Speaker
Dr. Dimitrios Bagkavos, Department of Mathematics, University of Ioannina
Title
Virtual Statistics Seminar Series
Subtitle
Fixed design local polynomial smoothing and bandwidth selection for right censored data
Digital Location
https://msstate.webex.com/msstate/e.php?MTID=m07d8a6ed5604f0ce184569b02a933f1f
Abstract: The local polynomial smoothing of the Kaplan–Meier estimate for fixed designs is explored and analyzed. The first benefit, in comparison to classical convolution kernel smoothing, is the development of boundary aware estimates of the distribution function, its derivatives and integrated derivative products of any arbitrary order. The advancements proceed by developing asymptotic mean integrated square error optimal solve-the-equation plug-in bandwidth selectors for the estimates of the distribution function and its derivatives, and as a byproduct, a mean square error optimal bandwidth rule for integrated derivative products. The asymptotic properties of all methodological contributions are quantified analytically and discussed in detail. Finally, numerical evidence is provided on the finite sample performance of the proposed technique with reference to benchmark estimates.