A Data-Weighted Prior Estimator for Forecast Combination

Forecast combination methods reduce the information in a vector of forecasts to a single combined forecast by using a set of combination weights. Although there are several methods, a typical strategy is the use of the simple arithmetic mean to obtain the combined forecast. A priori, the use of this mean could be justified when all the forecasters have had the same performance in the past or when they do not have enough information. In this paper, we explore the possibility of using entropy econometrics as a procedure for combining forecasts that allows to discriminate between bad and good forecasters, even in the situation of little information. With this purpose, the data-weighted prior (DWP) estimator proposed by Golan (2001) is used for forecaster selection and simultaneous parameter estimation in linear statistical models. In particular, we examine the ability of the DWP estimator to effectively select relevant forecasts among all forecasts. We test the accuracy of the proposed model with a simulation exercise and compare its ex ante forecasting performance with other methods used to combine forecasts. The obtained results suggest that the proposed method dominates other combining methods, such as equal-weight averages or ordinal least squares methods, among others.

[1]  Enrico Ciavolino,et al.  Streaming generalized cross entropy , 2018, Soft Computing.

[2]  F. Pukelsheim The Three Sigma Rule , 1994 .

[3]  Robert L. Winkler,et al.  Aggregating Point Estimates: A Flexible Modeling Approach , 1993 .

[4]  C. E. Agnew,et al.  Bayesian consensus forecasts of macroeconomic variables , 1985 .

[5]  Robert L. Winkler,et al.  The effect of nonstationarity on combined forecasts , 1992 .

[6]  J. N. Kapur,et al.  Entropy optimization principles with applications , 1992 .

[7]  Ximing Wu A Weighted Generalized Maximum Entropy Estimator with a Data-driven Weight , 2009, Entropy.

[8]  Amos Golan,et al.  A simultaneous estimation and variable selection rule , 2001 .

[9]  R. L. Winkler Combining Probability Distributions from Dependent Information Sources , 1981 .

[10]  Esteban Fernández-Vázquez,et al.  Entropy Econometrics for combining regional economic forecasts: A Data-Weighted Prior Estimator , 2017, J. Geogr. Syst..

[11]  C. De Mol,et al.  Optimal Combination of Survey Forecasts , 2012 .

[12]  Robert L. Winkler,et al.  The accuracy of extrapolation (time series) methods: Results of a forecasting competition , 1982 .

[13]  Zhijian Wu,et al.  Combined Forecasting of Rainfall Based on Fuzzy Clustering and Cross Entropy , 2017, Entropy.

[15]  Esteban Fernández-Vázquez,et al.  Recovering Matrices of Economic Flows from Incomplete Data and a Composite Prior , 2010, Entropy.

[16]  M. Marcellino,et al.  Forecast Pooling for European Macroeconomic Variables , 2004 .

[17]  C. De Mol,et al.  Forecasting Using a Large Number of Predictors: Is Bayesian Regression a Valid Alternative to Principal Components? , 2006, SSRN Electronic Journal.

[18]  Arnold Zellner,et al.  THE BAYESIAN METHOD OF MOMENTS (BMOM) , 1997 .

[19]  Douglas J. Miller,et al.  Maximum entropy econometrics: robust estimation with limited data , 1996 .

[20]  F. Diebold,et al.  Structural change and the combination of forecasts , 1986 .

[21]  A. Timmermann,et al.  Combining expert forecasts: Can anything beat the simple average? , 2013 .

[22]  R. Bernardini Papalia,et al.  A Composite Generalized Cross-Entropy Formulation in Small Samples Estimation , 2008 .

[23]  Esteban Fernández Vázquez,et al.  Estimating regional variations of R&D effects on productivity growth by entropy econometrics , 2009 .

[24]  A. Timmermann Chapter 4 Forecast Combinations , 2006 .

[25]  Allan Timmermann,et al.  Persistence in forecasting performance and conditional combination strategies , 2006 .

[26]  C. Granger,et al.  Experience with Forecasting Univariate Time Series and the Combination of Forecasts , 1974 .

[27]  A. Timmermann Forecast Combinations , 2005 .

[28]  Mark R. Greer Combination forecasting for directional accuracy: An application to survey interest rate forecasts , 2005 .

[29]  J. Stock,et al.  Combination forecasts of output growth in a seven-country data set , 2004 .

[30]  J. M. Bates,et al.  The Combination of Forecasts , 1969 .

[31]  J. Stock,et al.  Forecasting Using Principal Components From a Large Number of Predictors , 2002 .

[32]  Timo Teräsvirta,et al.  The combination of forecasts using changing weights , 1994 .

[33]  J. Stock,et al.  A dynamic factor model framework for forecast combination , 1999 .

[34]  D. W. Bunn,et al.  A Bayesian Approach to the Linear Combination of Forecasts , 1975 .

[35]  C. Granger,et al.  Improved methods of combining forecasts , 1984 .

[36]  John Guerard,et al.  Collinearity and the Use of Latent Root Regression for Combining GNP Forecasts , 1989 .

[37]  R. L. Winkler,et al.  Averages of Forecasts: Some Empirical Results , 1983 .

[38]  Arnold Zellner Bayesian Method of Moments (BMOM) Analysis of Mean and Regression Models , 1996 .

[39]  N. Edward Coulson,et al.  Forecast combination in a dynamic setting , 1993 .

[40]  Yue Fang,et al.  Forecasting combination and encompassing tests , 2003 .

[41]  G. Anandalingam,et al.  Linear combination of forecasts: A general Bayesian model , 1989 .

[42]  Blanca Moreno,et al.  Combining Economic Forecasts by Using a Maximum Entropy Econometric Approach , 2013 .

[43]  R. Bordley The Combination of Forecasts: a Bayesian Approach , 1982 .

[44]  David R. Anderson,et al.  Model selection and multimodel inference : a practical information-theoretic approach , 2003 .

[45]  Enrico Ciavolino,et al.  A generalized maximum entropy estimator to simple linear measurement error model with a composite indicator , 2017, Adv. Data Anal. Classif..

[46]  Derek W. Bunn,et al.  Review of guidelines for the use of combined forecasts , 2000, Eur. J. Oper. Res..

[47]  K. Wallis,et al.  A Simple Explanation of the Forecast Combination Puzzle , 2009 .

[48]  Allan Timmermann,et al.  Forecast Combination With Entry and Exit of Experts , 2006 .

[49]  K. Burnham,et al.  Model selection: An integral part of inference , 1997 .

[50]  Mark J. Kamstra,et al.  Combining algorithms based on robust estimation techniques and co-integrating restrictions , 1989 .