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A GEOMETRIC APPROACH TO DENSITY ESTIMATION WITH ADDITIVE NOISE

机译:带有附加噪声的密度估计的几何方法

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We introduce and study a method for density estimation under an additive noise model. Our method does not attempt to maximize a likelihood, but rather is purely geometric: heuristically, we L_2-project the observed empirical distribution onto the space of candidate densities that are reachable under the additive noise model. Our estimator reduces to a quadratic program, and so can be computed efficiently. In simulation studies, it roughly matches the accuracy of fully general maximum likelihood estimators at a fraction of the computational cost. We give a theoretical analysis of the estimator and show that it is consistent, attains a quasi-parametric convergence rate under moment conditions, and is robust to model mis-specification. We provide an R implementation of the proposed estimator in the package nlpden.
机译:我们介绍和研究一种在加性噪声模型下进行密度估计的方法。我们的方法不是试图最大化可能性,而是纯粹的几何方法:启发式地,我们将观察到的经验分布L_2投影到在加性噪声模型下可以达到的候选密度空间。我们的估计器简化为二次程序,因此可以高效地进行计算。在仿真研究中,它仅以计算成本的一小部分就可以与完全通用的最大似然估计器的精度大致匹配。我们对估计量进行了理论分析,证明了它是一致的,在矩条件下达到了准参数收敛速度,并且对错误指定建模具有鲁棒性。我们在nlpden包中提供了建议的估算器的R实现。

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