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Adaptive density estimation based on real and artificial data

机译:基于真实和人工数据的自适应密度估计

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摘要

Let X, X-1, X-2, horizontal ellipsis be independent and identically distributed Double-struck capital R-d-valued random variables and let m:Double-struck capital R-d -> Double-struck capital R be a measurable function such that a density f of Y=m(X) exists. The problem of estimating f based on a sample of the distribution of (X,Y) and on additional independent observations of X is considered. Two kernel density estimates are compared: the standard kernel density estimate based on the y-values of the sample of (X,Y), and a kernel density estimate based on artificially generated y-values corresponding to the additional observations of X. It is shown that under suitable smoothness assumptions on f and m the rate of convergence of the L-1 error of the latter estimate is better than that of the standard kernel density estimate. Furthermore, a density estimate defined as convex combination of these two estimates is considered and a data-driven choice of its parameters (bandwidths and weight of the convex combination) is proposed and analysed.
机译:令X,X-1,X-2,水平省略号是独立且均等分布的Double-struck大写Rd值随机变量,并令m:Double-struck大写Rd-> Double-struck大写R为可测量的函数,使得存在Y = m(X)的密度f。考虑了基于(X,Y)分布样本和X的其他独立观测值估算f的问题。比较了两个核密度估计:基于(X,Y)样本的y值的标准核密度估计和基于与X的其他观察值对应的人工生成的y值的核密度估计。结果表明,在f和m的适当光滑度假设下,后一种估计的L-1误差的收敛速度要好于标准核密度估计的收敛速度。此外,考虑了定义为这两个估计的凸组合的密度估计,并提出并分析了其参数(凸组合的带宽和权重)的数据驱动选择。

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