On tail behavior of nonlinear autoregressive functional conditional heteroscedastic model with heavy-tailed innovations

被引:0
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作者
Jiazhu Pan
Guangxu Wu
机构
[1] Peking University,LMAM and School of Mathematical Sciences
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关键词
tail probability; stationary distribution; nonlinear AR model; nonlinear autoregressive functional conditional heteroscedastic model; heavy-tailed distribution;
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摘要
We study the tail probability of the stationary distribution of nonparametric nonlinear autoregressive functional conditional heteroscedastic (NARFCH) model with heavy-tailed innovations. Our result shows that the tail of the stationary marginal distribution of an NARFCH series is heavily dependent on its conditional variance. When the innovations are heavy-tailed, the tail of the stationary marginal distribution of the series will become heavier or thinner than that of its innovations. We give some specific formulas to show how the increment or decrement of tail heaviness depends on the assumption on the conditional variance function. Some examples are given.
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页码:1169 / 1181
页数:12
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