Analyzing Commodity Futures Using Factor State-Space Models with Wishart Stochastic Volatility

T. S. Kleppe, R. Liesenfeld, G. V. Moura, Atle Oglend
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引用次数: 1

Abstract

We propose a factor state-space approach with stochastic volatility to model and forecast the term structure of future contracts on commodities. Our approach builds upon the dynamic 3-factor Nelson-Siegel model and its 4-factor Svensson extension and assumes for the latent level, slope and curvature factors a Gaussian vector autoregression with a multivariate Wishart stochastic volatility process. Exploiting the conjugacy of the Wishart and the Gaussian distribution, we develop a computationally fast and easy to implement MCMC algorithm for the Bayesian posterior analysis. An empirical application to daily prices for contracts on crude oil with stipulated delivery dates ranging from one to 24 months ahead show that the estimated 4-factor Svensson model with two curvature factors provides a good parsimonious representation of the serial correlation in the individual prices and their volatility. It also shows that this model has a good out-of-sample forecast performance.
基于Wishart随机波动的因子状态空间模型分析商品期货
我们提出了一种随机波动的因子状态空间方法来建模和预测期货合约的期限结构。我们的方法建立在动态3因素Nelson-Siegel模型及其4因素Svensson扩展的基础上,并假设潜在水平、斜率和曲率因素是一个具有多元Wishart随机波动过程的高斯向量自回归。利用Wishart和高斯分布的共轭性,提出了一种计算速度快、易于实现的MCMC算法。对原油合约日价格的实证应用表明,估计的具有两个曲率因子的4因素Svensson模型可以很好地描述单个价格及其波动率的序列相关性。该模型具有良好的样本外预测性能。
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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