Estimating Discrete-Time Gaussian Term Structure Models in Canonical Companion Form

Juliusz F. Radwanski
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Abstract

This article formally introduces a convenient parametrization for the popular class of discrete-time essentially-affine term structure models in the spirit of Duffee (2002), and Ang and Piazzesi (2003). First, I show that if the term structure is spanned by N_f latent state variables, all pricing information must also be contained in N_f shortest-maturity forward rates. Every no-arbitrage model of the type studied is therefore observationally equivalent to a unique canonical model in which these forward rates act as factors. Second, the risk-neutral transition matrix of the canonical model is conveniently parametrized by N_f unrestricted real numbers, and the risk neutral drift is a function of factor covariance matrix, plus one extra parameter. Third, although it may appear restrictive to specify the shortest-maturity forward rates as factors, the model can be estimated using all information in observed bond prices, either by Kalman filter, or assuming perfect observability of certain combinations of yields. Monte-Carlo evidence suggests that both approaches lead to similar out-of-sample forecasting performance in artificial data sets. Finally, by using unique insights offered by the canonical companion form, I discuss some difficulties in fitting term structure models of the essentially-affine class to the standard set of Fama-Bliss discount bonds. The problems stem from the existence of factors seemingly inconsistent with the assumption of no arbitrage. This discussion may have implications for interpreting the evidence of bond return predictability, and for the question of whether imposing no arbitrage can improve yield forecasts.
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离散时间高斯期限结构模型的正则伴形估计
本文本着Duffee(2002)和Ang和Piazzesi(2003)的精神,正式介绍了一种方便的离散时间本质仿射期限结构模型的参数化方法。首先,我证明了如果期限结构由N_f个潜在状态变量跨越,那么所有的定价信息也必须包含在N_f个最短期限远期利率中。因此,所研究的每一种无套利模型在观察上都等同于一个独特的规范模型,其中这些远期利率作为因素。其次,将典型模型的风险中性转移矩阵方便地用N_f无限制实数参数化,风险中性漂移是因子协方差矩阵加上一个额外参数的函数。第三,虽然指定期限最短的远期利率作为因素可能显得有些限制,但该模型可以使用观察到的债券价格中的所有信息进行估计,要么通过卡尔曼滤波,要么假设某些收益率组合的完全可观察性。蒙特卡罗证据表明,这两种方法在人工数据集中的样本外预测性能相似。最后,通过使用标准伴随形式提供的独特见解,我讨论了将本质仿射类的期限结构模型拟合到Fama-Bliss贴现债券标准集的一些困难。问题的根源在于一些看似与无套利假设不一致的因素的存在。这一讨论可能对解释债券回报可预测性的证据,以及不实施套利是否能改善收益率预测的问题产生影响。
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