Abstract
Let $X_1, X_2,\cdots$ be $R^p$-valued random variables having unknown density function $f$. If $K$ is a density on the unit sphere in $R^p, \{k(n)\}$ a sequence of positive integers such that $k(n) \rightarrow \infty$ and $k(n) = o(n)$, and $R(k, z)$ is the distance from a point $z$ to the $k(n)$th nearest of $X_1,\cdots, X_n$, then $f_n(z) = (nR(k, z)^p)^{-1} \sum K((z - X_i)/R(k, z))$ is a nearest neighbor estimator of $f(z).$ When $K$ is the uniform kernel, $f_n$ is an estimator proposed by Loftsgaarden and Quesenberry. The estimator $f_n$ is analogous to the well-known class of Parzen-Rosenblatt bandwidth estimators of $f(z)$. It is shown that, roughly stated, any consistency theorem true for the bandwidth estimator using kernel $K$ and also true for the uniform kernel bandwidth estimator remains true for $f_n$. In this manner results on weak and strong consistency, pointwise and uniform, are obtained for nearest neighbor density function estimators.
Citation
David S. Moore. James W. Yackel. "Consistency Properties of Nearest Neighbor Density Function Estimators." Ann. Statist. 5 (1) 143 - 154, January, 1977. https://doi.org/10.1214/aos/1176343747
Information