (1997) comes to the conclusion that stock market activity has at best weak explanatory power for long-run growth in per capita output. He uses data on 49 of the 60 countries teat had official stock markets in 1991 covering the period 1980-1991. Splitting the sample into developed and developing countries he found that for the developing countries stock markets do not seem to promote long-run growth where as for the developed countries they have some explanatory power. Levine and Zervos (1998) found evidence that stock market liquidity and banking development have a positive relationship with economic growth. Arestis, Demetriades and Luintel (2001) conducted time series analysis using data on five industrialized countries covering the period 1968-1998. They report that stock market have made significant contributions to growth in Germany, Japan and France. The effect of stock market, however, is weaker than the impact of banking. For USA and UK the link between finance and growth is not very robust and rather seems to run from growth to finance. 16 More recently, Shan Jordan (2003) using VAR techniques of innovation accounting for china found that financial development come as a second force (after the contribution from labour input) in leading economic growth in china. The empirical evidence supports the view that financial development and economic growth exhibit a two way causality and hence in contrast with the finance lead growth hypothesis. Christopoulos and Tsionas (2004) using panel unit root test and panel co integration analysis to examine the relationship between financial development and Economic growth in ten developing countries find strong evidence in favour of the hypothesis that long-run causality runs from financial development to growth and there is no evidence of bi-directional causality. Furthermore, they find a unique co integrating vector between growth and financial development and emphasize the long-run nature of the relationship between finance and growth. Ndebbio (2004) using two financial deepening variables namely the degree of financial intermediation measured by M2 as ratio to GDP and the growth rate in per capita real money balances; conducted within an ordinary least square (OLS) multiple regression method reports that a developed financial sector spurs overall high but sustainable growth of an economy. Khan etal (2005) using an autoregressive distributed lag (ARDL) approach found a stable longrun relationship between economic growth and financial development for Pakistan over the period 1971-2004, concluding that economic growth is an outcome of financial development. Suleiman and Aamer (2006) on the other hand report a weak support for long-run relationship between financial development and growth and for the hypothesis that finance leads to growth. Employing four different measures of financial development in examining the causal link between financial development in five Middle Eastern and North African countries for the periods 1960-2004 within a trivariate VAR framework they found that in cases where co 17 integration was detected granger causality was either bidirectional or it ran from output to financial development. Eita and Andre (2007) in their study found a stable long run relationship between financial development and economic growth with causality running from financial development to economic growth in the case of Botswana. Acaravci (2007) in the case of Turkey for the periods of 1986:1-2006:4 found a one way shortrun causal relationship between financial development and economic growth. Guryay etal (2007) using the OLS method to examine the relationship between financial development and economic growth found that there is a negligible positive effect of financial development on economic growth in Northern Cyprus . Furthermore the granger causality test showed evidence of economic growth causing financial development in Northern Cyprus. Chakraborty (2008) employing five different measures of financial development found out that in an overall sense economic growth has caused financial development in India for the period 1996-2005. Majid (2008) using a quarterly data from 1998-2008 and ARDL model documents a long run relationship between financial development and economic growth in the case of Malaysia. The granger causality test based on the vector error correction model (VECM) revealed that there is a unidirectional causality running from finance to growth thus supporting the finance led growth hypothesis. Abdul and Ying Ma (2008) applying the ARDL approach to explore finance-growth relationships for China and Pakistan over the period 1960-2005 reports different results for both countries. Using deposit liability ratio (DLR) and credit to Private sector (CPS) as proxies for financial development they found that both DLR and CPS had significant impacts on the 18 economic growth of Pakistan which is line with the study of khan etal (2005). In the case of China, the study finds a positive and significant relationship for DLR and a positive yet insignificant relationship with CPS. Agu and Chukwu (2008) employing the augmented granger causality test approach developed by Toda and Yamamotto (1995) to ascertain the direction of causality between bank based financial deepening variables and economic growth in Nigeria between 1970-2005 found that financial deepening and economic growth are positively co integrated with one co integrating vector indicating a stable and sustainable long run relationship. On the issue of causality, their findings suggested that the choice of bank based financial deepening variables influences the causality outcome. While variables like private sector credit, broad money supported the demand following hypothesis variables like loan deposit ratio and bank deposit liabilities were in favour of the supply leading hypothesis. 19 2.3 OVERVIEW OF THE FINANCIAL SECTOR IN NIGERIA The financial sector is a segment of the economy that provides the market environment for savers and investors to interact and trade in financial assets. The facilitators in the sector are banks, non-bank financial institutions, and regulatory agencies. The evolution of this sector in Nigeria dates back to the pre-independence era when it was virtually dominated and controlled by foreigners. The establishment of the Central Bank of Nigeria (CBN) in 1958 gave impetus to internally propelled growth of the sector. The CBN became the first regulatory organ in the sector saddled with the responsibility of developing domestic money market, among other things. The Nigerian Deposit insurance Corporation (NDIC) was established in 1988 to assist the CBN in its regulatory functions. NDIC operations include the provision of insurance cover for bank deposits, liquidation of banks whose licenses have been revoked by the CBN, and payment of compensation to depositors of such banks. The Capital Issues Committee (1961), which later transformed into Securities and Exchange Commission (1977), is the second regulatory body in the sector charged with the responsibility of developing domestic capital market. The concurrent establishment of the Nigerian Stock Exchange (then Lagos Stock Exchange) in 1961 was intended to assist the commission in developing the capital market by promoting the liquidity of its securities. The third and most recent regulatory agency in the sector is the National Insurance Commission (1977), which was established to enhance the effective control of the financial system where insurance companies have become prominent. Since 1970, the sector has grown quite significantly due to the monetization of export earnings and the consequent increase in economic activities (Ojo, 1993), coupled with the various policies adopted by the government during the period under review. Between 1970 and 20 1985, growth of the section was a gradual one because it was predominantly under government regulation. The period 1986-2000 however witnessed a phenomenal growth of the sector as a result of the financial deregulation policy of government (1986). That policy led to the emergence of appreciable number of banks and other financial institutions, with some of them poorly equipped to properly function in the sector. The problem became glaring by 1991 as the number of distressed banks rose astronomically, leading to a reduction in the size of the sector. This development prompted government to set up the failed Banks Tribunal (1994) in order to sanitize the sector. In addition, the capital base for banks and other financial institutions was significantly increased to enhance stability in the sector. These measures, among others, assisted in the repositioning and restoration of growth to the sector by year 2000. In order to further ensure stability in the banking system the central bank of Nigeria CBN, on 6th July 2004, announced a required minimum capital base of N25 billion for banks effective 31st December 2005. The purpose of the recapitalization process was to enable the Nigerian banks give priority to and make available cheap and competitive credit to the real sector so that the economy can grow. The first phase of the banking sector reforms and consolidation which was concluded at the end of December 2005 resulted in 25 banks emerging from seventy five (75) out of eighty Nine (89) banks that had existed prior to the end of December 2005. This has brought a number a positive developments to the banking sector in particular and the economy in general. The banking consolidation has produced relatively well capitalized banks which has engendered greater public confidence in the system. It has brought greater public awareness and a deepening of the capital market. The resulting liquidity in the system also induced a significant fall in interest rate. Banks now have greater potential to finance big ticket transactions with higher 21 oblige limit. Ownership of banks has been diluted and this in no small way, tamed the monster of insider and corporate governance abuse. The banks now enjoy economies of scale where the benefits in the form of reduced bank charges are passed to customers. With virtually all the banks now public quoted, there is wider regulatory oversight with the securities and exchange commission (SEC) and Nigerian stock Exchange (NSE) joining the regulatory team. These regulators now oversee and focus on fewer banks thereby fostering effectiveness and efficiency in supervision. The growth in the Nigerian financial sector continued in 2008 as indicated by the various performance measures in all segments. The depth of the financial sector increased as broad money supply to nominal GDP ratio rose to 38.4% from 28.1% at the end of 2007. The banking sector also showed stronger capacity to finance real sector activities with substantial credit flow to the core private sector as CP/GDP ratio increased from 24.5% in 2007 to 33.8% in 2008. In addition, the increased use of the various electronic money products reflected the shift away from cash transactions and thus an improvement in the efficiency of funds intermediation. Consequently, the ratio of currency outside banks to broad money supply fell further to 9.7 per cent in 2008 from 12.7 percent at the end of 2007. Overall, the financial system at the end of December 2007 composed the central Bank of Nigeria (CBN). Nigerian Deposit Insurance Corporation (NDIC), the securities and Exchange commission (SEC), the National Insurance Commission (NAICOM), the National Insurance Commission (PENCOM), 24 deposit money banks, 5 discount houses, 709 microfinance banks, 112 finance companies, 703 bureaux-de change, I stock Exchange, I commodity Exchange, 93 primary mortgage institutions, 5 development finance institutions and 117 insurance companies. 22 2.4 LIMITATIONS OF PREVIOUS STUDIES There are number of concerns with previous empirical work done by Nigerian researchers on this area: (1) Earlier studies by Aigbokan (1995), Odedokun (1996), Ndebbio (2004) except for Agu and Chukwu (2008) failed to employ multivariate co integration and vector error correction mechanism (VECM) in testing for causality. (2) Most of the studies were based on financial measures that may not capture the mechanism through which financial development can cause economic growth. According to Luintel & Khan (1999) the standard measure of financial development used in literature is the ratio of broad money – usually M2 to the level of nominal GDP. However, strictly speaking this ratio measures the extent of monetization rather than that of financial depth. In developing countries such as ours a large component of the broad money stock is currency held outside the banking system and a such monetization can be increasing without financial development occurring. Thus it is not an entirely satisfactory indicator of financial depth. (3) Finally, the above studies test for granger causality between finance and growth within the sample period and did not attempt to evaluate the strength of their findings beyond the sample period by applying variance decompositions or impulse response functions. In the present study we try to overcome the limitations of the aforementioned studies by using four alternative proxies of financial development namely the ratio of broad money (M2) to income (M2Y), the ratio of total bank liabilities to nominal GDP (BDY), the ratio of private sector credit to GDP (CPSY) and the ratio of Bank credit to GDP (DCY). 23 To overcome the misspecification bias we apply a multivariate vector autoregressive (VAR) system that includes a complete conditioning information set consisting of variables borrowed from the relevant literature. The share of investment in GDP is included as an additional variable as this allows us to test whether financial development affects economic growth through increasing productivity or through accumulation of resources. Interest rate is also included as a real positive interest increases financial depth through increased savings mobilization and promotes growth through increasing the volume of productivity of capital. We also test the direction of causality between financial development and economic growth using Unit root and co integration test within a multivariate VAR model. Furthermore, using variance decompositions we estimate the relative importance of financial development in explaining changes in the growth of per capita GDP beyond and the sample period. 24 CHAPTER THREE METHODOLOGY This chapter deals with model specifications, data definitions, estimation procedures, evaluation techniques, data and sources of data. 3.1 THE MODEL Given the nature of the objectives of this study, the research employs time series econometric methodology using the vector autoregressive model (VAR) which is transformed into the vector error correction model (VECM). In structural equation models some variables are treated as endogenous and some as exogenous before estimating such models, the equations in the system has to be identified. However this decision is often subjective and has been severely criticized by Christopher Sims. According to Sims, if there is true simultaneity among a set of variables, they should all be treated on an equal footing; there should not be any a priori distinction between endogenous and exogenous variables. It is in this spirit that the VAR model was developed. Thus, in VAR models all variables are treated as endogenous, each variable is explained by its own lagged values as well as the lagged values of all other endogenous variables in the model Sims vector autoregressive model offers an easy solution in explaining and predicting the values of a set of economic variables at any given point in time. VAR is a straight forward, powerful statistical forecasting technique that can be applied to any set of historical data. Like the structural model, the VAR system also generates system of equations that can project the future paths of economic variables extrapolating from their past historical values. However, the main difference between the VAR system and the structural models is that the VAR system is based entirely on empirical regularities embedded in the data. 25 The structural model is tied closely to the economic theory and has to follow the assumption and the a priori restrictions imposed there in. VAR, on the other hand does not have to resort to the theory per say, in fact, the data determines the final system (Chisiti, et al 1992). 3.2 MODEL SPECIFICATION The research will be guided by the model specified below; first in its functional form then transformed into a VAR model. RGDP = F (FD, INV, r) (1) Where RGDP = Real Gross Domestic Product Per capita (proxy for economic growth in Nigeria) FD Financial development indicators which is proxied by the ratio of broad money = stock (M2) to GDP (M2Y), the ratio of total bank liabilities to nominal GDP (BDY), the ratio of private sector credit to GDP (CPSY) and the ratio of Bank credit to GDP (DCY). Total bank liabilities are obtained by taking the ratio of broad money stock (M2) minus currency in circulation to GDP. INV = Output share of Investment (ie Gross capital formation). This variable is considered as having a robust correlation to economic growth. r = Interest rate (maximum lending rates of commercial banks) INV and r are information set of control variables commonly used in literature to avoid problems posed by bivarate VAR. INV used in (christopoulos and Tsionas 2004) and r used in (Luintel and Khan 1999). 26 Putting equation (1) in a VAR model we have: n n n n i 1 i 1 i 1 i 1 RGDPt 1 11 RGDPt i 12 FD t -i 13 INVt i 14 rt i U 1 n n n n i 1 i 1 i 1 i 1 n n n n i 1 i 1 i 1 i 1 FDt 2 21 RGDPt i 22 FDt i 23 INVt i 24 rt i U 2 INVt 3 31 RGDPt i 32 FDt i 33 INVt i 34 rt i U 3 n n n n i 1 i 1 i 1 i 1 rt 4 41 RGDPt i 42 FDt i 43 INVt i 44 rt i U 4 (2) (3) (4) (5) Where i is the lag length, ’s is the constant terms, U’s are the stochastic error terms which in the language of VAR is referred to as Impulses or Innovations and RGDP, FD, INV, r, are as defined earlier. The model above can be stated more compactly as below: n n i 1 i 1 Yit = i + i y t -i i x it -i Vi (6) Where Yit = vector of endogenous variables (such that yit = RGDPt….rt) i = vector of constant terms i = Coefficient of the autoregressive terms i = Coefficients of the explanatory variables (vector of coefficients) vi = Vector of innovations. If the variables are non-stationary say I (1), it may be helpful to take the first difference of the variables to make them I (0) and then use the differenced variables in the VAR. 27 However, if the I (1) variables are co integrated, by differencing the variables, there will be loss of important information about the long-run relationships. Omitting the co integrating combination is a specification error in a VAR (in first differencing) and in addition such a VAR provides no information about the long-run which is often considerable interest to economist (Patterson 2000). More so, the co integration technique pioneered by Engel and Granger (1987) makes a significant contribution towards testing causality. According to this technique once a number of variables (say RGDP and FD) are found to be co integrated, there always exist a corresponding error correction representation which implies that changes in the dependent variable are a function of the level of disequilibrium in the co integration relationship (captured by the error correction term) as well as changes in other explanatory variables. A consequence of co integration is that either RGDPt or FDt or both must be caused by the lagged error- correction term which itself is a function of RGDPt-i, FDt-i. A vector error correction model (VECM) is a restricted VAR designed to use with non stationary variables that are known to be co integrated. It restricts long-un behaviour of the endogenous variables to converge to their co-integrating relationships while allowing for shortrun adjustment dynamics. The VECM corresponding to our situation is n n n n i 1 i 1 i 1 i 1 RGDPt 1 11 RGDPt i 12 FDt i 13 INVt i 14 rt i 15 ECM t i U1 n n n n i 1 i 1 i 1 i 1 FDt 2 21 RGDPt i 22 FDt i 23 INVt i 24 rt i 25ECM t i U 2 n n n i 1 i 1 i 1 INVt 3 31 RGDPt i 32 FDt i 33 INVt i 34 rt i 35 ECM t i U 3 n n n n i 1 i 1 i 1 i 1 rt 4 41 RGDPt i 42 FDt i 43 INVt i 44 rt i 45 ECM t i U 4 (7) (8) (9) (10) 28 Where is the difference operator, ECM is the error correction term, i is the lag length which translates to a lag of i-1 in the VECM. Equation (7), (8) (9) and (10) can be summarized in the form below: n n i 1 i 1 Yit i i Yt i i X it i i ECM t i U i 3.3 JUSTIFICATION OF MODELS The choice of a VAR model to be transformed into a vector error correction model (VECM) is made because it is one of the models that are superior and are not highly vulnerable to simultaneity bias. It has the ability to test for weak exogeneity and parameter restrictions. It also assumes there is no priory direction of causality among variable. It is a theoretical i.e does not require any explicit economic theory to estimate the model (Gujarati 2003). VECM offers a way of analyzing the dynamic relationships between variables such as financial Development and economic growth. The transformation of the VAR into VECM is to account for the speed of adjustment in the long-run and short-run dynamic of the model and it has a co integration restriction embedded in the specification. 3.4 ESTIMATION PROCEDURE The empirical investigation on the relationship between financial development and economic growth will be performed in two steps. First we define the order of integration in series and explore the long- run relationship between the variables by using unit root test and co integration test respectively. 29 Second, we test the long run or short- run causal relationship between financial development and Economic growth which is carried out in VECM or VAR framework. Because the order of integration of a time series is of great importance for the analysis, we use the Augmented-Dickey fuller (ADF) unit root test to examine the stationary of the variables. If the variables are integrated of order 1 ie I (1) (becoming stationary after first difference) then we search for the co integrating relationship between these variable. If there is no co integrating relationship we make the variables stationary by first differencing and test for non- causality in a VAR context. For non- stationary variables and a co integrated relationship we estimate a vector error correction model and again test for granger non-causally in this context. Finally the impulse response function (IRF) is applied. The IRF gives the proportions of the movement in one variable which are because of its own shocks and the shocks in the other variables. Thus, in our context it allows to explore the relative importance of financial development in accounting for innovations in economic growth. OPTIMAL LAG-LEMGHT This is used to ascertain the actual number of the lag to be introduced so as to avoid too much lag or few lag. Too much lag will consume degree of freedom and multi nonlinearly will set in while few lag will lead to specification error. Therefore based on the Akaike information criterion (AIC) and Schwarz information criterion (SIC), we shall choose the lag level that has the minimum information criterion for the VAR and VECM estimation. 30 THE UNIT ROOT TEST The variable of this study shall be subjected to stationary test and made stationary using the Augmented Dickey fuller (ADF) test because it eliminates the problem of auto correlation by including enough terms so that the error term is serially uncorrelated. The regression form of the ADF Unit root test is stated below n Yt = a0 + a1Yt-1 + a2t + i Yt-i + Ui i 1 Where a0 = is the intercept t = is linear trend n = no of lagged differences Ui = is the error term = is the first difference operator. The null hypothesis is that a unit root problem exists and the alternative hypothesis is that there exists no unit root problem. COINTGERATION TEST This test will be used to establish the existence of long-run relationship between financial development and economic growth in Nigeria. The Johansen (1988) procedure is utilized. The approach is chosen because it does not suffer normalization problem (Gujarati 2003). The Johansen (1988) co integration test is done in order to obtain the random innovation which will be used in estimating the VECM. This is specified as follows: n Yt = 1 + i Xt-i + Vt i 1 31 Where Yt = Dependent variables Xti = Explanatory variables i = lag length vt = residuals (error term) i = parameter coefficient The random innovation is defined below Vt = Yt - 1 - n 1 1 i Xti. 3.5 DATA AND SOURCES OF DATA Annual data are used and the study covers the period of 1960 to 2008. The study uses the ratio of broad money supply (M2) to GDP (M2Y), the ratio of total bank deposit liabilities to nominal GDP (BDY), the ratio of private sector credit to GDP (CPSY) and the ratio of Bank credit to GDP (DCY) as proxies of financial development. In the literature, the most commonly used measure of financial development is the ratio of some broad measure of the stock usually M2 to the level of nominal GDP (king and Levine 1993a). This simple indicator measures the degree of monetization in the economy (ie in which money provides valuable payment and saving services). However in developing countries a large part M2 stock consists of currency held outside banks. As such, an increase in the M2 may reflect extensive use of currency rather than increase in bank deposits and for this reason this measure is less indicative of the degree of financial intermediation by banking institutions. 32 In order to obtain a more representative measure of financial development, Demetriades and Hussien (1996); Luintel and Khan (1999) proposed to subtract currency in circulation from the broad money stock giving rise to the ratio of bank deposit liabilities to income. The study also uses the of private sector credit to GDP as a second proxy for financial development. This indicator is frequently used to assess the allocation of financial assets as it is directly related to investment and growth and such a more direct measure of financial intermediation. Furthermore, it is assumed that credit provided to the private sector generates increase in investment and productivity to a much larger extent to credits to public sector. It is also argued that loans to the private sector are given more stringently and that the improved quality of investment emanating from financial intermediaries evaluation of project viability is more significant for private sector credits. Thus an increase in the ratio of credit extended to the private sector to GDP is also interpreted as financial deepening (CBN 2008). The ratio of Bank credit to GDP is also used as another proxy for financial development. This represents the domestic assets of the financial sector. For economic growth real GDP per capita (RGDP) is used. Investment (INV) and interest rate (r) are included to avoid problem of simultaneity bias in VAR. Finally the data are sourced from the central Bank of Nigeria statistical bulletin (various Issues) ECONOMETRIC SOFTWARE The data series will be subjected to the appropriate time series tests using EVIEWS 5.0 econometric software. 33 CHAPTER FOUR DATA PRESENTATION, ANALYSIS AND INTERPRETATION The chapter reviews and analyzes the various data used for this study. 4.1. UNIT ROOTS TEST RESULT In this study the augmented dickey-fuller (ADF) unit roots test is employed to test for the stationarity of the variables. The null hypothesis is that the variable under investigation has a unit root against the alternative that it does not. The lag length was set based on the Akaike and Schwartz information criteria. The decision rule is to reject the null and accept the alternative if the ADF statistics value exceeds the critical value at chosen level of significance in absolute terms and vice versa. These results are presented in table 2. Table 2 Unit Root Test Variable ADF statistics Critical values ADF statistics (1st (level form) RGDP M2Y BDY CPSY DCY INV R -1.49 -1.60 -1.01 -1.35 -2.48 -1.43 -1.12 1% -3.62 5% 10% 1% -3.57 5% -2.92 10% -2.66 1% -3.57 5% Critical values Diff) -5.37 1% -3.62 -2.94 5% -2.94 -2.61 10 -2.61 1% -3.58 5% -2.93 10% -2.60 1% -3.58 -2.93 5% -2.93 10% -2.66 10% -2.60 1% -3.57 1% -3.58 5% -2.92 5% -2.93 10% -2.66 10% -2.60 1% -3.58 1% -3.58 5% -2.93 5% -2.93 10% -2.60 10% -2.60 1% -3.58 1% -3.58 5% -2.93 5% -2.93 10% -2.60 10% -2.60 1% -3.58 1% -3.58 5% -2.93 5% -2.93 -6.00 -5.30 -5.90 -5.86 -6.63 -7.95 34 10% -2.60 10% -2.60 The results of table 2 show that all the variables are non-stationary i.e. has unit roots in levels since their ADF values are less than the critical values at 1,5, and 10 percent significance level. However they became stationary in first-difference and at 1%, 5%, and 10% the null hypothesis of no unit root was accepted for all series. Thus, we conclude that the variables under investigation are integrated of order one I (1). Since the variables are I (1) i.e. becoming stationary at first difference we examined their co integrating relationship using Johansen’s full information maximum likelihood. 4.2. CO INTEGRATION TEST RESULT A necessary but insufficient condition for co-integration is that each of the variables are integrated of the same order I (1) Granger (1986). Following objective one of our study, we examined the long-run relationship between financial development and economic growth (RGDP) using four different indicators namely ratio of money supply to income (M2Y), bank liabilities (BDY), private sector credit (PSCY) and domestic/bank credit (DCY). To overcome simultaneity bias in VAR we included investment (INV) and interest rate (R) as ancillary variables. The Johansen co integration test includes both the trace and the maximum Eigen value statistics. The first row in each of the tables test the hypothesis of no co integration, the second row test the hypothesis of one co integrating relation and so on, all against the alternative of full rank of co integration. The results are presented in tables 3- 6 below: 35 Table 3: Co integration Test Result between RGDP and M2Y Hypothesized Trace 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None * 0.431905 48.15180 47.85613 0.0469 At most 1 0.209953 22.14033 29.79707 0.2908 At most 2 0.147865 11.29983 15.49471 0.1937 At most 3 * 0.082074 3.939367 3.841466 0.0472 Trace test indicates 1 co integrating eqn(s) at the 0.05 level Hypothesized Max-Eigen 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None* 0.431905 39.01147 27.58434 0.0384 At most 1 0.209953 10.84049 21.13162 0.6632 At most 2 0.147865 7.360467 14.26460 0.4474 At most 3 * 0.082074 3.939367 3.841466 0.0472 Max-Eigen value test indicates 1 co integrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level Table 4: Co integration Test Result between RGDP and BDY Hypothesized Trace 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None * 0.425469 50.28226 47.85613 0.0290 At most 1 0.216329 24.78901 29.79707 0.1691 At most 2 0.158850 13.57577 15.49471 0.0953 At most 3 * 0.114976 5.618464 3.841466 0.0178 Trace test indicates 1 co integrating eqn(s) at the 0.05 level Hypothesized Max-Eigen 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None* 0.425469 35.49325 27.58434 0.0404 At most 1 0.216329 11.21324 21.13162 0.6260 At most 2 0.158850 7.957306 14.26460 0.3830 At most 3 * 0.114976 5.618464 3.841466 0.0178 Max-Eigen value test indicates 1 co integrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level 36 Table 5: Co integration Test Result between RGDP and CPSY Hypothesized No. of CE(s) Trace 0.05 Eigen value Statistic Critical Value Prob.** None * 0.794927 102.5839 47.85613 0.0000 At most 1 * 0.332094 31.28647 29.79707 0.0334 At most 2 0.181745 13.12415 15.49471 0.1103 At most 3 * 0.087043 4.098010 3.841466 0.0429 Trace test indicates 2 co integrating eqn(s) at the 0.05 level Hypothesized Max-Eigen 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None * 0.794927 71.29742 27.58434 0.0000 At most 1 0.332094 18.16232 21.13162 0.1239 At most 2 0.181745 9.026136 14.26460 0.2840 At most 3 * 0.087043 4.098010 3.841466 0.0429 Max-Eigen value test indicates 1 co integrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level Table 6: Co integration Test Result between RGDP and DCY Hypothesized Trace 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None * 0.496994 59.33647 47.85613 0.0029 At most 1 0.277643 27.04032 29.79707 0.1006 At most 2 0.128834 11.75421 15.49471 0.1691 At most 3 * 0.106105 5.271856 3.841466 0.0217 Trace test indicates 1 co integrating eqn(s) at the 0.05 level Hypothesized Max-Eigen 0.05 No. of CE(s) Eigen value Statistic Critical Value Prob.** None * 0.496994 32.29616 27.58434 0.0115 At most 1 0.277643 15.28611 21.13162 0.2693 At most 2 0.128834 6.482353 14.26460 0.5521 At most 3 * 0.106105 5.271856 3.841466 0.0217 Max-Eigen value test indicates 1 co integrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level 37 In tables 3-6, the trace and the maximum Eigen value statistics indicates the presence of one co integrating equation at 5 percent significance level which implies that economic growth (RGDP) and the measures of financial development (M2Y, BDY, CPSY and DCY) are co integrated. In addition, the result also revealed that economic growth (RGDP), investment (INV) and interest rates (INV) are also co integrated. The Johansen co integration result above confirms the rejection of the null hypothesis of no co integration and the acceptance of the alternative of co integration i.e. a long run relationship exist. Hence, the test suggests the existence of a stable long-run relationship between economic growth proxied by real GDP per capita (RGDP) and financial development variables proxied by M2Y, BDY, CPSY and DCY. The long-run relationship between economic growth and financial development was found to be positive in each of the co integrating vectors suggesting causality in at least one direction. 4.3. VECTOR ERROR CORRECTION MODEL RESULTS Since there is co integration, the direction of causality is tested using the vector error correction model (VECM). This is done using Johansen co integrating vectors. The results are presented in table 7 below: 38 TABLE 7: VECM RESULTS 7a. Variables included in the VAR: RGDP and M2Y, INV, R Variables β ECM RGDP 1.0000 -0.064657 (-4.81437) M2Y -19.63721 (-9.24983) INV -20.10934 (-5.3005) R 137648.9 (4.43941) C -2596956 7b. Variables included in the VAR: RGDP and BDY, INV, R Variables β ECM RGDP 1.0000 -0.060944 (-4.23222 BDY -17.8198 (-6.7649) INV -23.7368 (-5.30513) R 169114.7 (4.51923) C -2497008 39 7c. Variables included in the VAR: RGDP and CPSY, INV, R Variables β ECM RGDP 1.0000 -0.309626 (-2.53376) CPSY -29.936 (-3.36881) INV -5.46607 (-5.13752) R 66334.87 (6.73364) C -287736 7d. Variables in the VAR: RGDP and DCY, INV, R Variables β ECM RGDP 1.0000 -0.013196 (-9.0384) DCY -36135.7 (-1.7507)* INV -32.7070 (-7.2775) R 181821.2 (4.0291) C -1357239 Notes * indicate significance at the 10%, level The co integrating vector is normalized on RGDP. The t-statistics are in parentheses The signs of the coefficients (β) changes since they still have to be taken to the right hand side of the equation. The positive sign turns to negative while the negative turns to positive. 40 From table 7, we can formally state the normalized long-run co integrating relationship involving financial development and Economic growth in the equation form below where the sign changes: RGDP = 2596956 + 19.63721M2Y + 20.10934INV – 1376489R (1) RGDP = 2497008+ 17.8198BDY + 23.7368INV – 169114.7R (2) RGDP = 287736 + 29.936 CPSY + 5.4660 INV – 66334.87R (3) RGDP = 1357239 + 36135.7DCY + 32.7070INV-181821.2R (4) From equations 1 and in table 7(a) the VECM result shows that there is a significant positive long-run relationship between financial development proxied by M2Y and economic growth (RGDP) implying that an increase in M2Y will lead to an increase in RGDP. From the result a unit increase in M2Y will lead to a 19.64 units increase in RGDP. This finding is consistent with a prior economic expectation. The t-statistics was also significant. Investment (INV) had a significant positive impact on RGDP with an estimated coefficient of 20.11 suggesting that an increase in INV will lead to a corresponding increase in RGDP. This conforms to economic theory Interest rate (R) on the other hand has an indirect relationship with RGDP with an estimated coefficient of -1376489. This means that a rise in interest rate would lead to fall in economic growth which is in line economic theory. Similar results were obtained in 7(b), (c) and (d) when BDY, CPSY and DCY were used as financial development indicators respectively. Each of the financial development proxies exerted a significant positive impact on RGDP. This also is consistent with a priori economic expectation. 41 Precisely, a unit increase in BDY, CPSY and DCY led to a 17.82, 29.94 and 36135.7 units increase in RGDP respectively. Investment (INV) and interest rate (R) as in 7(a) had a significant positive and negative influence on real GDP respectively. For the error correction term (ECM) the VECM result distinguishes between short-run and long-run granger causality. The coefficient of the lagged error correction term (ECM) in 7(a) is negative and significant. This significance shows that there is a long-run causal relationship between economic growth and measures of financial development. It also indicates that M2Y and RGDP are adjusting to their long-run equilibrium relationships. The negative coefficient and the magnitude of the ECM indicate the speed of adjustment to the long-run equilibrium relationship which in 7(a) is 6.4 percent. The coefficients of the lagged error terms in 7(b), (c) (d) are also negative and significant implying that each measure of financial development and economic growth are adjusting to their long-run equilibrium relationships, the speeds of adjustment are 6.1, 30.9 and 1.32 percent respectively. The results of the granger causality test based on the VECM representations of the co integrated variables are presented in table 8 below. The null hypothesis of no direction of causality is tested against the alternative that there exists a direction of causality amongst the variables in question. 42 In our case there are four possibilities 1. Unidirectional causality from financial development (FD) to Economic Growth (EG) when the FD coefficient is statistically significant. 2. Unidirectional causality from EG to FD, when the EG coefficient is statistically significant 3. Feedback or bilateral causality when the sets of FD and EG coefficients are statistically significant. 4. Finally, independence, when FD & EG coefficients are not statistically significant. Table 8 Granger causality test result Cause and effect (Ho) Chi-sq P-value Conclusion RGDP does not granger cause M2Y 18.912 0.0008 Reject Ho M2Y does not granger cause RGDP 2.373 0.3052 Do not reject Ho RGDP does not granger cause BDY 11.925 0.0027 Reject Ho BDY does not granger cause RGDP 3.643 0.1618 Do not reject Ho RGDP does not granger cause CPSY 0.4557 0.9285 Do not reject Ho CPSY does not granger cause RGDP 9.798 0.0499 Reject Ho RGDP does not granger cause DCY 4.785 0.0287 Reject Ho DCY does not granger cause RGDP 0.192 0.6611 Do not reject Ho From table 8, the causality test revealed that economic growth proxied by real GDP per capita causes M2Y, BDY and DCY without a feedback. This implies a unidirectional causality running from economic growth to financial development, the conclusion was arrived based on the fact that their chi-sqs were statistically significant at less than 5% indicated by their p-values. 43 These three outcomes support the demand following view otherwise known as the growth-led finance hypothesis which says that as the real side of the economy expands, its demand for certain financial instruments, arrangements and markets increases, leading to the growth of these services. Finally, the causality test also showed that financial development caused economic growth when proxied by the ratio of private sector credit to nominal GDP; its p-value was less than 5%. This finding of unidirectional causality from finance to growth supports the supply leading view of finance led growth hypothesis which posits that there is a robust effect that runs from financial intermediation to economic growth exercised either by raising the efficiency of capital accumulation, savings rate and thus investment rate 4.4 IMPULSE RESPONSE FUNCTION The impulse response functions (IRF) traces out the response of the dependent variable in the VAR system to shocks in the error terms for over a 10 year period. The impulse response graph (see appendix 3) represents the various responses of economic growth proxied by real GDP per capita (RGDP) to a one standard deviation (0.25 percentage point) positive shock on the financial development variables proxied by M2Y, BDY, CPSY and DCY. The empirical evidence shows that an increase in M2Y by 0.25% points will leave the RGDP unaffected in the first period. However, in the second period, the effect of shock from M2Y taps off and persisted throughout the sample period. 44 The response of RGDP to the shocks from BDY is very much similar to its response to M2Y shocks. Shocks resulting from BDY had permanent positive effect on RGDP throughout the entire period. However shocks from BDY indicate much stronger effect on RGDP than M2Y. The graph further showed that DCY shocks stimulate RGDP more in the short run than M2Y and BDY. In the long run (towards the end of the period) shocks to M2y and BDY are slightly higher on GDP. The behaviour of GDP due to shocks from CPSY is quite different from M2Y, BDY, and DCY. Shocks to CPSY exerted no impact or effect on RGDP from first through the 4 th period. At the 5th period, the effect of CPSY shocks on GDP taps off rather slowly till the end of the sample period with little fluctuations in some periods. From the analysis above we conclude that all the financial development indicators; M2Y, BDY, DCY and CPSY have a measurable positive effect on economic growth in Nigeria. 45 CHAPTER FIVE SUMMARY OF FINDINGS AND RECOMMENDATIONS 5.1 SUMMARY OF FINDINGS The focus of this research project was to investigate the link between financial development and economic growth in Nigeria from 1960-2008. Specifically the study examined the relationship between financial development and economic growth and its direction of causality. Given the nature of the objectives, the vector autoregressive model (VAR) which was later transformed into a vector error correction model (VECM) was utilized. In other to see the impact of various aspects of financial development, the study employed four different measures of financial development namely the ratio of broad money supply (M2) to income (M2Y), the ratio of total bank deposit liabilities to nominal GDP (BDY), the ratio of private sector credit to GDP (CPSY) and the ratio of Domestic/Bank credit to GDP (DCY). To avoid misspecification and simultaneity bias in VAR, Investment (INV) and Interest rate (R) were included as ancillary variables. Using each of the four financial development indicators we ran four different VAR models. The summary of the major empirical findings are stated below: The Johansen co integration test result showed a one co integrating equation/vector between Real GDP per capita and measures of financial development. The implication of the above is that there exist a stable long-run equilibrium relationship between economic growth proxied by RGDP and financial development variables proxied by M2Y, BDY, CPSY, and DCY. 46 The long-run relationship between economic growth and financial development was also found to be positive in each co integrating vector. The estimated co integrating vectors within the context of VECM suggest that real economic activity is affected by changes in financial development. The magnitude of the estimated coefficients shows that financial development contributes significantly to determining the magnitude of real economic growth in the long-run. The estimated Co integrating relationship further revealed that investment exerted a positive influence on real GDP implying that an increase in stock of capital is associated with a corresponding increase real GDP. Interest rate on the other hand had a negative impact on real GDP suggesting that increase in interest rate affects GDP negatively while lower interest rates increases growth. The result from the impulse response functions/graphs also confirms the positive impact of the various financial development indicators on growth beyond the sample period. Error correction mechanism that measures the speed of adjustment to equilibrium has the expected negative relationship with the dependent variable in all the models. This means that any presence of error in the model will be corrected Given that correlation does not imply causation in any way, the study carried out a granger causality test within co integration and vector error correction mechanisms to determine the direction of causality between financial development and economic growth in Nigeria. 47 The findings showed that: There is unidirectional causality between financial development and economic growth with economic growth causing financial development when M2Y, BDY and DCY were used as proxies. On the other hand financial development caused economic growth when credit to private sector (CPSY) was used as proxy thus favouring the supply leading view. In general the empirical results show that the direction of causality between financial development and economic growth is sensitive to the choice of proxy used. 5.2 POLICY RECOMMENDATIONS This result obtained in the study suggests that financial development has a positive impact on Nigeria’s economic growth in the long-run. Thus 1. If policy makers want to promote sustainable growth then attention should be focused on longrun policies for example the creation of modern, efficient and strong financial institutions that can drive Nigeria’s economic growth. 2. To achieve the above desired benefits efforts should be devoted to Deepening the financial sector especially the microfinance system in Nigeria. Legal reforms to fast track markets and institutions for efficient credit system Strengthening of supervisory and regulatory bodies in the financial system. 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Http: mpra.ub.uni-muenchen.de/972/ Tsuru, K. (2000). “Finance and Growth: Some Theoretical Considerations and A Review of the Empirical Literature”. Economics Department Working Papers, OECD, January, No. 228. 54 APPENDIX 1 UNIT ROOTS TEST RESULTS UNIT ROOTS TEST: RGDP (LEVEL FORM) Null Hypothesis: RGDP has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.408894 0.7988 Test critical values: 1% level -3.574446 5% level -2.923780 10% level -2.599925 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(RGDP) Method: Least Squares Date: 04/22/10 Time: 18:31 Sample (adjusted): 1961 2008 Included observations: 48 after adjustments Variable Coefficient Std. Error t-Statistic Prob. RGDP(-1) -0.012961 0.009200 -1.408894 0.1656 C 0.042973 0.109976 0.390747 0.6978 R-squared 0.041367 Mean dependent var 0.193247 Adjusted R-squared 0.020527 S.D. dependent var 0.187600 S.E. of regression 0.185665 Akaike info criterion 4.488974 Sum squared resid 1.585686 Schwarz criterion 4.411007 Log likelihood 13.73537 F-statistic 1.984983 Durbin-Watson stat 1.625771 Prob(F-statistic) 0.165591 UNIT ROOTS TEST: RGDP (1ST DIFF) Null Hypothesis: D(RGDP) has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -5.366580 0.0000 Test critical values: 1% level -3.577723 5% level -2.925169 10% level -2.600658 55 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(LOG_RGDP,2) Method: Least Squares Date: 04/22/10 Time: 18:35 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(RGDP(-1)) -0.775387 0.144484 -5.366580 0.0000 C 0.152527 0.039010 3.909988 0.0003 R-squared 0.390245 Mean dependent var 0.001863 Adjusted R-squared 0.376695 S.D. dependent var 0.235190 S.E. of regression 0.185682 Akaike info criterion 4.487941 Sum squared resid 1.551501 Schwarz criterion 4.409212 Log likelihood 13.46662 F-statistic 28.80019 Durbin-Watson stat 1.995262 Prob(F-statistic) 0.000003 UNIT ROOTS TEST: M2Y (LEVEL FORM) Null Hypothesis: M2Y has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.604451 0.4726 Test critical values: 1% level -3.574446 5% level -2.923780 10% level -2.599925 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(M2Y) Method: Least Squares Date: 04/19/10 Time: 16:32 Sample (adjusted): 1961 2008 Included observations: 48 after adjustments Variable Coefficient Std. Error t-Statistic Prob. M2Y(-1) -0.122340 0.076250 -1.604451 0.1155 C 3.347413 1.845735 1.813594 0.0763 56 R-squared 0.052996 Mean dependent var 0.545833 Adjusted R-squared 0.032409 S.D. dependent var 4.212846 S.E. of regression 4.144015 Akaike info criterion 5.721981 789.9517 Schwarz criterion 5.799948 F-statistic 2.574263 Prob(F-statistic) 0.115459 Sum squared resid Log likelihood -135.3275 Durbin-Watson stat 1.698468 UNIT ROOTS TEST: M2Y (1ST DIFF) Null Hypothesis: D(M2Y) has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -6.004550 0.0000 Test critical values: 1% level -3.577723 5% level -2.925169 10% level -2.600658 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(M2Y,2) Method: Least Squares Date: 04/19/10 Time: 16:38 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(M2Y(-1)) -0.951215 0.158416 -6.004550 0.0000 C 0.536688 0.629592 0.852437 0.3985 R-squared 0.444819 Mean dependent var 0.214894 Adjusted R-squared 0.432481 S.D. dependent var 5.708726 S.E. of regression 4.300602 Akaike info criterion 5.797008 Sum squared resid 832.2830 Schwarz criterion 5.875738 F-statistic 36.05462 Prob(F-statistic) 0.000000 Log likelihood Durbin-Watson stat -134.2297 1.896214 57 UNIT ROOTS TEST: BDY (LEVEL FORM) Null Hypothesis: BDY has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.011906 0.7418 Test critical values: 1% level -3.574446 5% level -2.923780 10% level -2.599925 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(BDY) Method: Least Squares Date: 04/19/10 Time: 16:40 Sample (adjusted): 1961 2008 Included observations: 48 after adjustments Variable Coefficient Std. Error t-Statistic Prob. BDY(-1) -0.068431 0.067626 -1.011906 0.3169 C 1.743543 1.233150 1.413894 0.1641 R-squared 0.021775 Mean dependent var 0.595000 Adjusted R-squared 0.000509 S.D. dependent var 3.340558 S.E. of regression 3.339707 Akaike info criterion 5.290417 Sum squared resid 513.0676 Schwarz criterion 5.368384 F-statistic 1.023954 Prob(F-statistic) 0.316876 Log likelihood Durbin-Watson stat -124.9700 1.543876 UNIT ROOTS TEST: BDY (1ST DIFF) Null Hypothesis: D(BDY) has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -5.296887 0.0001 Test critical values: 1% level -3.577723 5% level -2.925169 10% level -2.600658 *MacKinnon (1996) one-sided p-values. 58 Augmented Dickey-Fuller Test Equation Dependent Variable: D(BDY,2) Method: Least Squares Date: 04/19/10 Time: 16:40 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(BDY(-1)) -0.864138 0.163141 -5.296887 0.0000 C 0.545719 0.498285 1.095193 0.2793 R-squared 0.384043 Mean dependent var 0.207234 Adjusted R-squared 0.370355 S.D. dependent var 4.269511 S.E. of regression 3.387865 Akaike info criterion 5.319898 516.4933 Schwarz criterion 5.398628 F-statistic 28.05701 Prob(F-statistic) 0.000003 Sum squared resid Log likelihood -123.0176 Durbin-Watson stat 1.881855 UNIT ROOTS TEST: CPSY (LEVEL FORM) Null Hypothesis: CPSY has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.348899 0.5992 Test critical values: 1% level -3.574446 5% level -2.923780 10% level -2.599925 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(CPSY) Method: Least Squares Date: 04/19/10 Time: 16:43 Sample (adjusted): 1961 2008 Included observations: 48 after adjustments Variable Coefficient Std. Error t-Statistic Prob. CPSY(-1) -0.127564 0.094569 -1.348899 0.1840 C 2.323394 1.405396 1.653195 0.1051 R-squared 0.038050 Mean dependent var 0.602083 Adjusted R-squared 0.017138 S.D. dependent var 4.115073 59 S.E. of regression Sum squared resid Log likelihood 4.079659 Akaike info criterion 5.690677 765.6063 Schwarz criterion 5.768644 F-statistic 1.819527 Prob(F-statistic) 0.183973 -134.5763 Durbin-Watson stat 1.709853 UNIT ROOTS TEST: CPSY (1ST DIFF) Null Hypothesis: D(CPSY) has a unit root Exogenous: Constant Lag Length: 1 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -5.901828 0.0000 Test critical values: 1% level -3.581152 5% level -2.926622 10% level -2.601424 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(CPSY,2) Method: Least Squares Date: 04/19/10 Time: 16:43 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(CPSY(-1)) -1.403120 0.237743 -5.901828 0.0000 D(CPSY(-1),2) 0.391469 0.166329 2.353585 0.0232 C 0.687294 0.601315 1.142986 0.2594 R-squared 0.521645 Mean dependent var 0.186957 Adjusted R-squared 0.499396 S.D. dependent var 5.719969 S.E. of regression 4.047071 Akaike info criterion 5.696857 704.2876 Schwarz criterion 5.816116 F-statistic 23.44572 Prob(F-statistic) 0.000000 Sum squared resid Log likelihood Durbin-Watson stat \ -128.0277 1.919191 60 UNIT ROOTS TEST: DCY (LEVEL FORM) Null Hypothesis: DCY has a unit root Exogenous: Constant Lag Length: 1 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -2.483480 0.1259 Test critical values: 1% level -3.577723 5% level -2.925169 10% level -2.600658 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(DCY) Method: Least Squares Date: 04/19/10 Time: 16:49 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Variable Coefficient Std. Error t-Statistic Prob. DCY(-1) -0.201293 0.081053 -2.483480 0.0169 D(DCY(-1)) 0.217699 0.146402 1.486998 0.1441 C 4.769768 2.118166 2.251839 0.0294 R-squared 0.136189 Mean dependent var 0.312340 Adjusted R-squared 0.096925 S.D. dependent var 8.017347 S.E. of regression 7.618905 Akaike info criterion 6.960844 Sum squared resid 2554.099 Schwarz criterion 7.078938 F-statistic 3.468544 Prob(F-statistic) 0.039922 Log likelihood Durbin-Watson stat -160.5798 2.026942 UNIT ROOTS TEST: DCY (1ST DIFF) Null Hypothesis: D(DCY) has a unit root Exogenous: Constant Lag Length: 0 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -5.864103 0.0000 Test critical values: 1% level -3.577723 5% level -2.925169 10% level -2.600658 61 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(DCY,2) Method: Least Squares Date: 04/19/10 Time: 16:50 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(DCY(-1)) -0.875911 0.149368 -5.864103 0.0000 C 0.291905 1.173667 0.248712 0.8047 R-squared 0.433162 Mean dependent var 0.147660 Adjusted R-squared 0.420565 S.D. dependent var 10.56808 S.E. of regression 8.044485 Akaike info criterion 7.049472 Sum squared resid 2912.118 Schwarz criterion 7.128202 F-statistic 34.38770 Prob(F-statistic) 0.000000 Log likelihood -163.6626 Durbin-Watson stat 1.973452 UNIT ROOTS TEST: INV (LEVEL FORM) Null Hypothesis: INV has a unit root Exogenous: Constant Lag Length: 2 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.426917 0.5610 Test critical values: 1% level -3.581152 5% level -2.926622 10% level -2.601424 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(INV) Method: Least Squares Date: 04/22/10 Time: 18:20 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Variable Coefficient Std. Error t-Statistic Prob. INV(-1) -0.176320 0.123567 -1.426917 0.1610 D(INV(-1)) -0.310495 0.173855 -1.785945 0.0813 D(INV(-2)) -0.238751 0.163437 -1.460812 0.1515 C 1.593039 1.137438 1.400550 0.1687 62 R-squared 0.196503 Mean dependent var 0.074313 Adjusted R-squared 0.139110 S.D. dependent var 2.399217 S.E. of regression 2.226093 Akaike info criterion 4.521315 208.1306 Schwarz criterion 4.680327 F-statistic 3.423826 Prob(F-statistic) 0.025614 Sum squared resid Log likelihood -99.99024 Durbin-Watson stat 1.898411 UNIT ROOTS TEST: INV (1ST DIFF) Null Hypothesis: D(INV) has a unit root Exogenous: Constant Lag Length: 1 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -6.628196 0.0000 Test critical values: 1% level -3.581152 5% level -2.926622 10% level -2.601424 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(INV,2) Method: Least Squares Date: 04/22/10 Time: 18:21 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(INV(-1)) -1.717120 0.259063 -6.628196 0.0000 D(INV(-1),2) 0.301414 0.159312 1.891976 0.0652 C 0.039153 0.332391 0.117792 0.9068 R-squared 0.650397 Mean dependent var 0.124530 Adjusted R-squared 0.634137 S.D. dependent var 3.724381 S.E. of regression 2.252753 Akaike info criterion 4.525176 218.2205 Schwarz criterion 4.644436 F-statistic 39.99837 Prob(F-statistic) 0.000000 Sum squared resid Log likelihood Durbin-Watson stat -101.0791 1.950090 63 UNIT ROOTS TEST: R (LEVEL FORM) Null Hypothesis: R has a unit root Exogenous: Constant Lag Length: 2 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -1.128923 0.6965 Test critical values: 1% level -3.581152 5% level -2.926622 10% level -2.601424 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(R) Method: Least Squares Date: 04/19/10 Time: 16:59 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Variable Coefficient Std. Error t-Statistic Prob. R(-1) -0.087410 0.077427 -1.128923 0.2653 D(R(-1)) -0.371164 0.147494 -2.516470 0.0158 D(R(-2)) -0.359451 0.143234 -2.509547 0.0160 C 1.827367 1.324924 1.379224 0.1751 R-squared 0.250734 Mean dependent var 0.286522 Adjusted R-squared 0.197215 S.D. dependent var 4.207061 S.E. of regression 3.769455 Akaike info criterion 5.574679 Sum squared resid 596.7693 Schwarz criterion 5.733692 F-statistic 4.684944 Prob(F-statistic) 0.006534 Log likelihood Durbin-Watson stat -124.2176 1.867452 UNIT ROOTS TEST: R (1ST DIFF) Null Hypothesis: D(R) has a unit root Exogenous: Constant Lag Length: 1 (Automatic based on AIC, MAXLAG=10) t-Statistic Prob.* Augmented Dickey-Fuller test statistic -7.948964 0.0000 Test critical values: 1% level -3.581152 5% level -2.926622 10% level -2.601424 64 *MacKinnon (1996) one-sided p-values. Augmented Dickey-Fuller Test Equation Dependent Variable: D(R,2) Method: Least Squares Date: 04/19/10 Time: 17:01 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Variable Coefficient Std. Error t-Statistic Prob. D(R(-1)) -1.810510 0.227767 -7.948964 0.0000 D(R(-1),2) 0.389436 0.141198 2.758084 0.0085 C 0.470843 0.559952 0.840862 0.4051 R-squared 0.702279 Mean dependent var 0.063913 Adjusted R-squared 0.688431 S.D. dependent var 6.774593 S.E. of regression 3.781466 Akaike info criterion 5.561094 Sum squared resid 614.8779 Schwarz criterion 5.680353 F-statistic 50.71519 Prob(F-statistic) 0.000000 Log likelihood Durbin-Watson stat -124.9052 1.876170 65 APPENDIX 2 CO INTEGRATION & VECTOR ERROR CORRECTION MODEL (VECM) RESULTS FD = M2Y Date: 04/20/10 Time: 12:29 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Trend assumption: Linear deterministic trend Series: RGDP M2Y INVT R Lags interval (in first differences): 1 to 2 Unrestricted Cointegration Rank Test (Trace) Hypothesized Trace 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.431905 48.15180 47.85613 0.0469 At most 1 0.209953 22.14033 29.79707 0.2908 At most 2 0.147865 11.29983 15.49471 0.1937 At most 3 * 0.082074 3.939367 3.841466 0.0472 Trace test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegration Rank Test (Maximum Eigenvalue) Hypothesized Max-Eigen 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None* 0.431905 39.01147 27.58434 0.0384 At most 1 0.209953 10.84049 21.13162 0.6632 At most 2 0.147865 7.360467 14.26460 0.4474 At most 3 * 0.082074 3.939367 3.841466 0.0472 Max-eigenvalue test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegrating Coefficients (normalized by b'*S11*b=I): RGDP M2Y INVT R 1.35E-06 -0.002650 -2.71E-05 0.185767 5.01E-08 -0.132712 -1.47E-05 0.044824 1.03E-06 0.058329 -1.07E-05 -0.111149 1.17E-06 -0.039948 6.48E-06 -0.035658 66 Unrestricted Adjustment Coefficients (alpha): D(RGDP) 47909.06 -83219.10 -136344.2 29813.47 D(M2Y) -0.463550 1.293927 0.407335 0.431165 D(INVT) 48258.38 12457.20 8109.020 856.3570 D(R) 0.057434 -0.978301 0.723240 0.451706 Log likelihood -863.950 1 Cointegrating Equation(s): Normalized cointegrating coefficients (standard error in parentheses) RGDP M2Y INVT R 1.000000 -19.63721 -20.10934 137648.9 (2.12998) (3.79384) (31006.1) Adjustment coefficients (standard error in parentheses) D(RGDP) - 0.064657 (0.01343) D(M2Y) -6.26E-07 D(INVT) - 0.065128 D(R) -7.75E-08 (7.7E-07) (0.01467) (7.3E-07) 2 Cointegrating Equation(s): Log likelihood -858.529 Normalized cointegrating coefficients (standard error in parentheses) RGDP M2Y INVT 1.000000 0.000000 -19.90718 137087.3 (3.63774) (29069.2) 0.000103 -0.285959 (6.3E-05) (0.49983) 0.000000 1.000000 R Adjustment coefficients (standard error in parentheses) D(RGDP) D(M2Y) D(INVT) D(R) 0.060484 10917.23 (0.09160) (9003.60) -5.61E-07 -0.170492 (7.1E-07) (0.06985) 0.065753 -1781.118 (0.01441) (1416.71) 2.85E-08 0.129680 (7.0E-07) (0.06865) 3 Cointegrating Equation(s): Log likelihood -854.849 Normalized cointegrating coefficients (standard error in parentheses) RGDP M2Y INVT R 1.000000 0.000000 0.000000 -1125678. 67 (386067.) 0.000000 1.000000 0.000000 6.244106 (2.19730) 0.000000 0.000000 1.000000 -63432.62 (19755.4) Adjustment coefficients (standard error in parentheses) D(RGDP) D(M2Y) -0.079345 2964.408 1.379453 (0.10838) (9266.22) (2.08669) -1.43E-07 -0.146732 -1.07E-05 (8.8E-07) (0.07566) (1.7E-05) 0.074069 -1308.127 -1.579121 (0.01795) (1535.00) (0.34567) 7.70E-07 0.171866 5.04E-06 (8.5E-07) (0.07292) (1.6E-05) D(INVT) D(R) Vector Error Correction Estimates Date: 04/20/10 Time: 12:41 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Standard errors in ( ) & t-statistics in [ ] Co integrating Eq: CointEq1 RGDP(-1) 1.000000 M2Y(-1) -19.63721 (2.1299.8) [-9.24983] INVT(-1) -20.10934 (3.79384) [-5.30053] R(-1) 137648.9 (31006.1) [ 4.43941] C -2596956. Error Correction: D(RGDP) D(M2Y) D(INVT) D(R) CointEq1 - 0.064657 -6.26E-07 0.065128 7.75E-08 D(RGDP(-1)) (0.01343) (7.7E-07) (0.01467) (7.3E-07) [ -4.81437] [-0.81507] [ 4.43837] [ 0.10591] 0.510440 1.34E-06 -0.029206 -3.86E-06 (0.24177) (2.0E-06) (0.03797) (1.9E-06) [ 2.11124] [ 0.67645] [-0.76918] [-2.03891] 68 D(RGDP(-2)) D(M2Y(-1)) D(M2Y(-2)) D(INVT(-1)) D(INVT(-2)) D(R(-1)) D(R(-2)) C R-squared 0.249435 2.45E-06 -0.135356 2.85E-06 (0.22742) (1.9E-06) (0.03572) (1.8E-06) [ 1.09678] [ 1.31334] [-3.78970] [ 1.59857] 8371.129 0.152442 5003.222 -0.074976 (22564.3) (0.18536) (3543.70) (0.17674) [ 0.37099] [ 0.82242] [ 1.41186] [-0.42422] 19731.18 0.118125 -5626.124 0.015149 (20808.1) (0.17093) (3267.89) (0.16298) [ 0.94825] [ 0.69106] [-1.72164] [ 0.09295] 2.463704 -1.16E-05 -0.168948 1.28E-06 (1.67826) (1.4E-05) (0.26357) (1.3E-05) [ 1.46801] [-0.84093] [-0.64100] [ 0.09770] 0.375959 -9.78E-06 -0.247380 5.81E-06 (1.28568) (1.1E-05) (0.20191) (1.0E-05) [ 0.29242] [-0.92607] [-1.22517] [ 0.57699] -20641.92 0.629199 -11801.20 -0.430795 (20656.7) (0.16969) (3244.11) (0.16180) [-0.99929] [ 3.70798] [-3.63773] [-2.66257] -13489.54 0.073054 -14191.14 -0.448381 (22768.6) (0.18704) (3575.79) (0.17834) [-0.59246] [ 0.39058] [-3.96867] [-2.51420] 150709.2 -1.053837 92163.63 1.053534 (134140.) (1.10192) (21066.6) (1.05068) [ 1.12352] [-0.95636] [ 4.37486] [ 1.00272] 0.834310 0.357620 0.823375 0.388585 Adj. R-squared 0.792888 0.197025 0.779219 0.235731 Sum sq. resids 7.94E+12 535.6338 1.96E+11 486.9747 S.E. equation 469561.1 3.857294 73744.18 3.677917 F-statistic 20.14153 2.226845 18.64686 2.542200 -660.3728 -121.7318 -575.2178 -119.5413 Log likelihood Akaike AIC 29.14664 5.727469 25.44425 5.632230 Schwarz SC 29.54418 6.125000 25.84178 6.029761 Mean dependent 518250.6 0.563043 15610.14 0.286522 S.D. dependent 1031786. 4.304590 156944.8 4.207061 Determinant resid covariance (dof adj.) 1.38E+23 Determinant resid covariance 5.16E+22 Log likelihood -863.950 69 Akaike information criterion 35.56303 Schwarz criterion 37.31216 VEC Granger Causality/Block Exogeneity Wald Tests Date: 04/20/10 Time: 13:23 Sample: 1960 2008 Included observations: 46 Dependent variable: D(RGDP) Excluded D(M2Y) Chi-sq df Prob. 18.91163 2 0.0008 D(INVT) 5.760485 2 0.0561 D(R) 1.073699 2 0.6415 All 25.74588 6 0.2248 Dependent variable: D(M2Y) Excluded Chi-sq df Prob. D(RGDP) 2.373327 2 0.3052 D(INVT) 0.865281 2 0.6488 D(R) 14.56128 2 0.0007 All 16.71762 6 0.0104 Dependent variable: D(INVT) Excluded Chi-sq df Prob. D(RGDP) 15.65119 2 0.0004 D(M2Y) 3.999479 2 0.1354 D(R) 21.76162 2 0.0000 All 26.87845 6 0.0002 Dependent variable: D(R) Excluded Chi-sq df Prob. D(RGDP) 6.147163 2 0.0463 D(M2Y) 0.180118 2 0.9139 D(INVT) 0.941389 2 0.6246 All 7.143326 6 0.3078 70 FD = BDY Date: 04/20/10 Time: 13:44 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Trend assumption: Linear deterministic trend Series: RGDP BDY INVT R Lags interval (in first differences): 1 to 2 Unrestricted Cointegration Rank Test (Trace) Hypothesized Trace 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.425469 50.28226 47.85613 0.0290 At most 1 0.216329 24.78901 29.79707 0.1691 At most 2 0.158850 13.57577 15.49471 0.0953 At most 3 * 0.114976 5.618464 3.841466 0.0178 Trace test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegration Rank Test (Maximum Eigenvalue) Hypothesized Max-Eigen 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None* 0.425469 35.49325 27.58434 0.0404 At most 1 0.216329 11.21324 21.13162 0.6260 At most 2 0.158850 7.957306 14.26460 0.3830 At most 3 * 0.114976 5.618464 3.841466 0.0178 Max-eigenvalue test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegrating Coefficients (normalized by b'*S11*b=I): RGDP BDY INVT R 1.21E-06 -0.021560 -2.87E-05 0.204607 -0.051852 4.09E-07 0.139192 1.21E-05 -1.34E-06 -0.019736 1.12E-05 0.108333 -7.86E-07 0.082852 -7.64E-06 -0.000838 Unrestricted Adjustment Coefficients (alpha): D(RGDP) 50372.32 80037.81 128114.8 -66810.30 D(BDY) -0.359303 -0.768108 -0.641173 -0.400606 71 D(INVT) 48817.49 -6567.337 -12319.62 678.5075 D(R) -0.205608 1.243398 -0.712840 -0.048344 Log likelihood -953.024 1 Cointegrating Equation(s): Normalized cointegrating coefficients (standard error in parentheses) RGDP BDY INVT R 1.000000 -17.81975 -23.73682 169114.7 (2.6341.5) (4.47431) (37421.1) Adjustment coefficients (standard error in parentheses) D(RGDP) -0.060944 D(BDY) -4.35E-07 D(INVT) 0.059063 (0.01440) (5.3E-07) (0.01334) D(R) -2.49E-07 (6.5E-07) 2 Cointegrating Equation(s): Log likelihood -947.418 Normalized cointegrating coefficients (standard error in parentheses) RGDP BDY INVT R 1.000000 0.000000 -21.08980 154391.9 0.000000 1.000000 (4.18780) (34287.8) 0.000149 -0.826204 (5.9E-05) (0.48313) Adjustment coefficients (standard error in parentheses) D(RGDP) 0.093681 10054.59 (0.08745) (9644.35) D(BDY) -7.49E-07 -0.099168 (5.3E-07) (0.05890) D(INVT) 0.056377 -1966.606 (0.01401) (1545.41) D(R) 2.60E-07 0.177504 (6.3E-07) (0.06994) 3 Cointegrating Equation(s): Log likelihood -943.439 Normalized cointegrating coefficients (standard error in parentheses) RGDP BDY INVT R 1.000000 0.000000 0.000000 -290308.9 0.000000 1.000000 0.000000 2.306007 0.000000 0.000000 1.000000 -21086.06 (98439.0) (0.88480) 72 (5135.26) Adjustment coefficients (standard error in parentheses) D(RGDP) -0.078305 7526.095 0.950979 (0.12054) (9252.94) (2.15289) D(BDY) 1.12E-07 -0.086514 -6.11E-06 (7.5E-07) (0.05750) (1.3E-05) D(INVT) 0.072915 -1723.463 -1.618915 (0.01997) (1532.94) (0.35667) 1.22E-06 0.191572 1.29E-05 (8.9E-07) (0.06857) (1.6E-05) D(R) Vector Error Correction Estimates Date: 04/20/10 Time: 13:50 Sample (adjusted): 1963 2008 Included observations: 46 after adjustments Standard errors in ( ) & t-statistics in [ ] Cointegrating Eq: CointEq1 RGDP(-1) 1.000000 BDY(-1) -17.81975 (2.6341.5) [-6.76490] INVT(-1) -23.73682 (4.47431) [-5.30513] R(-1) 169114.7 (37421.1) [ 4.51923] C -2497008. Error Correction: D(RGDP) D(BDY) CointEq1 -0.060944 (0.01440) [ -4.23222] D(RGDP(-1)) D(RGDP(-2)) D(INVT) D(R) -4.35E-07 0.059063 -2.49E-07 (5.3E-07) (0.01334) (6.5E-07) [-0.82157] [ 4.42734] [-0.38212] -3.48E-06 0.519862 8.80E-07 -0.017295 (0.22300) (1.4E-06) (0.03525) (1.7E-06) [ 2.33124] [ 0.62930] [-0.49067] [-2.02044] 0.268772 2.03E-06 -0.103891 3.51E-06 (0.21064) (1.3E-06) (0.03329) (1.6E-06) 73 D(BDY(-1)) D(BDY(-2)) D(INVT(-1)) D(INVT(-2)) D(R(-1)) D(R(-2)) C [ 1.27599] [ 1.53524] [-3.12042] [ 2.15809] 9499.229 0.147386 7738.790 -0.192814 (29525.2) (0.18510) (4666.86) (0.22774) [ 0.32173] [ 0.79625] [ 1.65825] [-0.84665] 23068.49 0.204335 -2806.895 0.037080 (27838.5) (0.17453) (4400.25) (0.21473) [ 0.82865] [ 1.17081] [-0.63789] [ 0.17268] 2.554454 -9.28E-06 -0.092358 -4.77E-06 (1.75916) (1.1E-05) (0.27806) (1.4E-05) [ 1.45208] [-0.84121] [-0.33215] [-0.35146] 0.407711 -7.30E-06 -0.209353 2.50E-06 (1.29872) (8.1E-06) (0.20528) (1.0E-05) [ 0.31393] [-0.89669] [-1.01984] [ 0.24931] -21237.42 0.448895 -11421.67 -0.397102 (20437.0) (0.12812) (3230.35) (0.15764) [-1.03916] [ 3.50359] [-3.53574] [-2.51907] -14254.49 0.035453 -13125.52 -0.405969 (22244.6) (0.13946) (3516.06) (0.17158) [-0.64081] [ 0.25422] [-3.73302] [-2.36606] 134675.9 -0.658774 70747.68 0.743571 (111786.) (0.70081) (17669.3) (0.86225) [ 1.20477] [-0.94002] [ 4.00399] [ 0.86236] R-squared 0.831783 0.395890 0.818357 0.398023 Adj. R-squared 0.789729 0.244862 0.772946 0.247528 Sum sq. resids 8.06E+12 316.7294 2.01E+11 479.4577 S.E. equation 473128.8 2.966149 74784.45 3.649420 F-statistic 19.77882 2.621310 18.02120 2.644769 -660.7210 -109.6475 -575.8622 -119.1835 Akaike AIC 29.16178 5.202066 25.47227 5.616674 Log likelihood Schwarz SC 29.55931 5.599597 25.86980 6.014205 Mean dependent 518250.6 0.607609 15610.14 0.286522 S.D. dependent 1031786. 3.413343 156944.8 4.207061 Determinant resid covariance (dof adj.) 8.56E+22 Determinant resid covariance 3.21E+22 Log likelihood -953.024 Akaike information criterion 45.08801 Schwarz criterion 46.83715 74 VEC Granger Causality/Block Exogeneity Wald Tests Date: 04/20/10 Time: 14:10 Sample: 1960 2008 Included observations: 46 Dependent variable: D(RGDP) Excluded Chi-sq df Prob. D(BDY) 11.924919 2 0.0027 D(INVT) 5.470083 2 0.0649 D(R) 1.156680 2 0.2608 All 18.55168 6 0.3284 Dependent variable: D(BDY) Excluded Chi-sq df Prob. D(RGDP) 3.642765 2 0.1618 D(INVT) 0.822841 2 0.6627 D(R) 13.52137 2 0.0012 All 18.19067 6 0.0058 Dependent variable: D(INVT) Excluded Chi-sq df Prob. D(RGDP) 11.92579 2 0.0026 D(BDY) 2.857852 2 0.2396 D(R) 19.33147 2 0.0001 All 23.32212 6 0.0007 Dependent variable: D(R) Excluded Chi-sq df Prob. D(RGDP) 6.751302 2 0.0342 D(BDY) 0.716956 2 0.6987 D(INVT) 1.293326 2 0.5238 All 7.578875 6 0.2706 75 FD= CPSY Date: 04/20/10 Time: 14:59 Sample (adjusted): 1964 2008 Included observations: 45 after adjustments Trend assumption: Linear deterministic trend Series: RGDP CPSY INVT R Lags interval (in first differences): 1 to 3 Unrestricted Cointegration Rank Test (Trace) Hypothesized Trace 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.794927 102.5839 47.85613 0.0000 At most 1 * 0.332094 31.28647 29.79707 0.0334 At most 2 0.181745 13.12415 15.49471 0.1103 At most 3 * 0.087043 4.098010 3.841466 0.0429 Trace test indicates 2 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegration Rank Test (Maximum Eigenvalue) Hypothesized Max-Eigen 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.794927 71.29742 27.58434 0.0000 At most 1 0.332094 18.16232 21.13162 0.1239 At most 2 0.181745 9.026136 14.26460 0.2840 At most 3 * 0.087043 4.098010 3.841466 0.0429 Max-eigenvalue test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegrating Coefficients (normalized by b'*S11*b=I): RGDP CPSY INVT R 2.74E-06 -0.008216 -1.50E-05 0.182064 -2.86E-07 0.020281 2.99E-05 -0.222319 -2.72E-06 0.058977 3.25E-05 -0.049556 -8.97E-07 -0.259352 -3.12E-06 0.151117 Unrestricted Adjustment Coefficients (alpha): D(RGDP) 112811.7 117877.8 104008.0 38890.75 76 D(CPSY) -0.412844 0.739325 -1.212507 -0.194152 D(INVT) 28050.66 -19314.76 -13521.51 -3521.658 D(R) -0.090130 -0.015099 0.353893 -0.784214 Log likelihood -1170.906 1 Cointegrating Equation(s): Normalized cointegrating coefficients (standard error in parentheses) RGDP CPSY INVT R 1.000000 -29.93610 -5.466015 66334.87 (8.862.51) (1.08153) (10014.1) Adjustment coefficients (standard error in parentheses) D(RGDP) - 0.309626 (0.12220) D(CPSY) -1.13E-06 (1.6E-06) D(INVT) 0.076989 (0.02493) D(R) -2.47E-07 (1.4E-06) 2 Cointegrating Equation(s): Log likelihood -1161.825 Normalized cointegrating coefficients (standard error in parentheses) RGDP CPSY INVT R 1.000000 0.000000 -1.105957 34996.48 (1.52371) (12276.4) 0.001456 -10.46843 (0.00038) (3.07457) 0.000000 1.000000 Adjustment coefficients (standard error in parentheses) D(RGDP) 0.275901 1463.735 (0.16567) (1313.68) D(CPSY) -1.34E-06 0.018386 (1.6E-06) (0.01242) 0.082515 -622.1893 (0.02310) (183.152) D(INVT) D(R) -2.43E-07 0.000434 (1.4E-06) (0.01113) 3 Cointegrating Equation(s): Log likelihood -1157.312 Normalized cointegrating coefficients (standard error in parentheses) RGDP CPSY INVT R 1.000000 0.000000 0.000000 22002.63 0.000000 1.000000 0.000000 (11711.1) 6.643407 (2.03681) 77 0.000000 0.000000 1.000000 -11748.96 (2558.03) Adjustment coefficients (standard error in parentheses) D(RGDP) -0.006726 7597.821 5.204639 (0.22057) (3582.65) (2.65374) D(CPSY) 1.95E-06 -0.053124 -1.11E-05 (2.0E-06) (0.03288) (2.4E-05) D(INVT) 0.119257 -1419.648 -1.436591 (0.03097) (503.102) (0.37266) D(R) -1.20E-06 0.021306 1.24E-05 (2.0E-06) (0.03173) (2.4E-05) Vector Error Correction Estimates Date: 04/20/10 Time: 15:10 Sample (adjusted): 1964 2008 Included observations: 45 after adjustments Standard errors in ( ) & t-statistics in [ ] Co integrating Eq: CointEq1 RGDP(-1) 1.000000 CPSY(-1) -29.93610 (8.862.51) [-3.36881] INVT(-1) -5.466015 (1.06394) [-5.13752] R(-1) 66334.87 (9851.26) [ 6.73364] C -2877366. Error Correction: D(RGDP) D(CPSY) D(INVT) D(R) CointEq1 - 0.309626 -1.13E-06 0.076989 -2.47E-07 D(RGDP(-1)) D(RGDP(-2)) (0.12220) (1.6E-06) (0.02452) (1.4E-06) [ -2.53376] [-0.71930] [ 3.13945] [-0.18018] 0.056865 3.16E-06 -0.167859 -3.89E-06 (0.42274) (3.9E-06) (0.06020) (3.4E-06) [ 0.13452] [ 0.81722] [-2.78814] [-1.15416] -0.043945 2.37E-06 -0.130854 2.79E-06 (0.35367) (3.2E-06) (0.05037) (2.8E-06) 78 D(RGDP(-3)) D(CPSY(-1)) D(CPSY(-2)) D(CPSY(-3)) D(INVT(-1)) D(INVT(-2)) D(INVT(-3)) D(R(-1)) D(R(-2)) D(R(-3)) C R-squared [-0.12425] [ 0.73275] [-2.59799] [ 0.98914] -0.562722 1.59E-06 0.048269 2.39E-06 (0.33177) (3.0E-06) (0.04725) (2.6E-06) [-1.69610] [ 0.52507] [ 1.02159] [ 0.90501] 12790.69 0.021986 -2091.042 -0.078031 (22215.6) (0.20323) (3163.80) (0.17713) [ 0.57575] [ 0.10818] [-0.66093] [-0.44053] 1837.604 -0.442094 -2994.248 0.350145 (21403.7) (0.19581) (3048.18) (0.17066) [ 0.08585] [-2.25780] [-0.98231] [ 2.05175] -3005.033 -0.156466 -1503.185 0.420733 (24664.2) (0.22564) (3512.52) (0.19665) [-0.12184] [-0.69345] [-0.42795] [ 2.13946] 2.404523 -1.29E-05 -1.118334 4.92E-06 (0.90703) (8.3E-06) (0.12917) (7.2E-06) [ 2.65098] [-1.55039] [-8.65760] [ 0.68054] 0.052982 -6.22E-06 -1.264281 1.13E-05 (1.17400) (1.1E-05) (0.16719) (9.4E-06) [ 0.04513] [-0.57937] [-7.56179] [ 1.20407] -2.253979 1.46E-05 -1.483038 2.06E-06 (1.66944) (1.5E-05) (0.23775) (1.3E-05) [-1.35014] [ 0.95453] [-6.23778] [ 0.15444] -7164.856 0.375659 -10650.07 -0.468817 (25861.0) (0.23658) (3682.95) (0.20620) [-0.27705] [ 1.58785] [-2.89172] [-2.27365] -12395.69 -0.017619 -11061.95 -0.232980 (25734.7) (0.23543) (3664.97) (0.20519) [-0.48167] [-0.07484] [-3.01829] [-1.13544] 33161.20 0.002295 -8191.826 0.192400 (28475.6) (0.26050) (4055.32) (0.22704) [ 1.16455] [ 0.00881] [-2.02002] [ 0.84742] 698045.5 -2.349252 188607.6 -0.003474 (389509.) (3.56334) (55471.4) (3.10565) [ 1.79212] [-0.65928] [ 3.40009] [-0.00112] 0.884720 0.422397 0.899505 0.561676 79 Adj. R-squared 0.836377 0.180176 0.857362 0.377863 Sum sq. resids 5.49E+12 459.5481 1.11E+11 349.0757 S.E. equation 420866.3 3.850212 59937.13 3.355668 F-statistic 18.30085 1.743851 21.34410 3.055689 -638.2202 -116.1328 -550.5144 -109.9463 Akaike AIC 28.98757 5.783680 25.08953 5.508725 Log likelihood Schwarz SC 29.54964 6.345753 25.65160 6.070798 Mean dependent 529763.8 0.613333 15955.37 0.292889 S.D. dependent 1040452. 4.252304 158700.5 4.254376 Determinant resid covariance (dof adj.) 1.51E+22 Determinant resid covariance 3.40E+21 Log likelihood -1170.906 Akaike information criterion 53.59584 Schwarz criterion 56.00473 VEC Granger Causality/Block Exogeneity Wald Tests Date: 04/20/10 Time: 15:55 Sample: 1960 2008 Included observations: 45 Dependent variable: D(RGDP) Excluded Chi-sq df Prob. D(CPSY) 0.455695 3 0.9285 D(INVT) 15.53681 3 0.0014 D(R) 3.854121 3 0.2777 All 28.41365 9 0.0008 Dependent variable: D(CPSY) Excluded Chi-sq df Prob. D(RGDP) 9.798188 3 0.0499 D(INVT) 3.548964 3 0.3145 D(R) 4.355336 3 0.2256 All 17.70249 9 0.5900 Dependent variable: D(INVT) Excluded Chi-sq df Prob. D(RGDP) 17.16512 3 0.0007 D(CPSY) 1.626494 3 0.6534 D(R) 11.11858 3 0.0111 80 All 26.39642 9 0.0018 Dependent variable: D(R) Excluded Chi-sq df Prob. D(RGDP) 7.076236 3 0.0695 D(CPSY) 11.45595 3 0.0095 D(INVT) 2.293519 3 0.5138 All 20.97190 9 0.0128 FD = DCY Date: 04/20/10 Time: 16:07 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Trend assumption: Linear deterministic trend Series: RGDP DCY INVT R Lags interval (in first differences): 1 to 1 Unrestricted Cointegration Rank Test (Trace) Hypothesized Trace 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.496994 59.33647 47.85613 0.0029 At most 1 0.277643 27.04032 29.79707 0.1006 At most 2 0.128834 11.75421 15.49471 0.1691 At most 3 * 0.106105 5.271856 3.841466 0.0217 Trace test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Cointegration Rank Test (Maximum Eigenvalue) Hypothesized Max-Eigen 0.05 No. of CE(s) Eigenvalue Statistic Critical Value Prob.** None * 0.496994 32.29616 27.58434 0.0115 At most 1 0.277643 15.28611 21.13162 0.2693 At most 2 0.128834 6.482353 14.26460 0.5521 At most 3 * 0.106105 5.271856 3.841466 0.0217 81 Max-eigenvalue test indicates 1 co integrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values Unrestricted Co integrating Coefficients (normalized by b'*S11*b=I): RGDP DCY INVT R 6.24E-07 -0.022550 -2.04E-05 0.113464 3.31E-07 -0.016329 8.17E-06 -0.009400 2.18E-07 0.073255 1.69E-06 0.000762 -2.08E-07 -0.024153 1.77E-06 0.146705 Unrestricted Adjustment Coefficients (alpha): D(RGDP) 21145.57 138487.7 82492.45 78857.73 D(DCY) 1.407676 1.656652 -2.185673 -0.555787 D(INVT) 71960.52 -5038.659 4814.818 -8580.530 D(R) -0.509208 1.023539 0.543497 -0.917774 Log likelihood -1017.404 1 Co integrating Equation(s): Normalized cointegrating coefficients (standard error in parentheses) RGDP DCY INVT R 1.000000 -36135.77 -32.70701 181821.2 (20640.5) (4.49424) (45127.4) Adjustment coefficients (standard error in parentheses) D(RGDP) -0.013196 D(DCY) -8.78E-07 D(INVT) 0.044906 (0.00146) (7.0E-07) (0.00768) D(R) -3.18E-07 (3.7E-07) 2 Co integrating Equation(s): Log likelihood -1019.761 Normalized cointegrating coefficients (standard error in parentheses) RGDP DCY INVT R 1.000000 0.000000 -189.8161 757354.1 (38.9769) (374211.) 0.000000 1.000000 -0.004348 15.92696 (0.00104) (9.94079) Adjustment coefficients (standard error in parentheses) D(RGDP) D(DCY) 0.059032 -2738.174 (0.04437) (1748.87) 1.43E-06 -0.058795 (7.7E-07) (0.03048) 82 D(INVT) 0.043239 D(R) -1540.449 (0.00867) (341.840) 2.10E-08 -0.005230 (4.0E-07) (0.01581) 3 Co integrating Equation(s): Log likelihood -1026.519 Normalized cointegrating coefficients (standard error in parentheses) RGDP DCY INVT 1.000000 0.000000 0.000000 R 58556.89 (66147.9) 0.000000 1.000000 0.000000 -0.079017 0.000000 0.000000 1.000000 -3681.444 (0.76365) (2060.68) Adjustment coefficients (standard error in parentheses) D(RGDP) 0.077024 3304.847 0.839039 (0.04545) (4818.08) (1.35559) D(DCY) 9.50E-07 -0.218907 -1.89E-05 (7.7E-07) (0.08152) (2.3E-05) D(INVT) 0.044289 -1187.737 -1.501772 (0.00906) (960.403) (0.27021) D(R) 1.40E-07 0.034584 1.97E-05 (4.2E-07) (0.04400) (1.2E-05) Vector Error Correction Estimates Date: 04/19/10 Time: 20:05 Sample (adjusted): 1962 2008 Included observations: 47 after adjustments Standard errors in ( ) & t-statistics in [ ] Co integrating Eq: CointEq1 RGDP(-1) 1.000000 DCY(-1) -36135.77 (20640.5) [-1.75072] INVT(-1) -32.70701 (4.49424) [-7.27753] R(-1) 181821.2 (45127.4) [ 4.02907] C -1357239. 83 Error Correction: D(RGDP) D(DCY) D(INVT) D(R) CointEq1 -0.013196 -8.78E-07 0.044906 -3.18E-07 D(RGDP(-1)) D(DCY(-1)) D(INVT(-1)) D(R(-1)) C R-squared (0.00146) (7.0E-07) (0.00768) (3.7E-07) [ -9.0384] [ -1.25137] [ 5.84887] [-0.86322] 0.914311 -7.01E-07 -0.020572 -4.76E-07 (0.09438) (1.6E-06) (0.01748) (8.4E-07) [ 9.68767] [-0.43839] [-1.17702] [-0.56842] 19619.94 0.207441 -777.1675 -0.054061 (8969.34) (0.15187) (1661.07) (0.07964) [ 2.18745] [ 1.36589] [-0.46787] [-0.67880] -2.13E-06 2.196554 5.87E-06 0.048782 (0.78784) (1.3E-05) (0.14590) (7.0E-06) [ 2.78809] [ 0.43998] [ 0.33434] [-0.30421] -16457.65 0.558962 -6315.568 -0.303717 (16753.6) (0.28368) (3102.66) (0.14876) [-0.98234] [ 1.97040] [-2.03553] [-2.04166] 73364.17 0.377686 25101.78 0.596235 (76488.2) (1.29513) (14165.1) (0.67916) [ 0.95916] [ 0.29162] [ 1.77208] [ 0.87790] 0.823434 0.175304 0.736897 0.158188 Adj. R-squared 0.801901 0.074731 0.704811 0.055528 Sum sq. resids 8.50E+12 2438.447 2.92E+11 670.5469 S.E. equation 455454.5 7.711959 84347.33 4.044107 F-statistic Log likelihood 38.24148 1.743055 22.96648 1.540891 -675.8460 -159.4909 -596.5874 -129.1518 Akaike AIC 29.01472 7.042165 25.64202 5.751142 Schwarz SC 29.25091 7.278354 25.87821 5.987331 Mean dependent 507229.0 0.312340 15276.55 0.280426 S.D. dependent 1023303. 8.017347 155246.3 4.161291 Determinant resid covariance (dof adj.) 1.23E+24 Determinant resid covariance 7.11E+23 Log likelihood -1017.404 Akaike information criterion 47.46398 Schwarz criterion 48.56620 84 VEC Granger Causality/Block Exogeneity Wald Tests Date: 04/20/10 Time: 16:23 Sample: 1960 2008 Included observations: 47 Dependent variable: D(RGDP) Excluded Chi-sq df Prob. D(DCY) 4.784919 1 0.0287 D(INVT) 7.773425 1 0.0053 D(R) 0.964984 1 0.3259 All 15.06185 3 0.0018 Dependent variable: D(DCY) Excluded Chi-sq df Prob. D(RGDP) 0.192188 1 0.6611 D(INVT) 0.193583 1 0.6600 D(R) 3.882477 1 0.0488 All 4.656276 3 0.1988 Dependent variable: D(INVT) Excluded Chi-sq df Prob. D(RGDP) 1.385384 1 0.2392 D(DCY) 0.218905 1 0.6399 D(R) 4.143396 1 0.0418 All 4.767695 3 0.1896 Dependent variable: D(R) Excluded Chi-sq df Prob. D(RGDP) 0.323101 1 0.5698 D(DCY) 0.460770 1 0.4973 D(INVT) 0.092541 1 0.7610 All 1.146229 3 0.7659 85 Appendix 3 RESPONSE TO CHOLESKY ONE S.D INNOVATIONS