Adaptation for nonparametric estimators of locally stationary processes
classification
🧮 math.ST
stat.TH
keywords
processeslocallymethodsstationaryadaptationestimatorsgeneralnonparametric
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Two adaptive bandwidth selection methods for nonparametric estimators in locally stationary processes are proposed. We investigate a cross validation approach and a method based on contrast minimization and derive asymptotic properties of both methods. The results are applicable for different statistics under a broad setting of locally stationarity including nonlinear processes. At the same time we deepen the general framework for local stationarity based on stationary approximations. For example a general Bernstein inequality is derived for such processes. A simulation study performed on the covariance function and more complicated functionals shows that both adaptation methods work well.
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