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Local orthogonal polynomial expansion for density estimation

机译:用于密度估计的局部正交多项式展开

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A local orthogonal polynomial expansion (LOrPE) of the empirical density function is proposed as a novel method to estimate the underlying density. The estimate is constructed by matching localised expectation values of orthogonal polynomials to the values observed in the sample. LOrPE is related to several existing methods, and generalises straightforwardly to multivariate settings. By manner of construction, it is similar to local likelihood density estimation (LLDE). In the limit of small bandwidths, LOrPE functions as kernel density estimation (KDE) with high-order (effective) kernels inherently free of boundary bias, a natural consequence of kernel reshaping to accommodate endpoints. Consistency and faster asymptotic convergence rates follow. In the limit of large bandwidths LOrPE is equivalent to orthogonal series density estimation (OSDE) with Legendre polynomials, thereby inheriting its consistency. We compare the performance of LOrPE to KDE, LLDE, and OSDE, in a number of simulation studies. In terms of mean integrated squared error, the results suggest that with a proper balance of the two tuning parameters, bandwidth and degree, LOrPE generally outperforms these competitors when estimating densities with sharply truncated supports.
机译:提出了经验密度函数的局部正交多项式展开(LOrPE)作为一种估计基础密度的新方法。通过将正交多项式的局部期望值与样本中观察到的值进行匹配来构建估计。 LOrPE与几种现有方法有关,可以直接概括为多变量设置。通过构造的方式,它类似于局部似然密度估计(LLDE)。在小带宽的限制下,LOrPE充当内核密度估计(KDE),而高阶(有效)内核本来就没有边界偏差,这是内核重塑以适应端点的自然结果。随后是一致性和更快的渐近收敛速度。在大带宽的限制下,LOrPE等效于带有勒让德多项式的正交序列密度估计(OSDE),从而继承了其一致性。在许多模拟研究中,我们将LOrPE的性能与KDE,LLDE和OSDE进行了比较。根据平均积分平方误差,结果表明,在带宽和度这两个调整参数之间保持适当的平衡时,LOrPE在用截短的支撑物估算密度时通常胜过这些竞争对手。

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