二元Copula密度核估计的R包

T. Nagler
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引用次数: 43

摘要

我们描述了R包kdecopula(当前版本0.9.0),它为copula密度提供了各种内核估计器的快速实现。由于有多种可用的绘图选项,它对于依赖性结构的探索性分析特别有用。它可以进一步用于精确的非参数估计耦合密度和重采样。该实现的特征是估计的样条插值,以允许快速评估密度估计及其积分。我们将其用于快速重整化方案,以确保估计是真实的联结密度,并进一步提高估计器的准确性。仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
kdecopula: An R Package for the Kernel Estimation of Bivariate Copula Densities
We describe the R package kdecopula (current version 0.9.0), which provides fast implementations of various kernel estimators for the copula density. Due to a variety of available plotting options it is particularly useful for the exploratory analysis of dependence structures. It can be further used for accurate nonparametric estimation of copula densities and resampling. The implementation features spline interpolation of the estimates to allow for fast evaluation of density estimates and integrals thereof. We utilize this for a fast renormalization scheme that ensures that estimates are bona fide copula densities and additionally improves the estimators' accuracy. The performance of the methods is illustrated by simulations.
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