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arxiv: 1605.00015 · v1 · pith:XY7DTVJOnew · submitted 2016-04-29 · 📊 stat.ME

Nonparametric M-estimation for right censored regression model with stationary ergodic data

classification 📊 stat.ME
keywords dataergodicregressionstationarycensoredestimatorm-estimationmodel
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The present paper deals with a nonparametric M-estimation for right censored regression model with stationary ergodic data. Defined as an implicit function, a kernel type estimator of a family of robust regression is considered when the covariate take its values in R^d (d >= 1) and the data are sampled from stationary ergodic process. The strong consistency (with rate) and the asymptotic distribution of the estimator are established under mild assumptions. Moreover, a usable confidence interval is provided which does not depend on any unknown quantity. Our results hold without any mixing condition and do not require the existence of marginal densities. A comparison study based on simulated data is also provided.

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