Sequential monitoring of the tail behavior of dependent data
Quantile
Tail dependence
DOI:
10.1016/j.jspi.2016.08.010
Publication Date:
2016-11-02T01:16:26Z
AUTHORS (2)
ABSTRACT
We construct a sequential monitoring procedure for changes in the tail index and extreme quantiles of ß-mixing random variables, which can be based on a large class of tail index estimators. The assumptions on the data are general enough to be satisfied in a wide range of applications. In a simulation study empirical sizes and power of the proposed tests are studied for linear and non-linear time series. Finally, we use our results to monitor Bank of America stock log-losses from 2007 to 2012 and detect changes in extreme quantiles without an accompanying detection of a tail index break.<br/>Discussion Paper / SFB 823;41/2015<br/>
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