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Semiparametric multivariate density estimation for positive data using copulas

机译:使用copulas对正数据进行半参数多变量密度估计

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摘要

The estimation of density functions for positive multivariate data is discussed. The proposed approach is semiparametric. The estimator combines gamma kernels or local linear kernels, also called boundary kernels, for the estimation of the marginal densities with parametric copulas to model the dependence. This semiparametric approach is robust both to the well-known boundary bias problem and the curse of dimensionality problem. Mean integrated squared error properties, including the rate of convergence, the uniform strong consistency and the asymptotic normality are derived. A simulation study investigates the finite sample performance of the estimator. The proposed estimator performs very well, also for data without boundary bias problems. For bandwidths choice in practice, the univariate least squares cross validation method for the bandwidth of the marginal density estimators is investigated. Applications in the field of finance are provided.
机译:讨论了正多元数据的密度函数估计。所提出的方法是半参数的。估计器将伽玛核或局部线性核(也称为边界核)组合起来,用参数copula对边际密度进行估计,以对相关性进行建模。这种半参数方法对于众所周知的边界偏差问题和维数问题的诅咒都是鲁棒的。推导了平均积分平方误差特性,包括收敛速度,均匀强一致性和渐近正态性。仿真研究调查了估计量的有限样本性能。所提出的估计器在没有边界偏差问题的数据上也表现出色。对于实际的带宽选择,研究了边际密度估计量带宽的单变量最小二乘交叉验证方法。提供了金融领域的应用。

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