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Likelihood inference for dynamic linear models with Markov switching parameters: on the efficiency of the Kim filter

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  • Young Min Kim
  • Kyu Ho Kang

Abstract

The Kim filter (KF) approximation is widely used for the likelihood calculation of dynamic linear models with Markov regime-switching parameters. However, despite its popularity, its approximation error has not yet been examined rigorously. Therefore, this study investigates the reliability of the KF approximation for maximum likelihood (ML) and Bayesian estimations. To measure the approximation error, we compare the outcomes of the KF method with those of the auxiliary particle filter (APF). The APF is a numerical method that requires a longer computing time, but its numerical error can be sufficiently minimized by increasing simulation size. According to our extensive simulation and empirical studies, the likelihood values obtained from the KF approximation are practically identical to those of the APF. Furthermore, we show that the KF method is reliable, particularly when regimes are persistent and sample size is small. From the Bayesian perspective, we show that the KF method improves the efficiency of posterior simulation. This study contributes to the literature by providing evidence to justify the use of the KF method in both ML and Bayesian estimations.

Suggested Citation

  • Young Min Kim & Kyu Ho Kang, 2019. "Likelihood inference for dynamic linear models with Markov switching parameters: on the efficiency of the Kim filter," Econometric Reviews, Taylor & Francis Journals, vol. 38(10), pages 1109-1130, November.
  • Handle: RePEc:taf:emetrv:v:38:y:2019:i:10:p:1109-1130
    DOI: 10.1080/07474938.2018.1514027
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    Cited by:

    1. Siddhartha Chib & Minchul Shin & Fei Tan, 2020. "High-Dimensional DSGE Models: Pointers on Prior, Estimation, Comparison, and Prediction∗," Working Papers 20-35, Federal Reserve Bank of Philadelphia.
    2. Siddhartha Chib & Minchul Shin & Fei Tan, 2023. "DSGE-SVt: An Econometric Toolkit for High-Dimensional DSGE Models with SV and t Errors," Computational Economics, Springer;Society for Computational Economics, vol. 61(1), pages 69-111, January.

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