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Kernel Method Starting with Half-Normal Detection Function for Line Transect Density Estimation

机译:从半正常检测功能开始的内核方法,用于线路横断面估计

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摘要

In this article, we introduce the nonparametric kernel method starting with half-normal detection function using line transect sampling. The new method improves bias from O(h~2), as the smoothing parameter h → 0, to O(h~3) and in some cases to O(h~4). Properties of the proposed estimator are derived and an expression for the asymptotic mean square error (AMSE) of the estimator is given. Minimization of the AMSE leads to an explicit formula for an optimal choice of the smoothing parameter. Small-sample properties of the estimator are investigated and compared with the traditional kernel estimator by using simulation technique. A numerical results show that improvements over the traditional kernel estimator often can be realized even when the true detection function is far from the half-normal detection function.
机译:在本文中,我们使用线路横断采样介绍了以半正常检测功能开头的非参数内核方法。新方法改善了从O(H〜2)的偏差,作为平滑参数H→0,到O(H〜3),在某些情况下为O(H〜4)。推导出建议估计器的特性,给出了估计器的渐近均方误差(AMSE)的表达。最小化AMSE导致明确的公式以获得平滑参数的最佳选择。通过使用仿真技术,研究了估计器的小样本性质,并与传统的内核估计进行比较。数值结果表明,即使真正的检测函数远离半正常检测功能,通常也可以实现传统内核估计器上的改进。

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