Modelling Portfolio Defaults Using Hidden Markov Models with Covariates |
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Authors: | Konrad Banachewicz André Lucas Aad Van Der Vaart |
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Affiliation: | 1. VU University Amsterdam, Mathematics Department, De Boelelaan 1081, 1081HV Amsterdam, The Netherlandspt E‐mail: konradb@few.vu.nl;2. VU University Amsterdam, Finance Department and Tinbergen Institute De Boelelaan 1105, 1081HV Amsterdam, The Netherlands |
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Abstract: | Summary We extend the hidden Markov Model for defaults of Crowder et al. (2005, Quantitative Finance 5, 27–34) to include covariates. The covariates enhance the prediction of transition probabilities from high to low default regimes. To estimate the model, we extend the EM estimating equations to account for the time varying nature of the conditional likelihoods due to sample attrition and extension. Using empirical U.S. default data, we find that GDP growth, the term structure of interest rates and stock market returns impact the state transition probabilities. The impact, however, is not uniform across industries. We only find a weak correspondence between industry credit cycle dynamics and general business cycles. |
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Keywords: | defaults Markov switching default regimes EM algorithm covariates |
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