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unido.org/statistics The 59th World Statistics Congress Hong Kong, 25-30 August 2013 Composite measure of industrial performance for cross-country analysis Shyam Upadhyaya UNIDO unido.org/statistics Outline of the presentation Composite measures in international practice What is different in UNIDO’s CIP index Scope, dimensions and construction procedure Sensitivity analysis Some results and conclusion 2 unido.org/statistics Composite measures in international practice Jeder nach seinen Fähigkeiten, jedem nach seinen Bedürfnissen! From each according to his ability, to each according to his need! - Karl Marx (1875) 178 composite indices are compiled worldwide in different frequencies Happiness index Welfare Index Global climate risk index ... ... Political instability index From each international agency at least one composite index according to their need ... 3 unido.org/statistics Why international agencies are so fond of composite index? • Single measure of indicating a country’s development performance • Easy for policymakers to understand • Benchmarking and country comparison • Ranking Shift in the rank generates public debate • Media attraction (visibility) 4 What is risk? unido.org/statistics • Composite measure combines too many things into one, but precisely, it may not measure anything • To construct the index, one needs source data for all indicators; which may limit the country coverage Even when all underlying statistics are available … there is no way of capturing the entire wealth of knowledge embedded in a set of numbers in one real number. Or under temptation of getting larger coverage, the compiler may compromise the quality of estimates when underlying data are not readily available (HDI discussions) - Amartya Sen, 1994 • Policymakers may actually not see the value of large amount of data that are produced behind the scene 5 unido.org/statistics UNIDO’s Competitive Industrial Performance (CIP) Index • UNIDO’s mandate on industrial development • Sectoral perspectives Other similar indices: • Based on output measures to capture the production performance Global Competitive Index (GCI) by the World Economic Forum • Solely quantitative measures, no perception indicators World Competitiveness Scoreboard (WCS) by the Institute for Management Development • Reflects country’s capacity to produce and compete in the world market Doing Business Index (DBI) by the World Bank 6 unido.org/statistics Structure of CIP index Dimensions Capacity to produce and export Technological upgrading and deepening Indicators 1. Manufacturing value added (MVA) per capita 2. Manufacturing export per capita Weight 1/6 1/6 3. Share of MHT activities in total MVA 4. Share of MVA in GDP 1/12 1/12 5. Share of MHT in manufactures exports 6. Share of manufacturing in total exports 1/12 1/12 7. Share of the country in world MVA Impact on world 8. Share of the country in world manufactures production and trade exports 1/6 1/6 7 unido.org/statistics Compilation procedure X i , j min( X i , j ) Normalization: conversion of real value of S ik, j S ik, j 0,1 k k varying scale to obtain a common score between max( X i , j ) min( X i , j ) 0 to 1 Sik, j score obtained from k-th variable of i-th indicator and j-th country k Aggregation of individual scores to CIP value Equal weights for three dimensions and aggregation through geometric mean k q CIPj Sij i 1 wi wi 1 8 unido.org/statistics CIP’s fitness for its purpose as a performance index A powerful tool for policy advice Country comparator Component indicators can be used for industrial diagnostics Comparison with other composite measures Rank correlation coefficient with HDI = 0.79 9 unido.org/statistics Country Ranks in latest CIP publication Top 10 countries Bottom 10 countries 1 Japan 126 Sudan 2 Germany 127 Haiti 3 United States 128 Niger 4 Republic of Korea 129 Rwanda 5 China, Taiwan 130 Ethiopia 6 Singapore 131 Central African Republic 7 China 132 Burundi 8 Switzerland 133 Eritrea 9 Belgium 134 Gambia 135 Iraq 10 France 10 unido.org/statistics Sensitivity analysis • Composite measures are compiled through several dilemmas • Often, there is no clear path to selection of one way against another • The main purpose of the sensitivity analysis is to examine the impact of methodological choices in the final results • Methodological choices in CIP construction: Number of indicators and weights Normalization method Aggregation method 11 unido.org/statistics Results of sensitivity analysis Methodological choices Absolute difference* Spearman correlation** Four vs. eight indicators 13.71 0.901 Arithmetic vs. geometric mean 13.21 0.914 z-score vs. Min-Max normalization 12.81 0.923 Linear interpolation vs. last price interpolation 9.932 0.972 Product-based technology classification vs. activity5.732 0.975 based *Year-average of average absolute difference in ranks between the modified and default method ** Year-average of correlation between ranks of new method and default method 12 unido.org/statistics Conclusion • Composite index is a powerful tool to communicate with policy makers • Behind the single measure there is a vast amount of data and statistical work • CIP index depicts a country’s overall measure of industrial performance • Users should pay attention equally to its component indicators, which provide more specific measures of key aspects of industrial performance 13 Thank you! 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