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在重尾状态空间模型中引入收缩以预测股票超额回报。

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

作者信息

Huber Florian, Kastner Gregor, Pfarrhofer Michael

机构信息

Department of Economics, University of Salzburg, Salzburg, Austria.

Department of Statistics, University of Klagenfurt, Universitätsstraße 65-67, 9020 Klagenfurt, Austria.

出版信息

Empir Econ. 2025;68(2):535-553. doi: 10.1007/s00181-023-02437-3. Epub 2023 May 29.

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.

摘要

我们使用一个具有多层次非高斯特征的灵活贝叶斯计量经济状态空间模型来预测标准普尔500指数的超额回报。更确切地说,我们通过对状态创新方差以及状态空间模型的时不变部分采用全局-局部收缩先验来控制过度参数化。收缩先验由重尾状态创新补充,即使引入的收缩程度很高,这些重尾状态创新也能应对潜在的潜在状态大突变。此外,我们在观测方程中允许存在尖峰厚尾随机波动率。实证结果表明,所提出方法的几种变体在点预测和密度预测方面均优于文献中常用的典型竞争对手。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d22d/11794411/a85690bc3414/181_2023_2437_Fig3_HTML.jpg

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