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Akaike-type criteria and the reliability of inference: Model selection versus statistical model specification
Authors:Aris Spanos
Institution:Department of Economics, Virginia Tech, Blacksburg, VA 24061, USA
Abstract:Since the 1990s, the Akaike Information Criterion (AIC) and its various modifications/extensions, including BIC, have found wide applicability in econometrics as objective procedures that can be used to select parsimonious statistical models. The aim of this paper is to argue that these model selection procedures invariably give rise to unreliable inferences, primarily because their choice within a prespecified family of models (a) assumes away the problem of model validation, and (b) ignores the relevant error probabilities. This paper argues for a return to the original statistical model specification problem, as envisaged by Fisher (1922), where the task is understood as one of selecting a statistical model in such a way as to render the particular data a truly typical realization of the stochastic process specified by the model in question. The key to addressing this problem is to replace trading goodness-of-fit against parsimony with statistical adequacy as the sole criterion for when a fitted model accounts for the regularities in the data.
Keywords:Akaike Information Criterion  AIC  BIC  GIC  MDL  Model selection  Model specification  Statistical adequacy  Curve-fitting  Mathematical approximation theory  Simplicity  Least-squares  Gauss linear model  Linear regression model  AR(p)AR(p)" target="_blank">gif" overflow="scroll">AR(p)  Mis-specification testing  Respecification  Double-use of data  Infinite regress and circularity  Pre-test bias  Model averaging  Reliability of inference
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