Abstract:
We consider the problem of constructing an estimate of the signal function using the method of hybrid threshold processing of wavelet expansion coefficients. Hybrid threshold processing is a compromise between soft and hard threshold processing, which combines the main advantages of these two methods. In the data model with an additive noise, an unbiased estimate of the mean-square risk is analyzed and it is shown that under certain conditions this estimate is strongly consistent and asymptotically normal. These properties allow to use the risk estimate as a criterion for the quality of a method and to construct asymptotic confidence intervals for the theoretical mean-square risk.