Consistent Inference in Fixed-Effects Stochastic Frontier Models

The classical stochastic frontier panel data models provide no mechanism for disentangling individual time-invariant unobserved heterogeneity from inefficiency. Greene (2005a, b) proposed the ‘true’ fixed-effects specification, which distinguishes these two latent components while allowing for time-variant inefficiency. However, due to the incidental parameters problem, the maximum likelihood estimator proposed by Greene may lead to biased variance estimates. We propose two alternative estimation procedures that, by relying on a first-difference data transformation, achieve consistency when n goes to infinity with fixed T. Furthermore, we extend the approach of Chen et al. (2014) by providing a computationally feasible solution for estimating models in which inefficiency can be heteroskedastic and may follow a first-order autoregressive process. We investigate the finite sample behavior of the proposed estimators through a set of Monte Carlo experiments. Our results show good finite sample properties, especially in small samples. We illustrate the usefulness of the new approach by applying it to the technical efficiency of hospitals.

[1]  Gilberto Turati,et al.  Behavioral differences between public and private not-for-profit hospitals in the Italian National Health Service. , 2007, Health economics.

[2]  Marcel Fratzscher,et al.  The Scapegoat Theory of Exchange Rates: The First Tests , 2012, SSRN Electronic Journal.

[3]  C. Lovell,et al.  On the estimation of technical inefficiency in the stochastic frontier production function model , 1982 .

[4]  Léopold Simar,et al.  Pitfalls of Normal-Gamma Stochastic Frontier Models , 1997 .

[5]  W. Greene The Econometric Approach to Efficiency Analysis , 2008 .

[6]  K. Train Halton Sequences for Mixed Logit , 2000 .

[7]  Catherine J. Morrison Paul,et al.  Efficiency in New Zealand Sheep and Beef Farming: The Impacts of Regulatory Reform , 2000, Review of Economics and Statistics.

[8]  Bo E. Honoré,et al.  Pairwise difference estimators of censored and truncated regression models , 1994 .

[9]  Estimation of Frechet disribution parameters by joint distribution of ' m ' extremes , 1990 .

[10]  Grigorios Emvalomatis Adjustment and unobserved heterogeneity in dynamic stochastic frontier models , 2012 .

[11]  Robin C. Sickles,et al.  Estimation of long-run inefficiency levels: a dynamic frontier approach , 2000 .

[12]  R. Sickles,et al.  Stochastic Frontier Models with Bounded Inefficiency , 2014 .

[13]  T. Mäkinen,et al.  The Double Bind of Asymmetric Information in Over-the-Counter Markets , 2017 .

[14]  Filippo Vergara Caffarelli,et al.  One-Way Flow Networks with Decreasing Returns to Linking , 2017, Dyn. Games Appl..

[15]  Peter Schmidt,et al.  Consistent estimation of the fixed effects stochastic frontier model , 2014 .

[16]  Raffaello Bronzini The Effects of Extensive and Intensive Margins of FDI on Domestic Employment: Microeconomic Evidence from Italy , 2015 .

[17]  Jason Abrevaya Leapfrog estimation of a fixed-effects model with unknown transformation of the dependent variable , 1999 .

[18]  C. Bhat Quasi-random maximum simulated likelihood estimation of the mixed multinomial logit model , 2001 .

[19]  Fabio Busetti,et al.  The Bank of Italy Econometric Model: An Update of the Main Equations and Model Elasticities , 2017 .

[20]  Paul A. Ruud,et al.  Probit with Dependent Observations , 1988 .

[21]  Legislators' behaviour and electoral rules: Evidence from an Italian reform , 2019, European Journal of Political Economy.

[22]  Antonio Accetturo,et al.  Law enforcement and political participation: Italy, 1861–65 , 2017 .

[23]  Chiara Bentivogli,et al.  Foreign Ownership and Performance: Evidence from a Panel of Italian Firms , 2016 .

[24]  Paolo Emilio Mistrulli,et al.  Multiple Lending, Credit Lines and Financial Contagion , 2017, SSRN Electronic Journal.

[25]  Tatiana Cesaroni Procyclicality of Credit Rating Systems: How to Manage it , 2015 .

[26]  T. Rothenberg Identification in Parametric Models , 1971 .

[27]  Valerio Paolo Vacca,et al.  An Unexpected Crisis? Looking at Pricing Effectiveness of Heterogeneous Banks , 2017 .

[28]  Giacinto Micucci,et al.  Debt Restructuring and the Role of Banks’ Organizational Structure and Lending Technologies , 2017 .

[29]  A. U.S.,et al.  FORMULATION AND ESTIMATION OF STOCHASTIC FRONTIER PRODUCTION FUNCTION MODELS , 2001 .

[30]  W. Meeusen,et al.  Efficiency Estimation from Cobb-Douglas Production Functions with Composed Error , 1977 .

[31]  Gianmaria Martini,et al.  A Stochastic Frontier Model with short-run and long-run inefficiency random effects , 2011 .

[32]  Raffaello Bronzini,et al.  Venture Capitalists at Work: What are the Effects on the Firms They Finance? , 2017 .

[33]  William H. Greene,et al.  Reconsidering heterogeneity in panel data estimators of the stochastic frontier model , 2005 .

[34]  F. Giffoni,et al.  Human Capital and Urban Growth in Italy, 1981-2001 , 2017 .

[35]  A. Borin,et al.  Foreign direct investment and firm performance: an empirical analysis of Italian firms , 2015 .

[36]  Lorenzo Burlon,et al.  Public Expenditure Distribution, Voting, and Growth , 2011 .

[37]  S. Kumbhakar,et al.  Labour-Use Efficiency in Swedish Social Insurance Offices , 1995 .

[38]  Hung-Jen Wang,et al.  Estimating fixed-effect panel stochastic frontier models by model transformation , 2010 .

[39]  A. Calza,et al.  Shoe-Leather Costs in the Euro Area and the Foreign Demand for Euro Banknotes , 2015, SSRN Electronic Journal.

[40]  Ugo Albertazzi,et al.  Credit Demand and Supply: A Two-Way Feedback Relation , 2017 .

[41]  A note on some properties of a skew-normal density , 2010 .

[42]  A. Harvey,et al.  Time‐series models with an EGB2 conditional distribution , 2014 .

[43]  Eleonora Patacchini,et al.  Social Ties and the Demand for Financial Services , 2017 .

[44]  G. Kapetanios,et al.  Large Time-Varying Parameter VARs: A Non-Parametric Approach , 2016, Journal of Applied Econometrics.

[45]  G. Tabellini,et al.  Credit Misallocation During the European Financial Crisis Fabiano Schivardi , 2017 .

[46]  L. Gambacorta,et al.  Asymmetric information in securitization: An empirical assessment , 2015 .

[47]  A. Azzalini,et al.  Statistical applications of the multivariate skew normal distribution , 2009, 0911.2093.

[48]  Lung-fei Lee,et al.  The measurement and sources of technical inefficiency in the Indonesian weaving industry , 1981 .

[49]  Chiara Perricone,et al.  Does Trend Inflation Make a Difference? , 2015 .

[50]  Silvio Daidone,et al.  Technical efficiency, specialization and ownership form: evidences from a pooling of Italian hospitals , 2009 .

[51]  M. Gross,et al.  On Secular Stagnation and Low Interest Rates: Demography Matters , 2017, International Finance.

[52]  Francesco Palazzo Search Costs and the Severity of Adverse Selection , 2017 .

[53]  Eugenio Gaiotti,et al.  A “reverse Robin Hood”? The distributional implications of non-standard monetary policy for Italian households , 2017, Journal of International Money and Finance.

[54]  Gaia Narciso,et al.  Organized crime and business subsidies: Where does the money go? , 2015 .

[55]  Emilia Bonaccorsi di Patti,et al.  Did the securitization market freeze affect bank lending during the financial crisis? Evidence from a credit register , 2016 .

[56]  C. Robert Simulation of truncated normal variables , 2009, 0907.4010.

[57]  Models for Which the MLE and the Conditional MLE Coincide , 1992 .

[58]  Virginia Di Nino,et al.  The Cyclicality of the Income Elasticity of Trade , 2016 .

[59]  Efthymios G. Tsionas,et al.  Inference in dynamic stochastic frontier models , 2006 .

[60]  P. Schmidt,et al.  Production Frontiers and Panel Data , 1984 .

[61]  Benjamin Nelson,et al.  Simple Banking: Profitability and the Yield Curve , 2012 .

[62]  Tatiana Cesaroni,et al.  The Predictive Content of Business Survey Indicators: Evidence from SIGE , 2015 .

[63]  Fabio Busetti,et al.  Quantile Aggregation of Density Forecasts , 2014 .

[64]  John Geweke,et al.  Efficient Simulation from the Multivariate Normal and Student-t Distributions Subject to Linear Constraints and the Evaluation of Constraint Probabilities , 1991 .

[65]  Guido de Blasio,et al.  The Impact of Local Minimum Wages on Employment: Evidence from Italy in the 1950s , 2014 .

[66]  G. Battese,et al.  A model for technical inefficiency effects in a stochastic frontier production function for panel data , 1995 .

[67]  P. Schmidt,et al.  Production frontiers with cross-sectional and time-series variation in efficiency levels , 1990 .

[68]  Retirement, pension eligibility and home production , 2016 .

[69]  Paolo Piselli,et al.  The Impact of R&D Subsidies on Firm Innovation , 2014 .

[70]  M. Marinucci,et al.  Science and Technology Parks in Italy: main features and analysis of their effects on hosted firms∗ , 2013 .

[71]  Juri Marcucci,et al.  The Predictive Power of Google Searches in Forecasting Unemployment , 2012 .

[72]  Alessio Ciarlone,et al.  Escaping financial crises? Macro evidence from sovereign wealth funds' investment behaviour , 2016 .

[73]  Jeffrey M. Wooldridge,et al.  Partial maximum likelihood estimation of spatial probit models , 2013 .

[74]  Peter Schmidt,et al.  One-Step and Two-Step Estimation of the Effects of Exogenous Variables on Technical Efficiency Levels , 2002 .

[75]  Davide Fantino,et al.  Collaboration Between Firms and Universities in Italy: The Role of a Firm’s Proximity to Top-Rated Departments , 2015 .

[76]  Andrea Zaghini,et al.  A Tale of Fragmentation: Corporate Funding in the Euro-Area Bond Market , 2017 .

[77]  Montserrat Vilalta-Bufí,et al.  A new look at technical progress and early retirement , 2016 .

[78]  Giorgio Vittadini,et al.  Closed-skew normality in stochastic frontiers with individual effects and long/short-run efficiency , 2014 .

[79]  Lorenzo Burlon,et al.  Macroeconomic Effectiveness of Non-Standard Monetary Policy and Early Exit. A Model-Based Evaluation , 2016 .

[80]  R. Caflisch,et al.  Quasi-Monte Carlo integration , 1995 .

[81]  C. Guerrieri,et al.  The Effects of Central Bank's Verbal Guidance: Evidence from the ECB , 2017 .

[82]  N. L. Johnson,et al.  Continuous Multivariate Distributions, Volume 1: Models and Applications , 2019 .

[83]  G. Battese,et al.  Frontier production functions, technical efficiency and panel data: With application to paddy farmers in India , 1992 .

[84]  E. Tarantino,et al.  Sovereign Debt and Reserves with Liquidity and Productivity Crises , 2015 .

[85]  Arjun K. Gupta,et al.  Additive properties of skew normal random vectors , 2004 .

[86]  S. Kumbhakar Production frontiers, panel data, and time-varying technical inefficiency , 1990 .

[87]  F. Venditti,et al.  The Financial Stability Dark Side of Monetary Policy , 2016 .

[88]  Arjun K. Gupta,et al.  The Closed Skew-Normal Distribution , 2004 .

[89]  Evangelia Papapetrou,et al.  Public–private wage differentials in euro-area countries: evidence from quantile decomposition analysis , 2013, Empirical Economics.

[90]  Price Pressures on UK Real Rates: An Empirical Investigation , 2016 .

[91]  Henryk Wozniakowski,et al.  When Are Quasi-Monte Carlo Algorithms Efficient for High Dimensional Integrals? , 1998, J. Complex..

[92]  C. Lovell,et al.  Stochastic Frontier Analysis: Frontmatter , 2000 .

[93]  L. Burlon,et al.  Macroeconomic Effects of Non-Standard Monetary Policy Measures in the Euro Area: The Role of Corporate Bond Purchases , 2017, The Manchester School.

[94]  Anatoli Segura,et al.  Why Did Sponsor Banks Rescue Their SIVs? , 2017 .

[95]  Tatiana Cesaroni,et al.  Current Account ‘Core–Periphery Dualism’ in the EMU , 2014 .

[96]  G. Battese,et al.  Prediction of firm-level technical efficiencies with a generalized frontier production function and panel data , 1988 .

[97]  Fabrizio Venditti,et al.  The Time Varying Effect of Oil Price Shocks on Euro-Area Exports , 2015 .

[98]  A. Beltratti,et al.  Stock Market Efficiency in China: Evidence from the Split-Share Reform , 2014 .

[99]  Subal C. Kumbhakar,et al.  Some Recent Developments in Efficiency Measurement in Stochastic Frontier Models , 2011 .

[100]  Alessio Ciarlone House price cycles in emerging economies , 2015 .

[101]  G. González-Farías,et al.  SKEW-NORMALITY IN STOCHASTIC FRONTIER ANALYSIS , 2003 .

[102]  Javier Suarez,et al.  How Excessive is Banks’ Maturity Transformation? , 2016, SSRN Electronic Journal.

[103]  F. D’Amuri,et al.  Monitoring and disincentives in containing paid sick leave , 2017 .

[104]  Michele Caivano,et al.  Low Frequency Drivers of the Real Interest Rate: A Band Spectrum Regression Approach , 2017 .

[105]  Alan Genz,et al.  Numerical computation of rectangular bivariate and trivariate normal and t probabilities , 2004, Stat. Comput..

[106]  D. Bragoli,et al.  Optimal Inflation Weights in the Euro Area , 2016 .

[107]  Emanuele Ciani,et al.  The Consequences of Public Employment: Evidence from Italian Municipalities , 2017 .

[108]  W. Greene Fixed and Random Effects in Stochastic Frontier Models , 2002 .

[109]  J. Halton On the efficiency of certain quasi-random sequences of points in evaluating multi-dimensional integrals , 1960 .

[110]  M. Riggi,et al.  CAPITAL DESTRUCTION, JOBLESS RECOVERIES, AND THE DISCIPLINE DEVICE ROLE OF UNEMPLOYMENT , 2012, Macroeconomic Dynamics.

[111]  Rolf Färe,et al.  Production Frontiers: Introduction , 1993 .

[112]  A. Notarpietro,et al.  Optimal Monetary Policy Rules and House Prices: The Role of Financial Frictions , 2014 .

[113]  Robin C. Sickles,et al.  The Skewness Issue in Stochastic Frontiers Models: Fact or Fiction? , 2011 .

[114]  Haroon Mumtaz,et al.  Financial Indicators and Density Forecasts for US Output and Inflation , 2014 .

[115]  W. Newey,et al.  Large sample estimation and hypothesis testing , 1986 .

[116]  F. Busetti On Detecting End-of-Sample Instabilities , 2012 .

[117]  J. Hausman Specification tests in econometrics , 1978 .

[118]  William H. Greene,et al.  Simulated Likelihood Estimation of the Normal-Gamma Stochastic Frontier Function , 2000 .

[119]  Margherita Bottero,et al.  Information externalities in the credit market and the spell of credit rationing , 2017 .