Goodness-of-fit for regime-switching copula models with application to option pricing

CANADIAN JOURNAL OF STATISTICS-REVUE CANADIENNE DE STATISTIQUE(2020)

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摘要
We consider several time series, and for each of them, we fit an appropriate dynamic parametric model. This produces serially independent error terms for each time series. The dependence between these error terms is then modelled by a regime-switching copula. The EM algorithm is used for estimating the parameters and a sequential goodness-of-fit procedure based on Cramer-von Mises statistics is proposed to select the appropriate number of regimes. Numerical experiments are performed to assess the validity of the proposed methodology. As an example of application, we evaluate a European put-on-max option on the returns of two assets. To facilitate the use of our methodology, we have built a R package HMMcopula available on CRAN. The Canadian Journal of Statistics; 2020 (c) 2020 Statistical Society of Canada
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关键词
Copulas,generalized error models,goodness-of-fit,regime-switching models,time series
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