EM Algorithm for Markov Chains Observed Via Gaussian Noise and Point Process Information: Theory and Case Studies

34 Pages Posted: 11 Jul 2017

See all articles by Camilla Damian

Camilla Damian

Vienna University of Economics and Business

Zehra Eksi

Vienna University of Economics and Business, Institute for Statistics and Mathematics

Rüdiger Frey

Vienna University of Economics and Business

Date Written: July 5, 2017

Abstract

In this paper we study parameter estimation via the Expectation Maximization (EM) algorithm for a continuous-time hidden Markov model with diffusion and point process observation. Inference problems of this type arise for instance in credit risk modelling. A key step in the application of the EM algorithm is the derivation of finite-dimensional filters for the quantities that are needed in the E-step of the algorithm. In this context we obtain exact, unnormalized and robust filters, and we discuss their numerical implementation. Moreover, we propose several goodness-of-fit tests for hidden Markov models with Gaussian noise and point process observation. We run an extensive simulation study to test speed and accuracy of our methodology. The paper closes with an application to credit risk: we estimate the parameters of a hidden Markov model for credit quality where the observations consist of rating transitions and credit spreads for US corporations.

Keywords: Expectation maximization (EM) Algorithm, hidden Markov models, point processes, non-linear filtering, goodness-of-fit tests, credit risk ratings

JEL Classification: C13, C58

Suggested Citation

Damian, Camilla and Eksi, Zehra and Frey, Rüdiger, EM Algorithm for Markov Chains Observed Via Gaussian Noise and Point Process Information: Theory and Case Studies (July 5, 2017). Available at SSRN: https://ssrn.com/abstract=2997479 or http://dx.doi.org/10.2139/ssrn.2997479

Camilla Damian

Vienna University of Economics and Business ( email )

Welthandelsplatz 1
Vienna, Wien 1020
Austria

Zehra Eksi (Contact Author)

Vienna University of Economics and Business, Institute for Statistics and Mathematics ( email )

Welthandelsplatz 1
Building D4, 4th floor
Vienna, 1020
Austria

Rüdiger Frey

Vienna University of Economics and Business ( email )

Welthandelsplatz 1
Vienna, Wien 1020
Austria

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