An Infinite Hidden Markov Model for Short-term Interest Rates

J. Maheu, Qiao Yang
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引用次数: 26

Abstract

The time-series dynamics of short-term interest rates are important as they are a key input into pricing models of the term structure of interest rates. In this paper we extend popular discrete time short-rate models to include Markov switching of infinite dimension. This is a Bayesian nonparametric model that allows for changes in the unknown conditional distribution over time. Applied to weekly U.S. data we find significant parameter change over time and strong evidence of non-Gaussian conditional distributions. Our new model with a hierarchical prior provides significant improvements in density forecasts as well as point forecasts. We find evidence of recurring regimes as well as structural breaks in the empirical application.
短期利率的无限隐马尔可夫模型
短期利率的时间序列动态很重要,因为它们是利率期限结构定价模型的关键输入。本文扩展了流行的离散时间短速率模型,使其包含无限维的马尔可夫切换。这是一个贝叶斯非参数模型,它允许未知条件分布随时间的变化。应用于每周的美国数据,我们发现参数随时间的显著变化和非高斯条件分布的有力证据。我们的新模型具有层次先验,在密度预测和点预测方面提供了显著的改进。我们在经验应用中发现了反复出现的制度以及结构性断裂的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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