Journal
JOURNAL OF ECONOMETRICS
Volume 177, Issue 2, Pages 357-373Publisher
ELSEVIER SCIENCE SA
DOI: 10.1016/j.jeconom.2013.04.017
Keywords
Subset regression; Forecast combination; Shrinkage
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This paper proposes a new method for combining forecasts based on complete subset regressions. For a given set of potential predictor variables we combine forecasts from all possible linear regression models that keep the number of predictors fixed. We explore how the choice of model complexity, as measured by the number of included predictor variables, can be used to trade off the bias and variance of the forecast errors, generating a setup akin to the efficient frontier known from modern portfolio theory. In an application to predictability of stock returns, we find that combinations of subset regressions can produce more accurate forecasts than conventional approaches based on equal-weighted forecasts (which fail to account for the dimensionality of the underlying models), combinations of univariate forecasts, or forecasts generated by methods such as bagging, ridge regression or Bayesian Model Averaging. (C) 2013 Elsevier B.V. All rights reserved.
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