The paper supplies practical instructions and real-data examples for using the ExtremalDep R package to model extremal dependence in multivariate and spatial settings.
Estimating Extremal Dependence in Univariate and Multivariate Time Series via the Extremogram
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abstract
Davis and Mikosch [7] introduced the extremogram as a flexible quantitative tool for measuring various types of extremal dependence in a stationary time series. There we showed some standard statistical properties of the sample extremogram. A major difficulty was the construction of credible confidence bands for the extremogram. In this paper, we employ the stationary bootstrap to overcome this problem. Moreover, we introduce the cross extremogram as a measure of extremal serial dependence between two or more time series. We also study the extremogram for return times between extremal events. The use of the stationary bootstrap for the extremogram and the resulting interpretations are illustrated in several univariate and multivariate financial time series examples.
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stat.ME 1years
2024 1verdicts
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Modeling extremal dependence in multivariate and spatial problems: a practical perspective
The paper supplies practical instructions and real-data examples for using the ExtremalDep R package to model extremal dependence in multivariate and spatial settings.