On kernel mode estimation under RLT and WOD model
Abstract
Let (XN)N≥ 1 denote a sequence of real random variables and let be the mode of the random variable of interest X. In this paper, we study the kernel mode estimator (say) n when the data are widely orthant dependent (WOD) and subject to Random Left Truncation (RLT) mechanism. We establish the uniform consistency rate of the density estimator (say) fn of the underlying density f as well as the almost sure convergence rate of n. The performance of the estimators are illustrated via some simulation studies and applied on a real dataset of car brake pads.
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