Working Papers 2003 – Abstracts
Simulation-Based Bayesian Estimation of Affine Term Structure Models
Andrew D. Sanford and Gael M. Martin
This paper demonstrates the application of Bayesian simulation-based
estimation to a class of interest rate models known as Affine Term Structure
(ATS) models. The technique used is based on a Markov Chain Monte Carlo
algorithm, with the discrete observations on yields augmented by additional
higher frequency latent data. The introduction of augmented yield data
reduces the bias associated with estimating a continuous time model using
discretely observed data. The technique is demon-strated using a one-factor
ATS model, with the latent factor process that underlies the yields sampled
via a single-move algorithm. Numerical application of the method is demonstrated
using both simulated and empirical data. Extension of the method to a
three-factor ATS model is also discussed, as well as the application of
a multi-move sampler based on a Kalman Filtering and Smoothing algorithm.
Keywords: Interest Rate Models, Markov Chain Monte Carlo, Data
Augmentation, Nonlinear State Space Models, Kalman Filtering.
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