The tail empirical process of regularly varying functions of geometrically ergodic Markov chains
classification
🧮 math.ST
stat.TH
keywords
conditionsdriftergodicgeometricgeometricallymarkovmodelsregularly
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We consider a stationary regularly varying time series which can be expressedas a function of a geometrically ergodic Markov chain. We obtain practical conditionsfor the weak convergence of the tail array sums and feasible estimators ofcluster statistics. These conditions include the so-called geometric drift or Foster-Lyapunovcondition and can be easily checked for most usual time series models witha Markovian structure. We illustrate these conditions on several models and statisticalapplications. A counterexample is given to show a different limiting behaviorwhen the geometric drift condition is not fulfilled.
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