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An efficient nonparametric estimator for models with nonlinear dependence

机译:具有非线性相关性模型的有效非参数估计器

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We provide a convenient econometric framework for the analysis of nonlinear dependence in financial applications. We introduce models with constrained nonparametric dependence, which specify the conditional distribution or the copula in terms of a one-dimensional functional parameter. Our approach is intermediate between standard parametric specifications (which are in general too restrictive) and the fully unrestricted approach (which suffers from the curse of dimensionality). We introduce a nonparametric estimator defined by minimizing a chi-square distance between the constrained densities in the family and an unconstrained kernel estimator of the density. We derive the nonparametric efficiency bound for linear forms and show that the minimum chi-square estimator is nonparametrically efficient for linear forms.
机译:我们为分析金融应用中的非线性依赖性提供了一个方便的计量经济学框架。我们介绍具有约束非参数依赖性的模型,该模型根据一维功能参数指定条件分布或copula。我们的方法介于标准参数规范(通常过于严格)和完全不受限制的方法(遭受尺寸诅咒)之间。我们引入了一个非参数估计器,该估计器是通过最小化族中约束密度与密度的无约束核估计量之间的卡方距离来定义的。我们推导了线性形式的非参数效率边界,并表明最小卡方估计量对于线性形式是非参数效率。

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