Linear wavelet density estimation for biased data
Beijing Gongye Daxue Xuebao/Journal of Beijing University of Technology(2013)
摘要
To obtain Lp risk convergence rate, for a kind of density which has noise data, the linear wavelet estimator is constructed. In particular, when r≥p, the linear wavelets estimator is simple and the convergence rate is better than nonlinear estimator. In addition, when the bias function g(x)≡1, the model is the case which has no noise, and the convergence rate is optimal and generalizes the result which was gotten.
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关键词
Besov space,Convergence rate,Density function,Wavelet
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