2020
DOI: 10.48550/arxiv.2008.00747
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Testing error distribution by kernelized Stein discrepancy in multivariate time series models

Abstract: Knowing the error distribution is important in many multivariate time series applications. To alleviate the risk of error distribution mis-specification, testing methodologies are needed to detect whether the chosen error distribution is correct. However, the majority of the existing tests only deal with the multivariate normal distribution for some special multivariate time series models, and they thus can not be used to testing for the often observed heavy-tailed and skewed error distributions in application… Show more

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