Term Structure Estimation in Low-Frequency Transaction Markets: A Kalman Filter Approach with Incomplete Panel-Data

G. Cortazar, Eduardo S. Schwartz, Lorenzo Naranjo
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引用次数: 21

Abstract

There are two issues that are of central importance in term structure analysis. One is the modeling and estimation of the current term structure of spot rates. The second is the modeling and estimation of the dynamics of the term structure. These two issues have been addressed independently in the literature. The methods that have been proposed assume a sufficiently complete price data set and are generally implemented separately. However, when the methods are applied to markets with sparse bond price, results are unsatisfactory. We develop a method for jointly estimating the current term structure and its dynamics for markets with low-frequency transactions. We propose solving both issues by using a dynamic term structure model estimated from incomplete panel data. To achieve this, we modify the standard Kalman filter approach to deal with the missing-observation problem. In this way, we can use historic price data in a dynamic model to estimate the current term structure. With this approach we are able to obtain an estimate of the current term structure even for days with an arbitrary low number of price observations. The proposed methodology can be applied to a broad class of continuous-time term-structure models with any number of stochastic factors. To show the implementation of the approach, we estimate a three-factor generalized-Vasicek model using Chilean government bond price data. The approach, however, may be used in any market with low-frequency transactions, a common characteristic of many emerging markets.
低频交易市场的期限结构估计:不完全面板数据下的卡尔曼滤波方法
在期限结构分析中,有两个问题至关重要。一是对当前即期汇率期限结构的建模和估计。第二部分是对期限结构动态的建模和估计。这两个问题在文献中已经分别得到了解决。所提出的方法假定有足够完整的价格数据集,并且通常单独实施。然而,当该方法应用于债券价格稀疏的市场时,结果并不令人满意。我们开发了一种方法来联合估计当前期限结构及其动态与低频率交易的市场。我们建议使用从不完全面板数据估计的动态期限结构模型来解决这两个问题。为了实现这一点,我们修改了标准卡尔曼滤波方法来处理缺失观测问题。通过这种方式,我们可以在动态模型中使用历史价格数据来估计当前的期限结构。通过这种方法,我们能够获得当前期限结构的估计,即使是在任意低数量的价格观察的日子里。所提出的方法可以应用于具有任意数量随机因素的广泛的连续时间期限结构模型。为了展示该方法的实施,我们使用智利政府债券价格数据估计了一个三因素广义vasicek模型。然而,这种方法可以用于任何低频率交易的市场,这是许多新兴市场的共同特征。
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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