From Data to Causes III: Bayesian Priors for General Cross-Lagged Panel Models (GCLM)

This article describes some potential uses of Bayesian estimation for time-series and panel data models by incorporating information from prior probabilities (i.e., priors) in addition to observed data. Drawing on econometrics and other literatures we illustrate the use of informative “shrinkage” or “small variance” priors (including so-called “Minnesota priors”) while extending prior work on the general cross-lagged panel model (GCLM). Using a panel dataset of national income and subjective well-being (SWB) we describe three key benefits of these priors. First, they shrink parameter estimates toward zero or toward each other for time-varying parameters, which lends additional support for an income → SWB effect that is not supported with maximum likelihood (ML). This is useful because, second, these priors increase model parsimony and the stability of estimates (keeping them within more reasonable bounds) and thus improve out-of-sample predictions and interpretability, which means estimated effect should also be more trustworthy than under ML. Third, these priors allow estimating otherwise under-identified models under ML, allowing higher-order lagged effects and time-varying parameters that are otherwise impossible to estimate using observed data alone. In conclusion we note some of the responsibilities that come with the use of priors which, departing from typical commentaries on their scientific applications, we describe as involving reflection on how best to apply modeling tools to address matters of worldly concern.

[1]  Badi H. Baltagi,et al.  Dynamic Panel Data Models , 2021, Springer Texts in Business and Economics.

[2]  Paul D. Allison,et al.  From Data to Causes II: Comparing Approaches to Panel Data Analysis , 2019, Organizational Research Methods.

[3]  Kristopher J Preacher,et al.  From Data to Causes I: Building A General Cross-Lagged Panel Model (GCLM) , 2019, Organizational Research Methods.

[4]  Milica Miočević,et al.  Bayesian Versus Frequentist Estimation for Structural Equation Models in Small Sample Contexts: A Systematic Review , 2019, Structural Equation Modeling: A Multidisciplinary Journal.

[5]  Alexander Robitzsch,et al.  More Stable Estimation of the STARTS Model: A Bayesian Approach Using Markov Chain Monte Carlo Techniques , 2017, Psychological methods.

[6]  Sarah Depaoli,et al.  Improving Transparency and Replication in Bayesian Statistics: The WAMBS-Checklist , 2017, Psychological methods.

[7]  S. D. Winter,et al.  A Systematic Review of Bayesian Articles in Psychology: The Last 25 Years , 2017, Psychological methods.

[8]  James W. Williams,et al.  Econometrics as evidence? Examining the ‘causal’ connections between financial speculation and commodities prices , 2016, Social studies of science.

[9]  E L Hamaker,et al.  A Comparison of Inverse-Wishart Prior Specifications for Covariance Matrices in Multilevel Autoregressive Models , 2016, Multivariate behavioral research.

[10]  Andreas Ritter,et al.  Structural Equations With Latent Variables , 2016 .

[11]  Daniel M McNeish,et al.  Using Lasso for Predictor Selection and to Assuage Overfitting: A Method Long Overlooked in Behavioral Sciences , 2015, Multivariate behavioral research.

[12]  Bengt Muthén,et al.  Bayesian Structural Equation Modeling With Cross-Loadings and Residual Covariances , 2015 .

[13]  Ellen L Hamaker,et al.  A critique of the cross-lagged panel model. , 2015, Psychological methods.

[14]  M. Zyphur,et al.  Bayesian Estimation and Inference , 2015 .

[15]  Michele Lenza,et al.  Prior Selection for Vector Autoregressions , 2012, Review of Economics and Statistics.

[16]  Fotios Petropoulos,et al.  Golden Rule of Forecasting : Be Conservative , 2015 .

[17]  Robert Fildes,et al.  Simple versus complex forecasting : The evidence , 2015 .

[18]  Lesa Hoffman,et al.  Longitudinal Analysis: Modeling Within-Person Fluctuation and Change , 2014 .

[19]  Vasilis Sarafidis,et al.  Dynamic panel data models , 2013 .

[20]  T. Little Longitudinal Structural Equation Modeling , 2013 .

[21]  Shigehiro Oishi,et al.  Rising income and the subjective well-being of nations. , 2013, Journal of personality and social psychology.

[22]  Fabio Canova,et al.  Panel Vector Autoregressive Models: A Survey , 2013, SSRN Electronic Journal.

[23]  David B. Dunson,et al.  Bayesian data analysis, third edition , 2013 .

[24]  Nancy Cartwright,et al.  Evidence-Based Policy: A Practical Guide to Doing It Better , 2012 .

[25]  Bengt Muthén,et al.  Bayesian structural equation modeling: a more flexible representation of substantive theory. , 2012, Psychological methods.

[26]  John B. Nezlek,et al.  Diary Methods for Social and Personality Psychology , 2012 .

[27]  Dimitris Korobilis,et al.  Hierarchical Shrinkage Priors for Dynamic Regressions with Many Predictors , 2011 .

[28]  John K Kruschke,et al.  Bayesian data analysis. , 2010, Wiley interdisciplinary reviews. Cognitive science.

[29]  Stan Hurn Panel Data Econometrics , 2010 .

[30]  Sy-Miin Chow,et al.  Equivalence and Differences Between Structural Equation Modeling and State-Space Modeling Techniques , 2010 .

[31]  Bengt Muthén,et al.  Bayesian Analysis Using Mplus: Technical Implementation , 2010 .

[32]  B. Muthén Bayesian Analysis In Mplus : A Brief Introduction , 2010 .

[33]  G. Koop,et al.  Bayesian Multivariate Time Series Methods for Empirical Macroeconomics , 2009 .

[34]  E. Diener,et al.  Personality and Subjective Well-Being , 2009 .

[35]  A. Richardson,et al.  A Critique of , 2009 .

[36]  Mark W. Watson,et al.  Forecasting in dynamic factor models subject to structural instability , 2009 .

[37]  Herbert K. H. Lee Bayesian Methods: A Social and Behavioral Sciences Approach , 2008 .

[38]  Siddhartha Chib,et al.  Panel Data Modeling and Inference: A Bayesian Primer , 2008 .

[39]  A. Clark,et al.  Relative Income, Happiness and Utility: An Explanation for the Easterlin Paradox and Other Puzzles , 2007 .

[40]  Fabio Canova,et al.  Methods for Applied Macroeconomic Research , 2007 .

[41]  David B. Dunson,et al.  Bayesian Structural Equation Modeling , 2007 .

[42]  C. Sims,et al.  Were there Regime Switches in U.S. Monetary Policy , 2006 .

[43]  C. Sims,et al.  Were There Regime Switches in U.S. Monetary Policy? , 2004 .

[44]  M. Tribus,et al.  Probability theory: the logic of science , 2003 .

[45]  E. T. Jaynes,et al.  Probability Theory: Author index , 2003 .

[46]  M. Arellano Panel Data Econometrics , 2002 .

[47]  Ian Hacking,et al.  An Introduction to Probability and Inductive Logic: Contents , 2001 .

[48]  R. Easterlin Income and Happiness: Towards a Unified Theory , 2001 .

[49]  I. Hacking An Introduction to Probability and Inductive Logic , 2001 .

[50]  Robert M. Kunst Econometric Forecasting , 2007 .

[51]  C. Sims,et al.  Vector Autoregressions , 1999 .

[52]  R. MacCallum,et al.  Power analysis and determination of sample size for covariance structure modeling. , 1996 .

[53]  Gary Koop,et al.  Parameter uncertainty and impulse response analysis , 1996 .

[54]  R. Easterlin Will raising the incomes of all increase the happiness of all , 1995 .

[55]  J. Stock,et al.  Evidence on Structural Instability in Macroeconomic Time Series Relations , 1994 .

[56]  K. Bollen Structural Equations with Latent Variables: Bollen/Structural Equations with Latent Variables , 1989 .

[57]  C. Howson,et al.  Scientific Reasoning: The Bayesian Approach , 1989 .

[58]  C. Hsiao Analysis of Panel Data , 1989 .

[59]  C. Sims Are forecasting models usable for policy analysis , 1986 .

[60]  James C. Anderson,et al.  The effect of sampling error on convergence, improper solutions, and goodness-of-fit indices for maximum likelihood confirmatory factor analysis , 1984 .

[61]  D. Rubin The Bayesian Bootstrap , 1981 .

[62]  C. Granger Testing for causality: a personal viewpoint , 1980 .

[63]  C. Sims MACROECONOMICS AND REALITY , 1977 .