Smoothing Spline Regression Estimates for Randomly Right Censored Data
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On the Asymptotic Theory of
For regression analysis, some useful information may have been lost when the responses are right censored. To estimate nonparametric functions, several estimates based on censored data have been proposed and their consistency and convergence rates have been studied in the literature, but the optimal rates of global convergence have not been obtained yet. Because of the possible information loss...
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تاریخ انتشار 2013