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Statistical analysis of kernel-based least-squares density-ratio estimation

机译:基于核的最小二乘密度比估计值的统计分析

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摘要

The ratio of two probability densities can be used for solving various machine learning tasks such as covariate shift adaptation (importance sampling), outlier detection (likelihood-ratio test), feature selection (mutual information), and conditional probability estimation. Several methods of directly estimating the density ratio have recently been developed, e.g., moment matching estimation, maximum-likelihood density-ratio estimation, and least-squares density-ratio fitting. In this paper, we propose a kernelized variant of the least-squares method for density-ratio estimation, which is called kernel unconstrained leastsquares importance fitting (KuLSIF). We investigate its fundamental statistical properties including a non-parametric convergence rate, an analytic-form solution, and a leave-oneout cross-validation score. We further study its relation to other kernel-based density-ratio estimators. In experiments, we numerically compare various kernel-based density-ratio estimation methods, and show that KuLSIF compares favorably with other approaches.
机译:两种概率密度的比率可用于解决各种机器学习任务,例如协变量移位自适应(重要性采样),离群值检测(似然比检验),特征选择(互信息)和条件概率估计。最近已经开发了几种直接估计密度比的方法,例如矩匹配估计,最大似然密度比估计和最小二乘密度比拟合。在本文中,我们提出了一种用于密度比估计的最小二乘法的核化变体,称为核无约束最小二乘重要性拟合(KuLSIF)。我们调查了其基本统计属性,包括非参数收敛率,解析形式的解决方案和留一法交叉验证得分。我们进一步研究了它与其他基于核的密度比估计量的关系。在实验中,我们在数值上比较了各种基于核的密度比估计方法,并表明KuLSIF与其他​​方法相比具有优势。

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