Adaptive wavelet based estimator of the memory parameter for stationary Gaussian processes
classification
🧮 math.ST
stat.TH
keywords
estimatormemoryparameteradaptivegaussianprocessesstationaryattested
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This work is intended as a contribution to a wavelet-based adaptive estimator of the memory parameter in the classical semi-parametric framework for Gaussian stationary processes. In particular we introduce and develop the choice of a data-driven optimal bandwidth. Moreover, we establish a central limit theorem for the estimator of the memory parameter with the minimax rate of convergence (up to a logarithm factor). The quality of the estimators are attested by simulations.
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