Local non-stationarity test in mean for Markov switching GARCH models: an approximate Bayesian approach |
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Authors: | Cathy W. S. Chen Sangyeol Lee Shu-Yu Chen |
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Affiliation: | 1.Department of Statistics,Feng Chia University,Taichung,Taiwan;2.Department of Statistics,Seoul National University,Seoul,Korea |
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Abstract: | In order to exploit mean-reverting behavior among the price differential between two markets, one can use unit root tests to determine which pairs of assets appear to exhibit mean-reverting behavior. Since nonlinear mean reversion shares the same meaning as local stationarity, this paper proposes a Bayesian hypothesis testing to detect the presence of a local unit root in the mean equation using Markov switching GARCH models. This model incorporates a fat-tailed error distribution to analyze asymmetric effects on both the conditional mean and conditional volatility of financial time series. To implement the test, we propose a numerical approximation of the marginal likelihoods to posterior odds by using an adaptive Markov Chain Monte Carlo scheme. Our simulation study demonstrates that the approximate Bayesian test performs properly. The proposed method utilizes the daily basis between the FTSE 100 Index and Index Futures as an illustration. |
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