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2014 Course: Author: ANR: Master Thesis Finance Frank van der Linden 222759 Supervisor: Co-Reader: dr. L. Baele dr. F. Castiglionesi How to Invest in the U.S. Overall Market? “A comparison between actively- and passively managed funds” [Abstract] This study examines the best strategy to invest in the U.S. overall market, by comparing the performance of a passively managed market fund against two strategies of actively managed market funds during the period 2001-2013. Additionally, the performance is measured during periods of recession and expansion. The two approaches of actively managed market funds that are used in this study are market-like (large blends) funds, as they have the same investment style as the market, and a replicated market fund, based on sector funds. The results show that neither market-like funds nor the replicated market fund are able to outperform the passively managed market fund as they obtain alphas of respectively -1.68% and -0.04%. A large part of this underperformance is attributable to high expense ratios. During recessions (expansions) the same tendency is observable, as market like funds underperformed the market by -1.22% (-2.14%) and the replicated market by -1.29% (-0.22%). The results might clarify why passively managed funds experience large net cash inflows, whereas the opposite is the case for actively managed funds. Complementary, I found that sector funds on average outperform the market and are negatively related to turnover ratio, whilst positively related to fund size and fund age. Table of Contents Chapter 1: Introduction and Problem Definition---------------------------------------- 2 Chapter 2: Theoretical and Literature Review------------------------------------------- 4 2.1.1: Mutual Fund Industry------------------------------------------------------------2.1.2: How Funds are Sold and the Corresponding Costs------------------------2.1.3: Development and Trends in the Fund Industry-------------------------------- 4 6 6 2.2.1: Mutual Fund Performance: Efficient Market and Factor Models---------2.2.2: Mutual Fund Performance: Empirical Evidence and Hypotheses---------2.2.3: Luck?-------------------------------------------------------------------------------- 9 10 13 2.3: Fund Characteristics---------------------------------------------------------------- 14 Methodology---------------------------------------------------------------------- 16 3.1.1: Factor Models---------------------------------------------------------------------3.1.2: Assumptions------------------------------------------------------------------------ 16 17 Data--------------------------------------------------------------------------------- 19 4.1: Market (Benchmark) Screening---------------------------------------------------4.2: Market-like Mutual Fund Screening---------------------------------------------4.3: Mutual Fund Sector Screening----------------------------------------------------4.4: Performance and Economic Circumstances------------------------------------- 19 20 22 25 Results------------------------------------------------------------------------------ 27 5.1.1: Carhart’s Four Factor Model--------------------------------------------------5.1.2: Market-like Fund Performance-------------------------------------------------5.1.3: Sector Fund Performance-------------------------------------------------------- 27 28 30 5.2: Fund Characteristics and Performance-----------------------------------------5.3: Mutual Fund Performance during Recessions and Expansions--------------- 33 35 Chapter 3: Chapter 4: Chapter 5: Chapter 6: Conclusions and Recommendations------------------------------------------ 38 6.1: Conclusions--------------------------------------------------------------------------6.2: Recommendations-------------------------------------------------------------------- 38 39 Bibliography --------------------------------------------------------------------------------------- 40 Appendix 1 42 --------------------------------------------------------------------------------------- 1 Chapter 1: Introduction and Problem Definition During the last decades the role of investment companies is of growing importance in the United States (U.S.) and the rest of the world. According to the Investment Company Institute (ICI, 2014), more than $17 trillion at year- end 2013 is managed by U.S. investment companies. Most of these investments are in mutual funds, which are responsible for almost 90 percent of the assets, and therefore playing a significant role in the total U.S. fund industry. Moreover, the ICI fact book (2014) pointed out that mutual funds is the most popular investment vehicle among investors, since the financial crisis in 2007. Although mutual funds are playing a central role in the investment world, it is still a debatable and relevant topic whether mutual funds are performing well over time. Previous studies investigated the performance of actively managed mutual funds compared to passively managed funds. Most of these studies found that in general, mutual funds underperformed compared to their passively managed benchmarks, which thus indicates that in general, managers of actively managed funds do not have the ability of stock picking talent. However, there are studies that analyzed the performance of certain mutual funds with a specific fund policy. Among them were Kacperczyk, Sialm and Zheng (2005), who examined the performance of industry concentrated funds in comparison to diversified funds. Skilled fund managers could benefit from their informational advantage and therefore obtain superior performance by picking the right stocks. The results indicate that this might be the case, as industry concentrated funds outperformed diversified funds. Finally, economic circumstances also play a role on mutual fund performance. According to Kosowski (2006), actively managed funds perform better during recessions compared to periods of expansion. In this study I will elaborate more on the results mentioned above, as I will investigate the best strategy to invest in the U.S. overall market during the time period 2001-2013. In order to do this, the performance of two strategies of actively managed market funds will be compared to a passively managed market fund. The first strategy entails actively managed funds, which are “market-like”. This means they have the same investment style as the market, as they tend to invest across the spectrum of U.S. sectors and consist of both growth and value stocks. The latter approach is based on sector mutual funds. The market will be replicated based on sector funds, by using the same sector weightings as the passively managed market benchmark. In addition, fund performance will be measured during recessions and expansions in the time period 2001-2013. Finally, the relation between several fund characteristics including the expense ratio, turnover ratio, management fee, fund size and fund age on fund performance will be examined. The research question that will be answered in this study is formulated as follows: 2 “What is the best strategy to invest in the U.S. overall market and how is this influenced by different economic circumstances?” The remaining is structured as follows. In chapter 2, background information will be provided regarding investment companies and trends in the investment industry will be described. Additionally, a literature review will be provided, which gives some more information about the efficient market hypothesis and mutual fund performance. Based on the literature review, four hypotheses are formulated, which contributes in answering the research question of this study. Chapter 3 describes the methodology used in this study in order to measure fund performance and the relationship between performance and several fund characteristics. Chapter 4 provides descriptive statistics regarding the passively and actively managed fund(s), and the regression results are presented in chapter 5. By means of these results the hypotheses can be answered. Finally, in chapter 6 I will conclude this study by enumerating all findings, in order to end up by answering the research question. Additionally some recommendations will be given for further research. 3 Chapter 2: Theoretical and Literature Review 2.1.1: Mutual Fund Industry This chapter starts with a thorough explanation of the fund industry in the United States (U.S.). Furthermore I will provide empirical evidence regarding mutual fund performance and specify some fund characteristics, which might have an impact on fund performance. According to the Investment Company Act of 19401, U.S. investment companies can be classified into two different types, namely: Unit Investment Trusts (UITs) and Managed Investment Companies. Investment companies are financial intermediaries that collect money from investors in order to compose a portfolio consisting of a wide range of securities. Investors in this kind of funds basically own a proportion of the portfolio based on the amount invested. Moreover, this investment strategy gives investors the opportunity to obtain the same (diversification) benefits of large-scale investing. Investment companies do have responsibilities towards their investors. First of all, they are obliged to provide shareholders with periodical reports, which give a clear overview of important statistics regarding the fund. On top of that, the investment company is responsible for professional managing the fund, which means that portfolio managers should aim for superior performance and optimal diversification. An UIT is an unmanaged fund, whereby a pool of money is invested in a fixed portfolio. In order to establish an UIT, a sponsor is required, which are typically brokerage companies. This kind of firms will buy portfolios of securities, which are deposited in a trust. Finally, they will sell the shares or “units” in the trust to the public. Fund’s trustees such as banks or trust companies are responsible for the payment of shareholders, when income is realized. Costs related for buying an UIT, comes into two ways. First of all, investors have to pay a management fee to the trustee. This is often very low as it contains an unmanaged fund. Next to that, investors have to pay a premium over their shares, which is the reward for sponsors. Unlike UITs, funds of managed investment companies are not fixed and available in two classes: closedend and open-end. Funds of both types are managed by management companies, which are appointed by the board of directors of the funds. Management companies are compensated in the form of management fees, which is normally higher compared to unmanaged UITs. Often, management companies are also the founders of the funds. The differences between open-end funds and closed-end funds arise by trading these kinds of funds. Open-end funds or also known as mutual funds can be bought from and redeemed 1 In order to stabilize financial markets after the stock market crash of 1929, the Investment Company Act (1940) was created, which defines the limitations and responsibilities of all sorts of investment companies. It is enforced and regulated by the Securities and Exchange Commission (SEC). 4 through the investment company at net asset value (NAV). They do no trade on organized exchanges. Companies of closed-end funds sell a fixed number of shares at a one-time initial public offering. After the public offering these shares can only be purchased at organized exchanges and are not redeemable. This means that holders of these shares can only sell their part to other investors via brokers at prices that probably differ from NAV. The number of shares outstanding for mutual funds will change on a daily basis, whereas this is not the case for closed-end funds. Therefore, closed-end funds could invest more in illiquid assets, as they do not face liquidity problems. Finally, it is also possible to invest in funds which have characteristics of both open-end and closed-end funds. These are called interval funds. This type of fund issues or redeems shares at pre-determined intervals. This study will primarily focus on mutual funds (open-end funds) and therefore I will describe them more extensively. Currently, there are multiple flavors of mutual funds, which are based on the investment policy. The fund’s policy can be found in the prospectus and often comprises one of the following categories: money market funds; fixed income funds; balanced and income funds; asset allocation funds; equity funds; index funds and specialized sector funds. As this study does not cover all policies, I will only discuss the relevant types. Equity funds mostly consist out of stocks, although it is possible that a small portion is invested in other types of assets. Additionally, an equity fund often holds about 5% in the money market in case of share redemptions. Equity funds can be distinguished based on their objective. Besides the funds with the objective of investing in emerging and international markets, there are also more traditional objectives such as growth and/or income. Growth funds invest in stocks which are prospects of large capital gains, whereas income funds holds value stocks which focuses on current income, such as dividend stocks. Next to that, it is also possible to invest in funds which have the objective to invest in stocks concentrated on a particular industry. In contrary to the actively managed mutual funds, it is also possible to invest in index mutual funds or Exchange-Traded Funds (ETFs) which are characterized as passively managed. The objective of index funds is to track a certain index, for example the S&P500, Total U.S. Stock Market or utilities sector. This is done by buying the same stocks as the proportion of the security’s representativeness in the index. ETFs are kind of similar, but trade like a stock. As mutual funds can be traded once a day when NAV is calculated, ETFs can trade throughout the day. This might cause that ETFs slightly deviates from its NAV. An advantage of investing in passively managed funds compared to actively managed funds is the significantly lower expenses. 5 2.1.2: How Funds are Sold and the Corresponding Costs Currently, there are two ways how actively managed mutual funds are sold to the public. First of all, shares can be indirectly sold via brokers, which require a commission for their services. These fees are often called loads and are paid by investors either at the purchase of shares (front-end load) or when they sell their shares (back-end load). The size of the commission is however determined by the fund and not part of the 12b-1 fees. In addition, brokers can also be compensated by means of a sales charge, which are paid out of the 12b-1 fees. These fees are paid annually and therefore investors should consider whether to invest for a short or long time horizon in order to make a choice between funds with load payments or 12b-1 fees. The second approach of selling fund shares is via direct marketing, which entails that shares are sold for example through various media channels or fund supermarkets. This selling method also contains several costs primarily to create awareness among investors, such as advertising cost and promotional literature costs (annual reports and funds prospectuses). The elements of 12b-1 fees mentioned above are together with costs related for operating the fund such as administrative and advisory costs, part of the operating expenses. These costs are as one would expect higher for actively managed funds compared to passively managed funds. According to the Investment Company Institute (fact book 2014, p.91), the asset-weighted average expense ratios in 2013 were respectively 0.89% for actively managed funds and 0.12% for passively managed funds. Besides the direct costs with regards to mutual funds, there are also indirect costs such as taxes on investment income. If the fund granted a pass-through status, taxes on capital gains and dividends should be paid by investors. According to the Investment Company Act of 1940, mutual funds can only be qualified as pass-through entity as they fulfill certain criteria primarily related to capital gain distributions and diversification. This tax construction entails one important disadvantage for the individual investor, as they are partly restricted to time their capital gain realizations, which results in inefficient tax liabilities. 2.1.3: Development and Trends in the Fund Industry In order to obtain a broad overview of trends and activities in the U.S. investment company industry, the latest edition (2014) of the investment company fact book2 is used, published by the Investment Company Institute (ICI)3. 2 3 http://www.ici.org/pdf/2014_factbook.pdf The ICI is the national association of U.S. Investment Companies 6 According to the ICI, almost $30 trillion is invested in mutual funds worldwide, year-end 2013. The mutual fund market in the U.S is the largest, with more than $15 trillion assets under management and thus about 50% of the market. The ETF market is significantly smaller with only $2.3 trillion assets under management worldwide. The U.S. stands for $1.7 trillion and thus responsible for 72% of the total assets in the market. Table 1 gives a broad overview of the evolvement of the fund industry in the U.S. for the period 1996 – 2013. The final column represents the total assets under management by all types of investment companies and has grown from almost $4 trillion in 1996 to $17 trillion in 2013, which is an increase of more than 350%. The rapid growth was primarily caused by the development of the mutual fund industry, which is responsible for approximately 90% of total assets under management. In addition, ETFs are gaining popularity in the last decade and plays a more significant role in the fund industry. On the other hand, UITs and closed-end funds are responsible for only 2% of total assets under management and thus are not very attractive investment vehicles. Moreover, there is hardly any growth in these types of investment companies observable. When screening the evolvement of the fund industry in table 1, I notice growth in almost every year. However, there is a large decline observable in the years 2002, 2008 and 2011, which might be caused by the collapse of the market as part of the dot-com bubble and financial crisis. I will elaborate more on the performance of funds in recessions, later on. Table 1: Investment Company Total Net Assets by Type This table provides an overview of assets under management for several types of investment companies, namely: Mutual Funds, Closed-end Funds, Exchange-Traded Funds (ETFs) and Unit Investment Trusts (UITs). Amounts are in Billions of dollars at year-end, covering the period 1996-2013. Source: ICI Fact book (2014) 7 As mentioned above, the fund industry has exploded since 1996. During 2012 and 2013 assets under management has grown by approximately 15% on yearly basis. Figure 1, contributes to the fact of the increasing popularity of investment companies. The investments in stocks have drastically decreased in the last decade, while investments in bonds are also following a negative trend. On the other hand, large investments in the fund market are observable. While funds can be seen as the most attractive investment vehicle present-day, it is also interesting to look more closely on the cash in- and outflows of the several fund types in order to check whether some trends are observable. This is done in figure 2, whereby the cumulative cash flows concerning the period 2007 2013 for actively managed funds and passively managed funds are graphically displayed. When looking at figure 2, some obvious trends are observable. Actively managed U.S. equity mutual funds are experiencing a yearly increasing cash outflow, while the opposite is observable for passively managed funds as inflows are steadily increasing every year. Although figure 2 represents only a small period in mutual fund history, it definitely show signs of the increasing popularity for passively managed funds. As already mentioned, it might be that the financial crisis plays a role for this particular trend as it is completely covered by the time period. On the other hand, fund performance could also be the underlying reason, which might indicate that actively managed funds are underperforming their passively managed peers. Figure 1: U.S. Household Net Investments in Funds, Bonds and Equities This figure provides an overview of investments by households in funds, bonds and equities. Amounts are in billions of dollars and covering the period 2003 – 2013. Source: ICI Fact Book (2014). * Data for long-term registered investment companies include mutual funds, variable annuities, ETFs, and closed-end funds. 8 Figure 2: Cash Flows of Actively and Passively Managed Funds This figure gives an overview of the cumulative cash in- and outflows for index funds and ETFs (passively managed), and mutual funds (actively managed) for the time period 2007-2013. Amounts are in billions of dollars. Source: ICI Fact Book (2014). 2.2.1: Mutual Fund Performance: Efficient Market and Factor Models The reason why investors invest in mutual funds is that they believe fund managers have the ability of picking the right stocks and thus are able to outperform their passively managed benchmark. This means that they believe fund managers will obtain a better performance, than if they invest the money by themselves. Currently, there is still an ongoing debate about whether mutual funds could outperform their passively managed counterparts. Many researchers investigated this phenomenon, but often provide contradictory results. In 1970 Eugene Fama developed the Efficient Market Hypothesis (EMH), which was an academic breakthrough that changed the world. Fama stated that an efficient market is one where prices always fully reflect available information. Basically this means that stocks always represent their fair value and investors should be unable to beat the market by picking the right stocks or by market timing. In this case, higher returns are only possible by investing in more risky assets. The Capital Asset Pricing Model (CAPM) developed by Markowitz (1952) in his Modern Portfolio Theory, and after a few modifications introduced by Sharpe (1964), Lintner (1965) and Black (1972), is a model that is in line with the EMH. The CAPM describes expected returns based on the beta, which is the riskiness of the stock towards the market. Furthermore, investors are compensated for the time value of money. While the CAPM has been used for a long time as a standard model for predicting future expected returns, research by Banz (1981) and Rosenberg, Reid and Lanstein (1985) showed that expected returns are also explained by respectively size and the book-to-market ratio. These studies provide evidence that small capitalization stocks tend to outperform large capitalization stocks and value stocks (high book-to9 market ratio) tend to outperform growth stocks (low book-to-market ratio). A study by Fama and French (1992) confirmed these findings and added these factors in a new three factor model based on the CAPM, which was better able to predict expected returns than the CAPM. As mentioned before, there are doubts whether the efficient market holds or not. If the efficient market holds, the additional factors size and value are proxies for risk. The question is, what kind of risk it measures. Fama and French (1996) proposed the possibility of distress risk as they observed large deviations in returns for small capitalization stocks and value stocks. In case that returns of both kind of stocks are highly correlated, it means that they are subject to systematic risk and therefore it requires a risk premium. A recent study by Campbell, Hilscher and Szilagy (2008) about distress risk showed however a negative relation between distress risk and excess return, which might indicate that the market is not efficient at all. This would mean that stocks are mispriced and outperformance is possible. A possible explanation for mispricing of stocks can be found in behavioral finance. According to La Porta, Lakonishok, Schleifer and Vishny (1994) naïve investors tend to invest in growth (glamour) stocks, because these are often fast growing upside potential firms. An excess demand for glamour stocks leads to mispricing of these stocks and a lower demand for value stocks. In order to attract investors to buy value stocks, prices go down, which leads to undervaluation of value stocks. While the Fama French three-factor model has been frequently used in academic research, it is still debatable whether it is a good one. Although it captures anomalies such as the size and value effect, literature shows that more anomalies plays a role which are not integrated in the three-factor model. A study by De Bondt and Thaler (1985) shows that portfolios that performed poorly during the previous 3 to 5 years will outperform portfolios that performed well in the same period, for the next 3 to 5 years. It is however unclear whether these results can be attributed to systematic risk or an overreaction of prices. The short-term momentum effect discovered by Jegadeesh and Titman (1993), shows that stocks which performed well in the past 3 to 12 months tend to do well in the next 3 to 12 months and vice versa. In response to these findings, Carhart (1997) developed a four-factor model based on the three-factor model of Fama and French, which includes the momentum effect as additional factor. 2.2.2: Mutual Fund Performance: Empirical Evidence and Hypotheses In this part I will elaborate more on mutual fund performance, supported by empirical studies. In addition, hypotheses are formulated which will contribute to answer the main question of this study: “What is the best strategy to invest in the U.S. overall market and how is this influenced by different economic circumstances?” As mentioned in the previous section, the EMH is highly controversial with regards to many academic studies. If the EMH holds, outperformance by mutual funds should not be observable and 10 thus underperform at a rate equal to the additional expenses compared to the market. On the other hand, if the EMH is not completely true, there is a possibility that mutual funds can outperform the market. Jensen (1967) was one of the first, who investigated the performance of mutual funds for a sample of 115 funds ranging from 1945 – 1964. In order to measure the performance of the fund, he derived “Alpha” from the CAPM model. “Jensen’s Alpha” is a risk-adjusted performance measure (also defined as abnormal return) showing over- or underperformance in a portfolio compared to the predicted CAPM return4. Basically it represents a fund manager’s predictive ability to pick the right stocks. The results of his study show that on average mutual funds underperform relative to their passively managed benchmark, even when gross returns are used. Ippolito (1989) found however contradictory results in his study about mutual fund performance during the period 1965 – 1984. The results show that on average mutual funds obtain a positive alpha net of expenses, but it does not offset load charges. Although Ippolito’s (1989) results show that outperformance is possible, most academic studies are in line with Jensen (1967) and show signs that the market is efficient. Malkiel (1995) is one of them, and performed a kind of similar study as Jensen (1967) did, covering a more recent period 1971 – 1991. Additionally, he shows that survivorship-bias plays a role by measuring the performance of mutual funds. Therefore, he adjusted his dataset accordingly. Although the data used in his study is more accurate, the results confirm Jensen (1967), as he observed underperformance by mutual funds both net and gross of expenses. Finally, a more recent study by Fama and French (2010) covering the period 1984 -2006 contributed to the fact that mutual funds on average underperform by about their expenses, which is consistent with the efficient market hypothesis. As mentioned in the introduction section, this study investigates the best way to invest in the U.S. overall market and therefore I am only interested in the performance of market-like and sector mutual funds relative to the market. I define market-like mutual funds as funds with the same investment style as the market. According to Morningstar5, large blend funds are fairly representative for the total U.S. stock market in terms of size, growth rates, and price. Large blend portfolios tend to invest across the spectrum of U.S. industries and consist of both growth and value stocks. Hypothesis 1: “Market-like” mutual funds underperform relative to the market. Market-like funds will on average obtain a negative alpha with respect to the market for the time period 2001 – 2013. Alpha is measured based on net returns, thus excluding all relevant expenses6. 4 Alpha is also applicable to the three-factor model of Fama and French and the four-factor model of Carhart. It has the same meaning, but is based on a model with more factor variables. 5 http://admainnew.morningstar.com/directhelp/Glossary/Operations/Common/Morningstar_Categories.htm 6 Fund loads are not taken into account throughout this study and thus should not be interpreted as part of the relevant expenses. 11 As mentioned above, several academic studies claim that on average actively managed funds are underperforming relative to a passively managed benchmark. This does not mean that all funds are underperforming. In order to detect outperformance by funds, it is necessary to perform a more extensive study of fund performance on a more specific level. There are studies providing more insights on mutual fund performance. According to Grinblatt and Titman (1989), some funds do show characteristics of stock picking talent. They first looked at the abnormal return (alpha) gross of expenses and discovered that growth funds and aggressive growth funds outperformed the market. Moreover, funds with the smallest NAV also obtained positive alphas. These positive abnormal returns however vanished as they take expenses into consideration. Apparently these funds have the highest expenses, which abolished the managers stock picking talent. Barras, Scaillet and Wermers (2010), also take a closer look on fund performance. Their study covered 2076 funds in the U.S. during 1976 – 2006, and divides them among three groups based on performance, namely: unskilled, zero-alpha and skilled. Their results show that on average the number of funds that are able to outperform the market is 0.6% and thus negligible. Furthermore, 24% of the funds are unskilled, whereas 75.4% are zero-alpha funds. By observing the particular funds that were able to outperform, they noticed that most of these funds were aggressive growth funds. Next to that, results pointed out that fund expenses have a major impact on performance, as skilled funds raised to 10% and unskilled shrank to less than 5% of the sample when using gross returns. Kacperczyk et al. (2005) examined the performance of industry concentrated funds in comparison to diversified funds. According to the theory it might be expected that diversified funds should outperform industry concentrated funds, because of the diversification benefits. On the other hand, it is also possible that skilled fund managers could benefit from their informational advantage and obtain superior performance by picking the right stocks. The results show that this might be the case, because industry concentrated funds are outperforming diversified funds with an average abnormal return of 0.33%, net of expenses. Hypothesis 2: Sector funds outperform relative to the market. The Industry Classification Benchmark (ICB) defines 10 different sectors. These 10 different sector funds will obtain on average a positive alpha relative to the market for the time period 2001-2013. Alpha is based on net returns, thus excluding all relevant expenses. 12 Hypothesis 3: Replicating the U.S. market by creating a portfolio consisting of sector funds will outperform the market. The new constructed portfolio consists of identically the same sector weightings as the chosen market benchmark, but based on mutual funds with a specific sector objective. The average alpha will be positive relative to the market, for the time period 2001 – 2013. Alpha is based on net returns, thus excluding all relevant expenses. Finally, Moskowitz (2000) and Kosowski (2006) observed that mutual fund performance is also influenced by economic circumstances. According to Kosowski (2006), previous studies did not take the value added by active mutual fund managers in recessions into consideration. However, results show that in times of recession, mutual funds are performing better compared to expansion periods, as he observed a difference in the yearly alpha of 3% to 5%. According to Ferson and Schadt (1996) the fund flow effect could be a possible explanation for these results, as funds will hold more liquid assets during recessions for possible redemptions. This will lower the funds riskiness, which improves the performance of the fund. Hypothesis 4: Mutual funds perform better relative to the market in recessions compared to periods of expansions. The National Bureau of Economic Research (NBER) distinguishes periods of recessions and expansions which are often used in academic research. During periods of recession mutual funds should have on average a higher alpha compared to expansion periods. The mutual funds that will be taken into consideration are: market-like funds, sector funds and the new constructed market fund (based on sector funds). 2.2.3: Luck? Academic research provides evidence that only a small proportion of actively managed funds are able to outperform their passively managed benchmark. Most of these funds try to attract new investors by mentioning good historical returns in their intensive marketing campaigns. Historical returns are however no guarantee for good performance in the future. Moreover, there is a possibility that good historical performance is just because of luck and thus has nothing to do with the stock picking ability of the fund manager. Fama and French (2010) investigated by means of a bootstrap simulation whether good performing funds are based on luck or managerial skills. During the period 1984 – 2006, they analyzed the performance of 3156 funds and found that only a few funds had enough skill to cover their costs. These skilled funds are 13 however hard to detect as most of the funds covered by this study are unskilled. Barras et al. (2010) conducted a similar study as Fama and French did, covering the period 1976 – 2006. Although they had a different approach to detect skilled or unskilled funds, the results are comparable. In addition, they show significant differences among the time periods, as prior to 1996 the fraction of skilled funds were higher compared to the period 1997-2006. As shown by academics, there is a relation between luck and fund performance, which means that outperformance might not be the result of stock picking talent. Therefore, studies should be aware of this phenomenon when interpreting the results. 2.3: Fund Characteristics In this section I will elaborate more on a couple of fund characteristics which might be related with fund performance. The relation between performance and fund characteristics could give more insights in the difference between good- and bad performing funds. The key characteristics covered in this study are the expense ratio, turnover ratio, management fee, fund age, and fund size. The expense ratio are costs incurred for operating the mutual fund as a fraction of the total assets under management. As mentioned earlier, it includes administrative expenses, advisory fees and 12-b1 fees. According to the ICI (Fact book 2014, p.91), on average, a downward trend in expenses is observable over the last 13 years for both actively managed mutual funds and passively managed index funds. The ICI mentioned two possible explanations for the decline in expense ratios. Firstly, expense ratios are inversely related to fund size. Several fees included in the expense ratio such as agency fees and accounting and audit fees are fixed. Therefore an increase in fund size will result in a relatively smaller expense ratio. Secondly, the mutual fund market has exploded over the last decade. This has led to an increase in the amount of funds and more competition, as the number of fund sponsors increased. Additionally, other investment vehicles such as ETFs stimulate competition, which might result in lower expense ratios. Many studies investigated the relation between expense ratios and performance, which led to different results. There are studies that did not find a significant relation between expense ratio and performance. On the other hand, several studies exhibit a negative relation, meaning that if the expense ratio goes up, performance will be negatively influenced (Malkiel,1995), (Carhart, 1997), (Chalmers, Edelen, and Kadlec, 1999), (Kacperczyk et al, 2005). Rationally, a positive relation is expected between expense ratio and performance, because normally you pay for performance. The same holds for management fees, which is part of the expense ratio. Managers are compensated for professional managing the fund. The more skilled a manager is, the higher the compensation probably should be. 14 The turnover ratio entails all the trading activity (all stocks bought and sold) during the year divided by the net asset value of the funds. A high turnover ratio means that the fund is very active in terms of trading stocks, but activity goes together with increasing costs (taxes and transaction costs). The turnover ratio of passively managed funds is in general fairly small, whereas the opposite is the case for actively managed funds. The average turnover ratio over the last 34 years for equity funds was 61% (ICI Fact book 2014, p.36), but this includes index funds which are often indicated as passively managed. This means that the actual average turnover ratio of actively managed funds is higher. If fund managers do have stock picking talent, then a positive relation between turnover ratio and fund performance is expected. Literature shows however that most fund managers do not have the ability of picking the right stocks. On top of that, there are studies who found a negative relation between turnover ratio and performance (Carhart, 1997), (Chalmers et al., 1999). This means that a high turnover ratio dilutes value. Fund size or Total Net Assets (TNA) is also an important characteristic, which might be related to fund performance. Researchers found mixed results regarding the relation between fund size and performance. According to Elton, Gruber and Blake (2012), an increase in fund size could lead to economies of scale which is beneficial as it results in a lower expense ratio. These results are in line with the ICI, mentioned earlier. On the other hand, a study by Chen, Hong, Huang and Kubik (2004) shows that fund size is negatively related to performance. They argue that diseconomies of scale might play a role in explaining this negative relationship, which results in suboptimal investment decisions and higher trading costs. Lastly, more recent research by Philips, Pukthuanthong and Rau (2013) shows however that fund size does not affect performance. Finally, there might be a link between fund age and performance. In theory, older funds might perform better as they are more experienced, have better resources and also a better understanding of the market. On the other hand, it could deteriorate performance as fund becomes larger in size and thus might be more complex. This is in line with the results of Webster (2002) who founds a negative relationship between fund age and performance. 15 Chapter 3: Methodology 3.1.1: Factor Models This chapter will provide more insights in the methodology that will be used to measure fund performance. In addition, I will provide a model that examines the relation between fund performance and associated fund characteristics. In order to measure a fund’s abnormal return, I will use a multi-factor model namely, Carhart’s fourfactor model, which is an extension of the basic CAPM model. The intercept of the regression between the excess return and the factors included in this model is used as performance measure, and often denoted as alpha. The CAPM is a simplistic model which describes the relationship between risk and expected return. The idea behind the CAPM is that investors should be compensated for taking additional risk and for the time value of money. The formula is written as follows: Rit - Rft = αi + βi(Rmt – Rft) + εit [1] The dependent variable, describes the excess return of fund i at time t, which is a function of the excess return of the market (Rm – Rf) , a risk measure βi, an intercept αi, and an error term εi. The Rf refers to the one-month U.S. treasury bill. As mentioned above, α is used as a performance measure, which is often referred to Jensen’s Alpha, as Jensen was the first who used this measure by evaluating fund performance in his study in 1967. A positive alpha means the fund is outperforming its benchmark and a negative alpha means that the fund is underperforming compared to its benchmark. The additional risk a fund might have compared to its benchmark is described by beta. Fama and French (1992) showed that the CAPM is not a proper model, as beta alone cannot explain expected returns. Their three-factor model is an extension of the CAPM model and includes the additional factors size and value. However, Jegadeesh and Titman (1993) found another factor that explains expected returns, which is known as the short-term momentum effect. Carhart (1997) added the momentum factor to the three-factor model and developed the four-factor model, which is denoted as follows: Rit - Rft = αi + β1(Rmt – Rft) + β2SMBt + β3HMLt + β4MOMt + εit [2.1] αi = (Rit - Rft) - β1(Rmt – Rft) - β2SMBt - β3HMLt - β4MOMt - εit [2.2] Rewriting gives: 16 This model contains three additional factors compared to the CAPM. First of all, Small Minus Big (SMB), which corrects for size as small capitalization stocks tend to have higher returns compared to large capitalization stocks. Secondly, High Minus Low (HML), which corrects for value as high book-tomarket stocks tend to outperform low book-to-market stocks. Finally, Momentum (MOM) refers to short –term persistent in the performance of stock. I will use this model to examine the performance of all relevant actively managed funds compared to a passively managed market benchmark, in order to investigate the best strategy to invest in the U.S. overall market. Therefore, I will perform a panel regression on monthly data (2001-2013) of excess returns on the four factors of the passively managed benchmark. Lastly, I will employ a model that provides more insights of the relationship between fund performance and several fund characteristics. Therefore, I will perform a panel regression by using the alphas obtained from the regression of equation 2.2, on the fund characteristics relevant for this study. This model is given below and will be used for the characteristics expense ratio, turnover ratio, fund size, fund age and management fees. 𝛼𝑖𝑡 = 𝛾0 + ∑𝑁 𝑛=1 𝛾𝑛 𝑋𝑖𝑡 + εit [3] Equation 3 exhibits the relation between fund performance and fund characteristics. α refers to the abnormal return of fund i at time t, whereas X refers to the factor loading of fund i at time t. The regression coefficients are denoted by ϒ, which measures the effect of fund characteristic n on performance, while ϒ0 is the intercept. 3.1.2: Assumptions For all regressions stated above, I will make use of the Ordinary Least Squares (OLS) approach. This approach crucially depends on a few assumptions (Gauss-Markov assumptions) which are required for interpreting the regression results. Under the Gauss-Markov assumptions, the OLS estimator is the best linear unbiased estimator for β. The first assumption refers to linearity, which means that there is a linear relationship between the dependent and independent variable. The second assumption excludes multicollinearity between the explanatory variables, which means that the variables are statistical independent and thus not correlated to each other. It could have a negative impact on the trustworthiness of the regression results, In case of high correlations between the independent variables. The third assumption states that all the error terms have the same variance, which refers to homoscedasticity. When the variance of the errors is not constant, 17 it is referred to heteroskedasticity. This could lead to results which are invalid as most models are based on a constant variance of the error terms. Finally, the error terms should be independent, thus not correlated to each other (no autocorrelation) or to the independent variables, and additionally follow a normal distribution with a mean equal to zero and a constant variance. When one or several assumptions mentioned above are violated, it will negatively influence the reliability of the regression, as it is possible that the t-test will conclude too easily that the model is useful. 18 Chapter 4: Data This chapter will elaborate more on the data which contributes to answer the main question of this study. This is done by providing descriptive statistics of the passively managed market fund and actively managed funds. I will first start finding a suitable passively managed market benchmark. Secondly, I will provide descriptive statistics for all market-like funds and all sector funds, which can be categorized into 10 different groups. Finally, I will elaborate more on the relationship between several fund characteristics and fund performance and will describe periods of recession and periods of expansion. The data will be almost completely derived from Morningstar and the Center for Research in Security Prices (CRSP) mutual fund database. 4.1 Market (Benchmark) Screening When investors consider investing in a portfolio that tracks almost the complete U.S. market index, this is only possible by buying a market ETF or index fund. According to Morningstar, there are 10 market funds, which have the objective to track almost the complete U.S. market. There are however differences between these funds in terms of composition, expense ratio and inception date, as can be seen in table 2. In order to find a suitable market benchmark, it is first of all essential that it is covering the years relevant for this study. The second part of the screening is based on the number of holdings and expense ratio. A larger number of holdings entails that the fund has a broader coverage of the total U.S. market. Therefore, I selected the Vanguard Total Stock Market Index Admiral as benchmark, because it has 3684 holdings, which is a very good representative for the total U.S. market. On top of that, the fund has on average, one of the lowest expense ratios and is covering the required period 2001-2013. The Vanguard Total Stock Market Index Admiral Fund (Market Benchmark) is established by the Vanguard Group in 2000 and comparable in terms of holdings with the Vanguard Total Stock Market Investor shares. The Admiral shares are however trading at lower costs, but on the other hand the initial investment for these stocks are higher. According to the prospectus 7 , the investment strategy of the Admiral fund is to track the CRSP U.S. Total Market Index, which represents almost the complete investable U.S. stock market traded on the New York Stock Exchange and NASDAQ. This means that the index fund is broadly diversified and includes all types of market capitalizations. As can be seen in table 2, the Admiral fund is one of the largest and most popular U.S. total stock market fund with total net assets under management of more than $86 billion. 7 http://quote.morningstar.com/fundfiling/Prospectus/2014/4/28/t.aspx?t=VTSAX&ft=485BPOS&d=06216af438ffc8ba705e2cf6062d0094 19 In the next chapter, I will replicate the market based on sector funds to check whether this is a good investment strategy. In order to do so, the sector weightings of the market are required. These can be found in table A.1 of appendix 1. Table 2: Market Fund Screening Fund Size (TNA) Expense Market Fund Inception Date Holdings (Billions of Dollars) Ratio Schwab US Broad Market ETF 3-11-2009 2007 2.91 0.06% iShares Core S&P Total U.S. Stock Market ETF 20-1-2004 1501 1.04 0.19% iShares Dow Jones U.S. ETF 12-6-2000 1259 0.85 0.2% iShares Russell 3000 ETF 22-5-2000 2979 5.41 0.2% iShares NYSE Composite ETF 30-3-2004 1748 0.07 0.25% SPDR Russell 3000 ETF 4-10-2000 2511 0.56 0.21% Vanguard Total Stock Market ETF 24-5-2001 3648 39.17 0.09% Vanguard Russell 3000 Index ETF 20-9-2010 3049 0.09 0.15% Vanguard Total Stock Market Index Admiral 13-11-2000 3684 86.54 0.09% Vanguard Total Stock Market Index Investor 27-4-1992 3684 105.01 0.18% This table shows characteristics of 10 different passively managed U.S. market funds including: the inception date, number of holdings, total net assets under management and expense ratio. The expense ratio is the average of 2001 – 2013, except for funds which did not exist since 2001. Then it is the average since existence. Holdings and TNA are based on values at year-end 2013. 4.2: Market-like Mutual Fund Screening In order to check whether mutual funds outperform the passively managed benchmark (Vanguard Total Stock Market Index Admiral), I first made a selection of market-like actively managed funds. As mentioned in Chapter 2, large blend funds are fairly representative for the overall U.S. stock market. Additionally, a fund should be open for retail investors during the period 2001-2013 in order to be relevant for this study. The CRSP mutual fund database provides 1140 funds which fulfill the criteria mentioned above. These funds are providing 107.614 monthly return observations. Moreover, this dataset is free of survivorshipbias, which means that it includes funds which do not exist anymore. This contributes to more realistic results, as “dead” funds will have a negative impact on mutual fund performance. Table 3 provides descriptive statistics for the market benchmark and market-like mutual funds. The table shows that the passively managed benchmark has better characteristics in terms of the average yearly excess return and standard deviation compared to actively managed market-like funds. The excess return of the market is more than twice as high, while the standard deviation or riskiness of the market and market-like funds are comparable. Additionally, the dataset is separated into two sub periods as shown in table 3. However, the statistics of market-like funds are still inferior compared to the market. The Sharpe ratio, which measures the risk-return trade-off, confirms the findings above. A higher Sharpe ratio indicates better risk-return characteristics and vice versa. The final column of table 3 shows that the market has a higher Sharpe ratio in all periods. During the period of 2001–2006, market-like funds 20 exhibits a negative result, which means that additional risk, would lead to extra losses. Therefore a riskless asset would even better perform than market-like funds. Table 3: Market-like Mutual Fund Statistics Period Excess Return Max Median Min SD Sharpe Ratio Market 2001 -2013 5.04% 29.60% 4.63% -44.44% 16.05% 0.314 2001-2006 2.59% 8.11% 0.74% -10.24% 14.16% 0.183 2007-2013 7.41% 11.54% 1.46% -17.71% 17.56% 0.422 Market-like Funds 2001 - 2013 2.44% 44.16% 0.72% -35.47% 16.63% 0.147 2001-2006 -0.06% 44.16% 0.43% -31.47% 14.84% -0.004 2007-2013 4.93% 28.71% 1.10% -35.47% 18.17% 0.271 This table provides an overview of descriptive statistics for the chosen market benchmark (Vanguard Total Stock Market Index Admiral) and market-like funds. It includes the average yearly excess return (net of expenses), maximum, median and minimum monthly return, yearly standard deviation (SD) and Sharpe ratio (excess return / SD). The statistics are provided for the complete period 2001 – 2013 and for the sub periods 2001-2006 and 2007-2013. Market-like results are based on 1140 funds, which are all open for retail investors and responsible for 107.614 monthly observations. The final part of the market-like mutual fund screening is based on several fund characteristics which might be related with fund performance. This includes: the yearly expense ratio, turnover ratio, management fee, fund size (TNA) and fund age. Data for these characteristics are available via CRSP mutual fund database and give some more insights in the funds, as shown in table 4. The next chapter will elaborate more on the relationship between these characteristics and performance. The expense ratio represents the operating expenses including the 12b-1 fees of a fund. When observing table 4, it turns out that the expense ratios of market-like funds are relatively high when comparing it to the market. This seems quite logical, as mutual funds are actively managed, which is related to higher expense ratios. Secondly, the turnover ratio measures the trading activity of a portfolio to the assets of the portfolio. The ratio of market-like funds varies a lot as the difference between the maximum and minimum value is enormous. The average turnover ratio for market-related funds is 85%. This means that the yearly trading activity is on average almost completely the average value of the portfolio. As expected, the turnover ratio of the market is quite low, as it entails a passively managed fund. When fund managers do have stock picking talent a high turnover ratio could be beneficial. The downside of a high turnover ratio is that capital gains or losses are constantly realized, which is very tax inefficient as the investor cannot time his tax obligation. Furthermore, a higher turnover ratio is related to higher transaction costs, which dilutes value. The next column describes the management fees, which are costs related for professionally managing the fund and part of the expense ratio. It are costs incurred for the time and expertise of the fund managers. Normally, you would expect a positive relationship between performance and management fees, as good performing funds could demand higher fees. Table 4 shows that the management fee is on average 0.41% 21 Fund age is another characteristic which might have an impact on the performance of funds. The funds age is ranging from 0 – 88 years old, with an average of 10. While funds getting older, it entails that it is more experienced. Therefore, there might be a positive relationship between age and performance. Finally, the average total net asset value (TNA) is presented in table 4. There consist large deviations in size between the market-like funds ranging from 0.1 million till 91.391 million dollar. The average size of market-like funds is 524 million dollar. Table 4: Fund Characteristics of the Market and Market-like Funds Market Mean Max Min SD Expense Ratio 0.09% 0.15% 0.05% 0.04% Turnover Ratio 5% 12% 2% 2% Management Fee 0.07% 0.14% 0.03% 0.04% Fund Age (Years) 7 13 1 4 Fund Size (TNA in Millions of Dollars) 30110 86541 3894 25000 Market-like Funds Expense Ratio 1.59% 38.24% 0.09% 0.61% Turnover Ratio 85% 1770% 0% 97.40% Management Fee 0.41% 3.98% -38.38% 1.71% Fund Age (Years) 10 88 0 11 Fund Size(TNA in Millions of Dollars) 524 91391 0.1 2895 ln Size 3.28 11.42 -2.30 2.70 ln Age 1.87 4.48 -5.90 1.07 In this table fund characteristics are presented for the market (Vanguard Total Stock Market Index Admiral) and market-like funds. It includes: the expense ratio, turnover ratio, management fee, fund age (years) and fund size (TNA in millions of dollars). On top of that, the natural logarithms of size and age are included for market-like funds. Market-like results are based on 8777 yearly observations, which stems from 1135 funds during the period 2001-2013. * The management fee may include waivers and reimbursements. This could lead to negative management fees. 4.3: Mutual Fund Sector Screening The final step obtaining the best investment strategy for the market is based on mutual funds with a specific sector objective. CRSP provides lots of data regarding mutual funds, including the Lipper objective codes. Based on these codes, 10 sector classifications can be distinguished. According to Lipper’s definitions document 8, the classifications are structured following the Industry Classification Benchmark (ICB) developed by the Financial Times Stock Exchange (FTSE) and Dow Jones. Table 5 provides an overview of the 10 different sectors and their corresponding sector code. These codes will be used throughout this study. To obtain a classification a fund is required to have an exposure with a threshold set at 75% of the portfolio. 8 http://www.lipperweb.com/docs/Research/Methodology/Lipper_Global_Classifications_Definitions2012.pdf 22 Table 5: Sector Classification Scheme Sector Code Basic Materials BM Consumer Goods CG Consumer Services CS Energy E Financials F Healthcare H Industrials ID Information Technology IT Telecommunication Services TS Utilities UT This table gives an overview of the 10 different sectors, according to the industry classification benchmark (ICB). Next to that, the sector codes are presented. A problem that arises using the Lipper sector codes is the geographical focus of the different sector funds. According to Lippers Fund Classification Roadmap9, some sectors do not contain many domestic funds and therefore international funds are also included. The global oriented sectors are marked with a “G”, while domestic oriented sectors are marked with a “D”, as shown in table A.2 of appendix 1. Although, it entails a small portion of the dataset (27%), it will have an impact on the results, because this study focuses on the U.S. domestic market only. Therefore, the results might be slightly biased. In addition to the classification codes, CRSP mutual fund database provides 89.608 monthly return observations (net of expenses), which stems from 1160 different sector funds (survivorship-bias free). Table 6 gives an overview of the descriptive statistics of the market and 10 different sectors. When looking at the average yearly excess returns of all sectors, it slightly underperforms relative to the market. About the half of the sectors show better return characteristics compared to the market, while the other half perform poorly as they partly obtain a negative excess return. Especially the consumer goods and industrial sector have high excess returns of respectively 11.16% and 10.47%. There are however some deviations in terms of riskiness and therefore it is better to take a closer look at the Sharpe ratio. Figure 3 gives a better view of the relevant Sharpe ratios including the market, marketlike funds and sector funds. When looking at figure 3, large differences are observable. It turns out that investing in consumer goods and industrial funds are the most attractive investments, while investing in basic materials, information technology and telecommunication services dilutes value. Next to that, market-like funds have a low Sharpe ratio compared to the market and most sectors, which makes them not very attractive investments. Moreover, when comparing the average Sharpe ratio of all sectors (0.255) with the market (0.314), it turns out that the market has better risk-return characteristics. The next chapter will use a more sophisticated model to evaluate fund performance. 9 http://www.lipperweb.com/docs/Research/Fiduciary/2009_02_Fund%20Classification%20Roadmap.pdf 23 Table 6: Descriptive Statistics for the Market and 10 different Sectors Excess Sharpe Sector Return Max Median Min SD Ratio Market 5.04% 29.60% 4.63% -44.44% 16.05% 0.314 BM -0.34% 19.31% -0.09% -29.49% 17.02% -0.02 CG 11.16% 55.15% 1.11% -38.33% 16.01% 0.697 CS 6.73% 21.48% 0.97% -23.27% 19.25% 0.350 E 9.21% 23.67% 1.28% -33.66% 25.24% 0.365 F 7.11% 36.35% 1.28% -36.40% 22.85% 0.311 H 4.12% 28.32% 0.75% -26.36% 17.85% 0.231 ID 10.47% 22.75% 1.41% -26.07% 20.62% 0.508 IT -2.51% 36.70% 0.44% -42.03% 31.13% -0.081 TS -2.65% 60.66% 0.52% -52.77% 27.92% -0.095 UT 4.24% 11.01% 1.05% -19.32% 14.68% 0.289 Average 4.75% 31.54% 0.87% -32.77% 21.26% 0.255 In this table the descriptive characteristics for the 10 relevant sectors and the market (Vanguard Total Stock Market Index Admiral) are presented. It includes the average yearly excess returns (net of expenses), the maximum, median and minimum monthly return, the standard deviation (SD) and the Sharpe ratio (excess return / SD). The data is based on 89.608 monthly observations during the time period 2001-2013, which stems from 1160 different sector funds. Figure 3: Sharpe ratios This figure gives an overview of the Sharpe ratios including: the market (Vanguard Total Stock Market Index Admiral), marketlike funds and 10 sectors. The Sharpe ratio is measured by the excess return (net of expenses) divided by the standard deviation. Values are based on the period 2001-2013. Sharpe Ratio 1,000 0,800 CG 0,600 ID 0,400 UT F CS E Market H Market-Like 0,200 0,000 TS IT BM -0,200 The last part of the sector screening is based on the same fund characteristics as I used in the market-like fund screening. When observing the fund characteristics in table 7, it is notable that the turnover ratio is quite high with an average value of 196% for all sectors. This means that the yearly trading activity of sector funds is almost twice the average value of the portfolio. When comparing this ratio to that of market-like mutual funds, it is significantly higher. 24 Secondly, the management fee and expense ratio is comparable to market-like funds with values of respectively 0.47% and 1.76% for all sectors. This is much higher compared to the passively managed market fund. Finally, the average total net asset value (TNA) is presented. Investors invest most of their money in the domestic oriented sectors such as: financials, healthcare, energy and information technology. One exception holds for the global utilities sector, which is according to table 7, the most popular sector to invest in. The other sectors are less attractive, which might explain the small amount of these kinds of sector funds (appendix 1, table A.2). Table 7: Overview of Fund Characteristics Sector Funds Management Fund Fund Fee Age Max Min SD Size Max Min SD Max Min SD Expense Ratio Max Min SD Turnover Ratio All Sectors 1.76% 9.54% 0.09% 0.67% 196% 4925% 1% 372% 0.47% 3.38% -32.33% 3.71% 9 74 0 7 189 8758 0.1 506 3.11 9.06 -2.3 2.33 1.85 4.30 -3.60 0.98 BM 1.61% 2.95% 0.61% 0.57% 204% 3455% 3% 431% 0.33% 1.14% -7.28% 1.23% 6 28 1 8 128 3745 0.1 388 2.25 8.23 -2.3 2.72 1.37 3.35 0.11 0.79 CG 1.53% 2.57% 0.14% 0.55% 253% 1907% 7% 339% 0.31% 1.10% -4.80% 1.19% 14 28 2 9 89 1475 0.1 211 2.56 7.30 -2.3 2.42 2.39 3.35 0.65 0.71 CS 1.64% 2.75% 0.14% 0.53% 505% 3788% 5% 752% 0.52% 1.05% -15.34% 1.28% 17 30 3 7 71 1197 0.1 158 2.33 7.09 -2.3 2.24 2.70 3.40 1.18 0.50 E 1.63% 2.95% 0.14% 0.53% 200% 1707% 9% 294% 0.61% 1.05% -15.64% 1.29% 14 33 0 7 203 3240 0.1 385 3.85 8.08 -2.3 2.01 2.44 3.49 -1.74 0.76 F 1.70% 6.02% 0.09% 0.55% 132% 2336% 1% 274% 0.60% 1.65% -30.68% 1.52% 15 52 0 6 196 8294 0.1 587 3.38 9.02 -2.3 2.20 2.59 3.94 -2.90 0.58 H 1.85% 4.59% 0.14% 0.63% 160% 1848% 4% 201% 0.54% 1.96% -32.33% 1.65% 14 32 3 4 162 8578 0.1 534 2.95 9.06 -2.3 2.26 2.61 3.48 1.18 0.28 ID 1.49% 2.59% 0.14% 0.52% 336% 2786% 5% 502% 0.30% 1.05% -10% 1.41% 17 30 0 8 103 1428 0.1 208 2.77 7.26 -2.3 2.47 2.64 3.39 -1.68 0.73 IT 2.03% 9.54% 0.14% 0.84% 201% 4925% 2% 330% 0.47% 3.38% -14.59% 1.09% 16 74 1 8 168 5209 0.1 460 3.12 8.56 -2.3 2.29 2.69 4.30 0.29 0.34 TS 1.79% 2.95% 0.14% 0.56% 385% 3606% 2% 682% 0.48% 1.95% -15.60% 1.57% 14 30 5 5 84 3329 0.1 289 1.68 8.11 -2.3 2.42 2.59 3.40 1.62 0.41 UT 1.53% 3.22% 0.14% 0.49% 159% 3158% 1% 399% 0.54% 1.11% -14.44% 1.12% 19 67 1 9 264 4686 0.1 565 3.92 8.45 -2.3 2.07 2.84 4.21 -0.39 0.46 Average 1.68% 4.01% 0.18% 0.58% 254% 2952% 0.47% 1.54% -17.55% 1.34% 15 40 2 7 147 4118 0.1 379 Sector Max 4% 420% Min SD ln ln Size Max Min SD Age Max Min SD 3 8 -2 2 2 4 0 1 In this table several fund characteristics are presented for all sectors together and every sector separately. It includes: the expense ratio, turnover ratio, management fee, fund age (years), fund size (TNA in Millions of Dollars) and the natural logarithms of size and age. All results are averages for the period 2001 – 2013, except for the standard deviation (SD), maximum and minimum results. The results are based on 6270 yearly observations, which stems from 891 different sector funds. * The management fee may include waivers and reimbursements. Reimbursements could lead to negative management fees 4.4: Performance and Economic Circumstances The final part of this study will elaborate more on the performance of funds by different economic circumstances. The National Bureau of Economic Research (NBER) provides data regarding recessions and expansions since 1854 and is often used in academic studies. A recession is generally known as a decline in real GDP for two consecutive quarters. The NBER gives however a different meaning to a recession. According to their latest publication10 (2010), “a recession is a significant decline in economic activity spread across the economy, lasting more than a few months, normally visible in real GDP, real income, employment, industrial production and wholesale-retail sales.” During the time period 2001 – 2013 there were two periods of recession and two periods of expansion, as shown in table 8. The recessions might be caused by the dot-com bubble (1997 – 2000) and the financial crisis (2007- 2011). When observing table 8, I notice that there are on average significant deviations in excess returns and standard deviations between the market, market-like funds and sector funds. During recessions, the excess 10 http://www.nber.org/cycles/sept2010.html 25 returns are largely negative for both the passively managed market fund and the actively managed mutual funds, while riskiness or standard deviation is very high. Additionally, the Sharpe ratios are largely negative, indicating that more risk leads to higher losses. During expansion periods the performance indicators looks more positive. Especially, the second expansion period has led to outstanding results for all funds as excess returns (net of expenses) exceeds or almost exceeds 20%, while the level of riskiness is quite low. According to the Sharpe ratios, the market exhibits the best risk-return characteristics, while this is much lower for actively managed funds. The next chapter will elaborate more on the performance of actively managed funds relative to the market in times of recessions and expansions. Table 8: Descriptive Statistics during Recessions and Expansions Market Market-Like Funds Sector Funds Excess Sharpe Excess Sharpe Excess Sharpe Return SD Ratio Return SD Ratio Return SD Ratio Period Recession 1 (03-2001 - 11-2001) -10.58% 21.18% -0.500 -12.32% 21.47% -0.574 -14.73% 38.21% -0.386 Recession 2 (12- 2007 - 06 -2009) -22.06% 24.94% -0.885 -23.15% 24.76% -0.935 -21.94% 35.89% -0.611 Recessions Average -16.32% 23.06% -0.708 -17.74% 23.12% -0.767 -18.34% 37.05% -0.495 Expansion 1 (12-2001 - 11-2007) 5.54% 11.97% 0.463 3.25% 12.70% 0.256 4.49% 19.82% 0.227 Expansion 2 (07-2009 - 12-2013) 21.15% 14.46% 1.463 18.45% 15.01% 1.229 18.29% 17.28% 1.058 Expansions Average 13.35% 13.22% 1.010 10.85% 13.86% 0.783 11.39% 18.55% 0.614 This table distinguishes two periods of recession and two periods of expansion during the time period 2001 – 2013 (source: NBER). For every period the average yearly excess returns (net of expenses), standard deviation (SD) and Sharpe ratio (excess return / SD) are provided for the market (Vanguard Total Stock Market Index Admiral), market-like funds and sector funds. 26 Chapter 5: Results This chapter will provide an extensive analysis of the regression results and is structured as follows. First of all, I will explain how the four factors included in Carhart’s model are constructed. Moreover, descriptive statistics of these factors and a basic interpretation of the numbers are provided. Secondly, I will elaborate more on mutual fund performance of the market-like funds, sector funds and the replicated market fund. Then the regression results which describe the relationship of several fund characteristics on performance are provided. Finally, this chapter will take a closer look on mutual fund performance during periods of recession and expansion. Eventually, this chapter should provide answers on the hypotheses and the main question of this study. 5.1.1: Carhart’s Four Factor Model In order to measure fund performance, I will use Carhart’s four factor model. The monthly factor inputs for the market will be partially retrieved from the web page of Kenneth French. 11 These factors are constructed by means of the returns of all CRSP firms incorporated in the U.S. and listed on the NYSE, AMEX and NASDAQ. As the market benchmark used in this study is tracking this index, hardly any deviations are expected. The market factor is the only factor where the excess return of the Vanguard Admiral Market funds is used, as these slightly deviates with the data from French’ database. This is primarily caused by the fact that the Admiral Fund takes expenses into consideration, hence implementing these data will lead to more realistic results. The SMB12 factor is constructed by first sorting the stocks into 6 different portfolios based on market capitalization, 3 categories of small capitalization stocks and 3 categories of large capitalization stocks. Finally, the average return of the 3 large cap. portfolios will be subtracted from the average return of the 3 small cap. portfolios. The HML factor is constructed in a similar way. First, the stocks will be sorted into 4 different portfolios. 2 portfolios of value stocks (high book-to-market) and 2 portfolios of growth stocks (low book-to-market). Then the average return of the growth stocks is subtracted from the average return of the value stocks, in order to get the HML factor. The MOM13 factor is created by dividing the stocks into two portfolios based on size (large and small cap.). The median NYSE market cap. is used as breakpoint when dividing the stocks into the two categories. Subsequently, a next sorting procedure will occur based on returns of the previous 2 till 12 months. The stocks which fall in the top 30% of returns are defined as “high prior return portfolios” and stocks which fall in the bottom 30% percentile are 11 http://mba.tuck.dartmouth.edu/pages/faculty/ken.french/data_library.html Study by Fama and French (1992) provides the methodology for constructing the SMB and HML factors. 13 Carhart (1997) provides the methodology for constructing the MOM factor . 12 27 defined as “low prior return portfolios”. Finally, the MOM factor can be obtained by taking the average of the two (high and low market cap.) high prior return portfolios minus the two low prior return portfolios. Table 9 provides a yearly overview regarding the four different factors. When observing the table, the market obtained in most years a positive excess return. The negative returns might be related with historical events as the years 2001 and 2002 are in the aftermath of the dot-com bubble and 2008 was in the middle of the financial crisis. On average the market obtained a positive excess return of 0.42% for the period 2001-2013. The same holds for the SMB and HML factors with averages of respectively 0.45% and 0.31%. This means that small capitalizations stocks and value stocks obtained higher returns than their counterparts. Finally, deviations are observable regarding the MOM factor. There are years of shortterm persistence in performance, as showed by the positive numbers in table 9. On the other hand also negative years are observable, which contradicts a momentum effect. On average, the momentum effect is positive, but negligible. Table 9: Yearly Values Carhart Four Factor Model Year Mkt-Rf SMB HML MOM 2001 -1.10% 1.65% 1.31% -0.34% 2002 -1.93% 0.37% 1.04% 2.35% 2003 2.27% 1.71% 0.28% -1.52% 2004 0.92% 0.44% 0.71% 0.02% 2005 0.28% -0.13% 0.70% 1.20% 2006 0.84% 0.07% 1.01% -0.54% 2007 0.11% -0.66% -1.01% 1.75% 2008 -3.70% 0.59% 0.20% 1.59% 2009 2.32% 0.68% -0.03% -5.36% 2010 1.48% 1.04% -0.15% 0.50% 2011 0.20% -0.41% -0.58% 0.69% 2012 1.31% 0.05% 0.56% -0.03% 2013 2.47% 0.50% 0.04% 0.51% 2001-2013 0.42% 0.45% 0.31% 0.06% This table presents yearly averages of Carhart’s four factor model, which will be used in the alpha regressions. It includes a market factor (Mkt-Rf), size factor (SMB), value factor (HML) and momentum factor (MOM). The market factor is based on the return of the Vanguard Total Stock Market Index Admiral subtracted with the one month U.S. treasury Bill. The other factors are constructed by means of characteristics of all stocks listed on the NYSE and NASDAQ 5.1.2: Market-like Fund Performance To determine the best strategy for investing in the U.S. overall market, I first performed a regression of the market-like funds excess returns on the monthly factors of the market model. The regression results are presented in table 10. When analyzing the results in table 10, I observe highly significant negative alphas for all periods. As mentioned before, alpha is used as performance measure and can be interpreted as the abnormal return. 28 During the period 2001 – 2013 market-like funds obtained a yearly alpha of -1.93%, which means that the passively managed market fund outperformed the actively managed market-like funds by almost 2%. By separating the period into two sub periods, I find that, during the period 2001 – 2006 the performance of market-like funds is lower compared to the period after. A t-test shows a significant difference of 0.90% on yearly basis. When relating performance with the average expense ratio (table 4) of market-like funds, it is notable that a large part of the negative alpha is due to the expense ratio of 1.59%. Without taken expenses into consideration, the market would be almost efficient. The results are in line with earlier studies by Jensen (1967) and Fama and French (2010) The regression coefficients of the four factors are all statistically significant at the 1% level and partially explain the differences in excess returns between the market and market-like funds. First of all, the market factor obtained a coefficient of 1 meaning that market-like funds are equal in terms of riskiness compared to the market. The size (SMB) and value (HML) factor coefficients are slightly negative which means that in general market-like funds have more exposure to large capitalization stocks and growth stocks. As reported in table 9, the values of the SMB and HML factors are on average positive for the period 20012013 which means that small capitalization stocks and value stocks outperformed respectively large capitalization and growth stocks. This partly clarifies why the market had a higher excess return than market-like funds. Moreover, market-like funds have a small exposure to momentum stocks, which positively influences returns. Finally, the adjusted r-squared (0.89) is presented in the final column of table 10, which shows that a large part of the variation in returns is explained by the model. The analysis above confirms hypothesis 1, which stated that market-like mutual funds underperform relative to the market. The passively managed market fund outperformed the actively managed marketlike funds by about 2% for the period 2001 – 2013. A large part of this outperformance is caused by the high expense ratio of market-like funds, which is on average 1.59%. Table 10: Market-like Funds Regressions Results Market-like Funds α (Monthy) α (Yearly) β1(MKT) β2(SMB) β3(HML) β4(MOM) R2 Adj Total -0.16%*** -1.93%*** 1.00*** -0.05*** -0.06*** 0.02*** 0.89 2001-2006 -0.20%*** -2.44%*** 1.00*** -0.05*** -0.04*** 0.02*** 0.85 2007-2013 -0.13%*** -1.52%*** 1.01*** -0.03*** -0.12*** 0 0.92 This table presents the regression results of market-like funds. It includes the monthly and yearly alpha, the regression coefficients of the four factors (MKT, SMB, HML, MOM) and the adjusted R2.The results are based on 1140 funds during the period 2001 – 2013, which are together responsible for 107.614 monthly observations. The level of significance is indicated with asterisks, whereby * stands for 10%, ** for 5% and *** for 1%. 29 5.1.3: Sector Fund Performance The next strategy for investing in the total U.S. market is based on sector concentrated funds. First of all, I will investigate whether sector funds in general outperform the market during the period 2001-2013. Besides, I will check the performance of each sector individually. This is done, by means of a regression of the excess returns of the funds on Carhart’s four factor model. Finally, I will replicate the market by means of sector weightings, which means that a market portfolio will be constructed based on sector funds. Table 11 provides an overview of the regression results of both sector funds in general and each sector individually. Analyzing the general sector results, highly significant negative alphas are observable for all periods. During the period 2001-2013 the market on average outperformed all sector funds by 4.25% on a yearly basis. This means that sector funds are in general not attractive investments as they even underperform market-like funds (-2.03%, t-test). By separating the period into two sub periods, I find that, during the period 2007– 2013 the performance of market-like funds is lower compared to the period before. A t-test shows a significant difference of 1.65% on yearly basis. The differences in excess returns are again partially explained by the regression coefficients of the four factors. According to the market factor, sector funds are slightly riskier than the market which led to higher returns. Next to that, sector funds have a small exposure to small capitalization stocks, have more exposure to growth stocks and do not follow a momentum strategy. This taken into account, in combination with the average factor loadings shown in table 9 has led to a lower excess return by sector funds compared to the market. The alphas of the individual sectors are besides the consumer services (CS) and industrial (ID) sector, all significant. When analyzing the sector results, positive alphas are observable for the consumer goods (4.03%), health (1.49%) and utilities (1.11%) sector. All other sectors obtained negative results, whereby the basic materials sector stands out with a negative alpha of 11.84%. An explanation for this remarkable result can be found in the yearly number of funds (appendix 1, table A.2) and observations, as some years are heavier represented due to more observations. Therefore, to obtain more realistic results, it is better to look at the yearly alphas of the sectors, in order to check whether they on average outperform the market. This is done in the next section. 30 Table 11: Sector Funds Regression Results Sector Funds α (Monthy) α Yearly β1(MKT) β2(SMB) β3(HML) β4(MOM) R2 Adj Total -0.35%*** -4.25%*** 1.04*** 0.16*** -0.16*** -0.08*** 0.58 2001-2006 -0.09%*** -1.13%*** 1.12*** 0.15*** -0.28*** 0 0.53 2007-2013 -0.22%*** -2.67%*** 0.99*** 0.12*** -0.04*** -0.08*** 0.65 Individual Sectors BM -0.99%*** -11.84%*** 0.75*** -0.05 -0.23*** 0.02 0.35 CG 0.34%*** 4.03%*** 0.76*** 0.01 0.15*** 0 0.60 CS -0.05% -0.59% 0.96*** 0.36*** 0.11*** -0.06*** 0.81 E -0.26%** -3.11%** 1.18*** 0.02 0.04 0.14*** 0.54 F -0.18%*** -2.11%*** 0.88*** 0.24*** 0.77*** -0.14*** 0.68 H 0.12%*** 1.49%*** 0.82*** 0.01 -0.27*** 0.08*** 0.52 ID -0.02% -0.20% 1.03*** 0.35*** 0.29*** -0.01 0.79 IT -0.32%*** -3.86%*** 1.37*** 0.37*** -0.96*** -0.10*** 0.83 TS -0.24%*** -2.89%*** 1.27*** -0.28*** -0.60*** -0.11*** 0.66 UT 0.09%*** 1.11%*** 0.76*** -0.27*** 0.05*** 0.11*** 0.56 Average -0.15% -1.8% 0.98 0.08 -0.07 -0.01 0.63 This table presents the regression results of all sector funds together and each sector individually. It includes the monthly and yearly alpha, the regression coefficients of the four factors (MKT, SMB, HML, MOM) and the adjusted R2.The results are based on 89.608 monthly observations during the period 2001 – 2013, which stems from 1160 different sector funds. The level of significance is indicated with asterisks, whereby * stands for 10%, ** for 5% and *** for 1%. Table 12 shows the average yearly alphas for the 10 different sectors. On top of that, the average alpha per sector for the period 2001-2013 and the alphas of the regression results in table 11 are presented. The yearly alphas are measured by implementing the factor regression coefficients of each sector (table 11) and monthly factor loadings (French Database) in the model of equation 2.2 14 . When comparing the average sector alphas of table 11 and table 12, it turns out that big differences exist for several sectors. This means that the number of yearly observations has a significant impact on the regression results of table 11. Therefore, using the yearly alphas lead to more realistic results. When observing the average yearly alphas of the 10 sectors, more sectors outperformed the market. In particular the basic material and energy sector, which were in the primary regressions highly negative. When looking at the average of all sectors during the period 2001-2013, it turns out that sector funds outperform the market by 0.6%. As I think these results are more plausible than the results in table 11, it can be concluded that on average fund managers of sector funds have the ability to obtain superior performance by picking the right stocks, and thus could exploit their informational advantage. This is in line with the results of Kacperczyk et al. (2005) and confirms hypothesis 2. The final step entails the replication of the market. This is done by multiplying the yearly sector alpha by its corresponding sector weighting (Table A.1, Appendix 1), in order to get the weighted yearly alpha of the market. The results are shown in the final column of table 12. The replicated market portfolio underperformed mostly in the beginning and ending three years of the relevant time period, while in most 14 αi = (Rit - Rft) - β1(Rmt – Rft) - β2SMBt - β3HMLt - β4MOMt - εit 31 of the other years outperformance is observable. When looking at the average alpha for the total time period, the new constructed actively managed market portfolio slightly underperformed the market by 0.04%. This means that without taking expenses into consideration, the replicated market portfolio would outperform the market benchmark. The same holds for the weighted alpha based on the regression results of table 11. According to this method, the replicated market portfolio underperformed by 1.19%, which is considerable larger compared to the other method. The previous method is based on fixed factor betas, retrieved from the sector regression results of the entire period. This approach solves the over-representation in terms of yearly observations, but does not take the style effects by funds into consideration, as funds will probably change their exposure to certain stocks styles. Therefore, I also performed regressions based on two years of returns, (with the exception of the first period), in order to capture most of these style effects. Together with the average market sector weightings of these periods, the market weighted alpha is calculated, as can be seen in appendix 1, table A.3. The results are in line with earlier results, as sector funds on average still outperform the market, but only by 0.02%. Additionally, the replicated market fund still slightly underperforms the market with an average of -0.12%. Finally, hypothesis 3 can be answered. Replicating the market by means of sector funds on average lead to a negative abnormal return, which means it underperformed relative to the passively managed market fund. This contradicts hypothesis 3 and therefore it does not hold. Table 12: Average Yearly Sector Alphas and Replicated Market Alpha Year 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 BM 22.13% 16.23% 18.09% 14.56% 4.63% 8.04% 18.32% -11.18% -0.58% 9.44% -10.60% -12.30% -27.78% CG 14.53% 9.18% 2.65% 3.99% -5.91% 0.30% 7.71% 1.14% 9.08% 5.68% 4.08% 1.33% 2.60% CS 0.09% 1.45% -7.00% -2.17% -4.54% -0.95% -5.73% -10.50% 2.63% 5.39% 3.57% 3.82% 5.09% E -3.69% 12.63% -7.63% 12.80% 31.40% -2.90% 27.29% -12.62% 18.50% -0.62% -9.00% -15.54% -21.47% F -5.26% 9.71% -4.80% 4.26% -1.30% -0.44% -8.71% -9.71% -2.95% 5.01% 7.69% -1.26% -17.40% H 2.23% -18.59% 8.15% 1.75% 3.98% -6.18% -0.81% 9.44% 4.81% -5.33% 4.93% 9.53% 15.30% ID -0.05% -0.10% -8.33% 2.22% 3.32% -6.52% 8.26% 2.83% -2.88% 3.77% -4.86% -1.17% 1.09% IT -11.79% -4.90% -0.35% -5.43% 7.75% -0.93% 0.43% 7.33% -0.43% -10.10% -12.84% -1.59% -12.30% TS -11.54% -6.53% 3.59% 11.23% 6.30% 9.40% -2.57% -5.53% -5.81% 0.06% -11.81% 2.14% -9.96% Weighted Alpha -2.16% 0.29% -1.27% 3.07% 4.13% -1.11% 3.79% -1.65% 2.97% 0.16% -1.94% -1.09% -5.34% UT -11.08% -13.02% 6.92% 11.98% 5.20% 10.54% 8.37% -2.68% 5.49% -2.01% 5.94% -4.73% -4.57% Total 3.77% 4.34% -0.68% 2.24% -1.94% 2.25% -0.19% -3.47% -1.62% 1.26% 0.60% Average -0.04% Alphas 4.03% -0.59% -3.11% -2.11% 1.49% -0.20% -3.86% -2.89% 1.11% -1.80% Table11 -11.84% -1.19% In this table the average yearly alphas per sector for the period 2001 - 2013 are presented. The yearly alphas are measured by implementing the factor regression coefficients of each sector (table 11) and monthly factor loadings (French Database) in Carhart’s four factor model. On top of that, it includes the yearly replicated market alpha, which is based on the market sector weightings (Appendix 1, table A.1). Lastly, the alphas are shown for the total regressions results (table 11). 32 5.2: Fund Characteristics and Performance In the previous section alphas are calculated for market-like funds and sector funds in general. These alphas will be used to check whether there exist a relation between performance and several fund characteristics. This will be done by a regression of the yearly alphas on the fund characteristics included in the model. In order to obtain unbiased regression results, it is important that the independent variables are not correlated. These so called collinearity problems could negatively influence the results. In table A.4 of the appendix 1, I included the correlations of the relevant fund characteristics for both market-like and sector funds. These tables show no collinearity problems, as highly correlated characteristics are not identified. Finally, to obtain the best model, I also performed regressions of the squared values of the fund characteristics and the natural logarithms of fund age and fund size. The results of these regressions show that by using the logarithms of fund size and age, the explanatory power of the model improves. Therefore, I used these variables in the final regressions. Table 13 presents the regression results of market-like funds and sector funds. When looking at the results in the upper part of table 13, insignificant coefficients for all fund characteristics are found for both the individual as multiple variable regressions. This means that the fund characteristics are not related to the performance of market-like funds. Moreover, the coefficient of determination is very low, which indicates that the variables included in the model explain only a small part of the variation of the alphas. When looking at the regression results of sector funds in the bottom part of table 13, partly contradictory results are observable compared to market-like funds. The individual regressions show that a higher turnover ratio have a statistically significant negative effect on performance, whereas larger funds and more experienced funds are positively related to performance. Finally, the final row presents the multiple regression results. As the adjusted R-squared is higher, this model does better explain the variation in alpha, despite the fact that it is still quite low. The results are almost similar to the individual regressions in terms of the level of significance, with the exception that the management fee is statistically significant at the 5% level. The regression coefficient indicates that a higher management fee will negatively influence performance. The interpretation of the other variables remains the same. 33 Table 13: Regressions Results of Fund Characteristics on Performance Expense Ratio Turnover Ratio Management Fee ln Size ln Age R2 Adj Market-like Funds -0.014*** -0.137 0.0002 -0.016*** -0.0005 0.0001 -0.016*** -0.0005 0.0002 -0.017*** 0.00005 0 -0.016*** 0.00032 0 -0.014** -0.164 -0.0004 -0.0005 0.0003 0.0012 0.0006 All Sector funds -0.049*** -0.02 0.0075 -0.041*** -0.0029*** 0.0047 -0.050*** 0 0.0013 -0.066*** 0.0089*** 0.0055 -0.046*** 0.00748*** 0.0149 -0.104*** 1.029 -0.0018*** -0.003** 0.01*** 0.011*** 0.0253 In this table the regression coefficients for market-like funds and sector funds in general are presented of several fund characteristics including: expense ratio, turnover ratio, management fee and the natural logarithms of size and age. On top of that, the intercept term (α) and the coefficient of determination (R2 Adj) is shown. The level of significance is indicated with asterisks, whereby * stands for 10%, ** for 5% and *** for 1%. α As mentioned above, some fund characteristics are related to performance. However, it does not explain the impact on performance, when a change in the independent fund characteristics occurs. Therefore, it is better to look at the economic effects and magnitude of a change. This is done for the significant results of the complete model of sector funds namely: turnover ratio, management fee and the natural logarithms of size and age. Table 14 provides the economic impact on performance for a change in turnover ratio, management fee and the logarithms of age and size. As stated above, the turnover ratio negatively influences performance. A change of one standard deviation leads to a decrease in performance by -0.67%. In order to investigate whether this is relatively large, it is better to look at the magnitude. With a magnitude of 16%, a change in turnover ratio clearly has a relatively large effect on performance. The same is done for the other significant fund characteristics. It turns out, that an increase in management fee has a negligible negative effect on performance, whereas the logarithms of size and age has a significant impact on performance. A one standard deviation increase in age, which stands for 6 years, leads to an increase in performance by 1.08%, which corresponds to a magnitude of 25% on performance. Next to that, an $1140 million increase in fund size, will lead to an increase in abnormal return of 2.33%, which corresponds to a magnitude of 55% on performance. This means that the turnover ratio, size and age for sector funds are economically significant and thus investors should seek for low turnover, large and experienced sector funds. 34 Table 14: Economic Relevance Sector Fund Characteristics Fund Characteristic ΔSD Economic Effect Magnitude Turnover Ratio 729% -0.67% 16% Management Fee 0.02% -0.01% 0.2% ln Size 1140 2.33% 55% ln Age 6 1.08% 25% This table provides the economic effects(SD*Regression Coefficient) and the magnitude of the turnover ratio, management fee and the natural logarithms of size and age on sector funds performance and are based on the regression results (table 13) and descriptive statistics (table 7). Moreover, the one standard deviation increase of the particular characteristic is shown, which is based on the mean value of that characteristic. The magnitude is the economic effect divided by the mean alpha of sector funds (4.25%). 5.3 Mutual Fund Performance during Recessions and Expansions The final part of this thesis is based on the performance of the actively managed funds relative to the market during periods of recessions and expansions. As stated in the literature review, former studies found evidence that the performance of mutual funds is closely related to economic circumstances, as mutual funds perform better in recessions compared to expansions (Kosowski, 2006). This section will elaborate more on this. According to the NBER, there were two periods of recession and two periods of expansion in the time horizon of 2001-2013. Table 15 provides the regression results of each period for both market-like funds and sector funds. The results show that the alphas of almost all periods are highly statistically significant and negative, which means that mutual funds are not able to outperform the market in both economic conditions. The results support earlier findings that mutual funds underperform relative to the market. Besides, it partly confirms Kosowski (2006), as market-like funds on average performed slightly better during recessions compared to expansions. As mentioned earlier, some sectors might be highly represented in the dataset, while others are not. Therefore the results might be biased and thus the same regression is executed for each sector individually in order to obtain more realistic results. 35 Table 15: Mutual Funds Regression Results during Recessions and Expansions α (Monthy) α (Yearly) β1(MKT) β2(SMB) β3(HML) β4(MOM) R2Adj Market-like Funds Recession 1 -0.12%*** -1.49%*** 0.83*** -0.11*** 0.06*** -0.19*** 0.88 Recession 2 -0.08%*** -0.95%*** 1.02*** -0.03*** -0,15*** 0.003 0.91 Average -0.10% -1.22% 0.93 -0.07 -0.05 -0.09 0.90 Expansion 1 -0.16%*** -1.96%*** 1*** -0.05*** -0.09*** 0.04*** 0.85 Expansion 2 -0.19%*** -2.32%*** 1.01*** -0.02*** -0,09*** -0.02*** 0.93 Average -0.18% -2.14% 1.01 -0.04 -0.09 0.01 0.89 Sectors Funds Recession 1 -0.08% -0.94% 0.81*** 0.03 -0.21*** -0.43*** 0.57 Recession 2 -0.33%*** -3.91%*** 1.03*** 0.34*** -0.11*** -0.08*** 0.65 Average -0.21% -2.43% 0.92 0.19 -0.16 -0.26 0.61 Expansion 1 -0.07%** -0.90%** 1.04*** 0.21*** -0.23*** -0.06*** 0.52 Expansion 2 -0.22%*** -2.60%*** 0.94*** 0.06*** 0.02*** -0.03*** 0.63 Average -0.15% -1.75% 0.99 0.14 -0.11 -0.05 0.58 This table shows the regression results of market-like funds and sector funds during recessions and expansions in the period 2001-2013. It includes the monthly and yearly alpha, the four factors of Carhart’s model (Market, Size, Value and Momentum) and the adjusted R-squared. The level of significance is indicated with asterisks, whereby * stands for 10%, ** for 5% and *** for 1%. Period * Recession 1: 03-2001 – 11-2001; Recession 2: 12-2007 – 06-2009; Expansion 1: 12-2001 – 11-2007; Expansion 2: 07-2009 – 12-2003. In table 16 the alphas of each sector for both periods of recession and expansion are presented. When looking at the results, large differences in performance are observable despite the fact that not all results are statistically significant. This might be caused by the sensitivity of sectors towards business cycles. According to Morningstar’s sector structure 15 , sectors can be defined as cyclical or non-cyclical (defensive). Cyclical sectors are very sensitive to business cycles, whereas non-cyclical sectors are not. The non-cyclical sectors are consumer goods, health and utilities, and therefore it is expected that these sectors will perform better than the other sectors, especially during recessions. The results show that this partially holds as most of the non-cyclical sectors obtained a positive alpha, although some results are not statistically significant. Next to that, it is likely that cyclical sectors will obtain better results during expansions. According to table 16, this is hard to detect. Although, the alphas are slightly less extreme compared to recessions, it is still the non-cyclical sector which significantly outperforms the market during expansions. When looking at the average performance over the total period, sector funds underperformed both during recessions (-1.59%) and expansions (-0.12%) . Besides the individual sector performance, I again replicated the market. The results are however slightly biased as some sectors provide insignificant results. The market weighted alpha is based on sector weightings of the market and approximately covers the relevant period. They are presented in table A.5 of appendix 1. Despite that some sectors are able to outperform the market during recessions, this is not the case for the replicated market with an average alpha of -1.29%. During expansions mixed results are observable, as the first expansion period shows an abnormal return of 1%, whereas the second period 15http://corporate.morningstar.com/au/documents/MethodologyDocuments/FactSheets/StockSectorStructure_Factsheet.pdf 36 contains a negative alpha of 1.44%. On average the replicated market fund underperformed the market by 0.22% in periods of expansion. Nevertheless, table 16 shows that in contrary to market-like funds, sector funds and the replicated market fund on average perform better during expansions. Therefore hypothesis 4 does not hold, as it is only partially true. Table 16: Performance of Sector funds and Replicated Market Fund during Recessions and Expansions Period BM CG CS E F H Recession 1 10.46%* Recession 2 16.41% 7.58% -7.48%** 2.72% -15.5%*** -15.68%*** -1.47% 19.09%*** -17.93%*** Average 13.44% 5.15% -11.49% 1.71% Expansion 1 8.01%** 2.66%** -2.59%*** Expansion 2 -14.23%*** 2.84%*** 4.03%*** Weighted Average Market Alpha ID IT TS UT 11.94%*** -1.40% 2.75%** -16.85%*** -24.88%*** -3.50% -1.18% 2.29% -8.63%*** 1.09% -1.26% 5.01%*** 0.33% -1.41% -9.70% 7.12% -5.02% 1.92% -9.06% -9.94% -1.59% -1.29% 6.55%*** 1.95%*** 0.76% 1.12% -2.93%*** 0.90% 2.18%*** 1.86% 1.00% -14.6%*** -0.12% 5.1%*** -0.97% -3.22%*** -1.11% 1.22%** -2.11% -1.44% Average -3.11% 2.75% 0.72% -4.03% 0.92% 2.93% 0.08% -3.08% -0.11% 1.70% -0.12% -0.22% In this table the yearly alphas are presented for the 10 relevant sectors and the replicated market fund during recessions and expansions. The level of significance is indicated with asterisks, whereby * stands for 10%, ** for 5% and *** for 1%. * Recession 1: 03-2001 – 11-2001; Recession 2: 12-2007 – 06-2009; Expansion 1: 12-2001 – 11-2007; Expansion 2: 07-2009 – 12-2003. * The Market Weighted Alpha is based on sector weightings of approximately the relevant period. They are presented in table A.5 of appendix 1. 37 Chapter 6: Conclusions and Recommendations 6.1: Conclusions In this study, the best strategy to invest in the U.S. overall market and how this is influenced by different economic conditions is investigated. In order to do this, the performance of a passively managed market fund relative to actively managed funds is measured, during the period 2001-2013. After a screening process of several passively managed market funds, the Vanguard Total Stocks Market Index Admiral has been chosen as a benchmark for the market, as it represents almost the complete U.S. investable market and has on average one of the lowest expense ratios. The following actively managed funds are taken into consideration: market-like funds, sector funds and a replicated market fund based on sector funds. In order to measure the performance of funds, Carhart’s four factor model is used. Firstly, a regression is executed based on the monthly excess returns of 1140 market-like funds (survivorshipsbias-free). The results show that market-like funds underperformed the market by 1.96% during the period 2001-2013. All results are net of expenses, with the exception of fund loads, which are not taken into account in this study. Secondly, the performance of sector funds is measured, which is done by using the excess returns of 1160 sector funds survivorship-bias free. Sector funds which are categorized into 10 different sectors, on average outperformed the market by 0.6%. This is line with earlier findings of Kacperszyk et al. (2005). Finally, I replicated the market based on sector funds, by using the yearly sector weightings of the market benchmark. However, the results show that the replicated market slightly underperformed the passively managed market fund by 0.04%. All results based on sector funds might be slightly biased as some results are not statistically significant and some sectors are global oriented. Most of the underperformance is attributable to the high expense ratios, as market-like funds and sector funds have on average an expense ratio of respectively 1.59% and 1.68%. Additionally, I performed a regression of several fund characteristics, including the expense ratio, turnover ratio, management fee, fund size and fund age on fund performance. Results indicated that there is no significant relationship between these characteristics and the performance of market-like funds. Sector fund performance show however a statistically and economically significant relation with turnover ratio, size and age. The results show that investors of sector funds should seek for experienced and large funds, with a low turnover ratio. Furthermore, the performance of funds during recessions and expansions is measured. On average, market-like funds, sectors funds and replicated market fund underperformed the market during recessions by respectively 1.22%, 1.59% and 1.29%. The same tendency is observable during expansions with underperformance of respectively 2.14%, 0.12% and 0.22%. When observing the individual sectors the 38 best performing sectors are non-cyclical sectors such as, consumer goods, health and utilities. The results contradict findings of Kosowski (2006), as he found that mutual funds perform better during recessions compared to expansions. Finally, the main question of this study can be answered. The best strategy to invest in the U.S. overall market is to invest in a passively managed market fund. The same holds during a recession or expansion. On average, managers of market-like funds do not have the ability of stock picking talent, whereas the opposite is the case for managers of sector funds. Underperformance is however mainly attributable to the large expense ratios of actively managed funds. The above mentioned findings could clarify the observed trends in the fund industry. This entails the large net cash inflow passively managed funds experience in previous years, while actively managed funds experience cash outflows. 6.2: Recommendations Further research could focus more on the value-weighted performance of mutual funds, as most of the investments are concentrated on a small part of the relevant funds. I excluded this part in my study, as it led to mostly insignificant results, which is probably caused by the fact that this study covered a too short time period. Secondly, the global oriented funds in several sectors should be removed, in order to obtain unbiased results. Finally, further research could focus on the relation between fund performance and fund characteristics. The fund characteristics taken into consideration only explained a small part of the variation in performance. This could mean that I forgot some important fund characteristics. 39 Bibliography Banz, R. (1981). The relationship between return and market value of common stocks. 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Third Edition 41 Appendix 1 Year/Sector 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Average BM 3.3% 3.6% 4.0% 4.0% 3.0% 3.0% 3.9% 3.3% 3.9% 4.2% 4.0% 4.0% 3.1% 3.6% CG 6.4% 6.9% 7.0% 7.0% 8.0% 8.0% 8.9% 11.2% 9.8% 9.1% 10.1% 9.4% 10.1% 8.6% Table A.1: Sector Weightings Market Fund CS E F H ID 14.8% 5.6% 20.3% 14.2% 10.7% 15.7% 5.8% 22.3% 14.3% 10.8% 15.0% 5.0% 24.0% 13.0% 11.0% 14.0% 8.0% 23.0% 12.0% 11.0% 12.0% 9.0% 22.0% 13.0% 11.0% 12.0% 9.0% 23.0% 12.0% 11.0% 9.6% 12.0% 17.6% 12.1% 11.9% 9.1% 12.2% 14.9% 14.5% 11.4% 10.2% 11.0% 15.3% 12.6% 11.0% 11.5% 11.3% 16.3% 11.2% 11.5% 11.7% 11.4% 14.6% 11.8% 11.2% 12.4% 10.2% 16.5% 11.8% 11.1% 13.5% 9.2% 18.5% 11.8% 13.7% 12.4% 9.2% 19.1% 12.6% 11.3% IT 16.6% 13.5% 15.0% 14.0% 16.0% 15.0% 16.8% 15.6% 19.5% 18.7% 18.6% 18.5% 15.0% 16.4% TS 3.6% 3.1% 3.0% 3.0% 3.0% 3.0% 3.3% 3.4% 2.9% 2.8% 2.7% 2.7% 2.1% 3.0% UT 4.5% 4.0% 3.0% 4.0% 3.0% 4.0% 3.9% 4.4% 3.8% 3.4% 3.9% 3.4% 3.0% 3.7% Total 100% 100% 100% 100% 100% 100% 100% 100% 100% 100% 100% 100% 100% 100% In this table the yearly sector weightings of the market fund (Vanguard Total Stock Market Index Admiral) are presented for the period 2001-2013. The data is retrieved from the yearly fund prospectus. (Source: sec.gov) BM (G) 2 2 2 2 2 2 4 6 11 34 46 62 59 234 3% 67 6% CG (G) 7 7 7 9 9 13 13 14 17 19 19 22 22 178 2% 23 2% Table A.2: Sector Fund Observations CS ID IT (G) E (D) F (D) H (D) (G) (D) 17 20 142 111 13 241 19 22 134 120 13 207 19 22 139 104 13 169 21 25 149 102 14 161 22 23 141 76 14 122 23 26 140 74 15 116 24 26 146 68 15 107 25 50 199 91 15 138 23 53 188 83 19 126 25 53 190 79 24 112 25 54 179 70 21 104 25 59 187 69 23 101 20 70 195 68 24 94 288 503 2.129 1.115 223 1.798 4% 7% 28% 15% 3% 24% 27 79 297 167 27 321 2% 7% 26% 14% 2% 28% TS UT Year/Sector (G) (G) Total 2001 53 50 656 2002 49 50 623 2003 37 48 560 2004 31 50 564 2005 31 47 487 2006 35 44 488 2007 35 39 477 2008 32 63 633 2009 31 61 612 2010 31 59 626 2011 31 53 602 2012 30 54 632 2013 30 54 636 Total 456 672 7596 Percentage 6% 9% 100% No. of Funds 67 85 1160 Percentage 6% 7% 100% No. of Monthly Observations 2447 2032 3401 5745 25020 13217 2568 21803 5481 7894 89608 Percentage 3% 2% 4% 6% 28% 15% 3% 24% 6% 9% 100% This table gives an overview for the 10 different sectors. It includes: the yearly number of funds, total number of funds and number of monthly observations Furthermore the total observations per year for all sectors are included and the sector proportion of the dataset for the total period. In addition, the first row describes whether the sector is globally (G) or domestic (D) oriented. 42 Table A.3: Market Sector Weightings per Period and Corresponding Performance Market Sector Weightings Year BM CG CS E F H ID IT TS UT Total 2001-2002-2003 3.63% 6.77% 15.17% 5.47% 22.20% 13.83% 10.83% 15.03% 3.23% 3.83% 100.00% 2004-2005 3.50% 7.50% 13.00% 8.50% 22.50% 12.50% 11.00% 15.00% 3.00% 3.50% 100.00% 2006-2007 3.45% 8.45% 10.80% 10.50% 20.30% 12.05% 11.45% 15.90% 3.15% 3.95% 100.00% 2008-2009 3.60% 10.50% 9.65% 11.60% 15.10% 13.55% 11.20% 17.55% 3.15% 4.10% 100.00% 2010-2011 4.10% 9.60% 11.60% 11.35% 15.45% 11.50% 11.35% 18.65% 2.75% 3.65% 100.00% 2012-2013 3.55% 9.75% 12.95% 9.70% 17.50% 11.80% 12.40% 16.75% 2.40% 3.20% Performance (Alphas) 100.00% Weighted Alpha 2001-2002-2003 8.04%* 2.16% -4.00%*** -6.85%** 3.07%*** -2.86%*** -3.96%** -4.96%*** -3.68%** -10.13%*** -1.94% 2004-2005 -3.33% -1.51% 1.01% 8.54%*** 2.82%*** 7.48%*** 7.50%*** -2.42%*** 11.47%*** 3.43%*** 3.12% 2006-2007 9.67%** 3.77%** -2.58%** 8.44%*** -5.65%*** -3.44%*** 2.16% 0.69% 4.56%*** 9.17%*** 0.56% 2008-2009 -0.55% 3.54% -7.65%*** 3.09% -9.73%*** 6.58%*** -2.82% 2.95%*** -5.61%** 2.35%** -0.49% 2010-2011 -6.62%*** 2.99%* 1.87%* -7.69%*** 3.64%*** 1.73%** -4.01%*** -6.56%*** -4.38%*** 2.36%*** -1.59% 2012-2013 -10.49%*** -1.48% 6.49%*** -11.15%*** -3.16%*** 3.80%*** 4.94%*** -0.19% 3.55%* -5.10%*** -0.36% -0.55% 1.58% -0.81% -0.94% -1.50% 2.22% 0.63% -1.75% 0.98% 0.35% -0.12% Average In this table the average market sector weigthings and corresponding performance (alphas) are presented per period for 10 different sectors. The sector alphas are measured by means of Carhart's four factor model. Additionally, the weighted alphas are included, which stands for the performance of the replicated market. The level of significance is indicated with asterisks. whereby * stands for 10%. ** for 5% and *** for 1%. This is only applicable on the bottom part of the table. Table A.4: Correlation Matrix Market-like and Sector Funds Expense Ratio Turnover Ratio Management Fee ln Size ln Age Market-like Expense Ratio 1 Turnover Ratio 0.1 1 Management Fee 0.0 0.0 1 ln Size -0.4 -0.1 0.2 1 ln Age -0.2 -0.1 0.2 0.5 1 Expense Ratio Turnover Ratio Management Fee Fund Size ln Age Sector Funds Expense Ratio 1 Turnover Ratio 0.1 1 Management Fee 0.0 0.0 1 ln Size -0.5 -0.3 0.2 1 ln Age -0.3 -0.1 0.3 0.5 1 This table shows the correlations between the several fund characteristics for both market-like funds and sector funds. It includes the expense ratio, turnover ratio, management fee and the natural logarithms of size and age. It is based on yearly data covering the time period 2001-2013. Table A.5: Used Market Sector Weightings for Recessions and Expansions Weightings BM CG CS E F H ID IT TS UT Total Period Recession 1 3.3% 6.4% 14.8% 5.6% 20.3% 14.2% 10.7% 16.6% 3.6% 4.5% 100% 2001 Recession 2 3.6% 10.5% 9.65% 11.6% 15.1% 13.55% 11.2% 17.55% 3.15% 4.1% 100% 2008-2009 Expansion 1 3.58% 7.63% 13.05% 8.13% 21.98% 12.73% 11.12% 15.05% 3.07% 3.65% 100% 2002-2007 Expansion 2 3.84% 9.70% 11.86% 10.62% 16.24% 11.84% 11.70% 18.06% 2.64% 3.50% 100% 2009-2013 In this table the market sector weightings are presented for two periods of recession and two periods of expansion. The data are based on averages of the weightings period. * Recession 1: 03-2001 – 11-2001; Recession 2: 12-2007 – 06-2009; Expansion 1: 12-2001 – 11-2007; Expansion 2: 07-2009 – 12-2003. 43