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Fast adaptive estimation of log-additive exponential models in Kullback-Leibler divergence

机译:Kullback-Leibler散度中对数加法指数模型的快速自适应估计

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We study the problem of nonparametric estimation of probability density functions (pdf) with a product form on the domain $riangle ={(x_{1},ldots ,x_{d})in{mathbb{R}} ^{d},0leq x_{1}leq dotsleq x_{d}leq 1}$. Such pdf’s appear in the random truncation model as the joint pdf of the observations. They are also obtained as maximum entropy distributions of order statistics with given marginals. We propose an estimation method based on the approximation of the logarithm of the density by a carefully chosen family of basis functions. We show that the method achieves a fast convergence rate in probability with respect to the Kullback-Leibler divergence for pdf’s whose logarithm belong to a Sobolev function class with known regularity. In the case when the regularity is unknown, we propose an estimation procedure using convex aggregation of the log-densities to obtain adaptability. The performance of this method is illustrated in a simulation study.
机译:我们研究域$ triangle = {(x_ {1}, ldots,x_ {d}) in { mathbb {R}}中的乘积形式的概率密度函数(pdf)的非参数估计问题^ {d},0 leq x_ {1} leq dots leq x_ {d} leq 1 } $。此类pdf在随机截断模型中显示为观测值的联合pdf。它们还获得为具有给定边际的阶次统计量的最大熵分布。我们提出了一种基于精心选择的基函数族的密度对数近似值的估计方法。我们表明,对于对数属于已知正则性的Sobolev函数类的pdf,该方法相对于Kullback-Leibler散度实现了快速的收敛速度。在规则性未知的情况下,我们提出了一种使用对数密度的凸聚合来获得适应性的估计程序。仿真研究说明了该方法的性能。

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