Sieve bootstrap monitoring persistence change in long memory process
STATISTICS AND ITS INTERFACE(2016)
摘要
This paper adopts a moving ratio statistic to monitor persistence change in long memory process. The limiting distribution of monitoring statistic under the stationary long memory null hypothesis is derived. We show that the proposed monitoring scheme is consistent for stationary to non-stationary change. In particular, a sieve bootstrap approximation method is proposed. The sieve bootstrap method is used to determine the critical values for the null distribution of monitoring statistic which depends on unknown long memory parameter. The empirical size, power and average run length of the proposed monitoring procedure are evaluated in a simulation study. Simulations indicate that the new monitoring procedure performs well in finite samples. Finally, we illustrate our monitoring procedure using a set of foreign exchange rate data.
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关键词
Change in persistence,Long memory process,Sieve bootstrap,Monitoring
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