Deconvolution of ℙ ( X < Y ) with unknown error distributions

Master'sLe Thi Hong ThuyCao Xuan Phuong

Faculty of Fundamental Sciences

Research output: Article

researchs.abstract

This paper is devoted to a nonparametric estimation of the probability θ:=P(X<Y), where X, Y are continuous univariate random variables of interest and observed with additional random errors. We focus on the case where the distributions of the random errors are unknown but symmetric around zero and can be estimated from some additional samples. Using deconvolution techniques, we propose an estimator of θ which depends on a regularization parameter. We then establish upper and lower bounds on convergence rate of the estimator under mean squared error when error densities are assumed to be supersmooth.

Overview
Type
Article
Publication year
04 Dec 2020
Original language
English
Published Journal
Communications in Statistics - Theory and Methods
Classification
ISI Indexed
ISSN index
1532-415X
Quartiles
Q3

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