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Introducing shrinkage in heavy-tailed state space models to predict equity excess returns

  • Florian Huber
  • , Gregor Kastner (Corresponding author)
  • , Michael Pfarrhofer

Publications: Contribution to journalArticlePeer Reviewed

Abstract

We forecast excess returns of the S &P 500 index using a flexible Bayesian econometric state space model with non-Gaussian features at several levels. More precisely, we control for overparameterization via global–local shrinkage priors on the state innovation variances as well as the time-invariant part of the state space model. The shrinkage priors are complemented by heavy tailed state innovations that cater for potential large breaks in the latent states, even if the degree of shrinkage introduced is high. Moreover, we allow for leptokurtic stochastic volatility in the observation equation. The empirical findings indicate that several variants of the proposed approach outperform typical competitors frequently used in the literature, both in terms of point and density forecasts.

Original languageEnglish
Pages (from-to)535-553
Number of pages19
JournalEmpirical Economics: a quarterly journal of the Institute for Advanced Studies, Vienna
Volume68
Issue number2
Early online date29 May 2023
DOIs
Publication statusPublished - Feb 2025

Austrian Fields of Science 2012

  • 502025 Econometrics
  • 502051 Economic statistics

Keywords

  • Dynamic regression
  • Fundamental factors
  • Non-Gaussian models
  • S & P 500
  • Stochastic volatility

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