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Direct Density-Ratio Estimation with Dimensionality Reduction via Hetero-Distributional Subspace Analysis

机译:通过异分布子空间分析的降维直接密度比估计

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摘要

Methods for estimating the ratio of two probability density functions have been actively explored recently since they can be used for various data processing tasks such as non-stationarity adaptation, outlier detection, feature selection, and conditional probability estimation. In this paper, we propose a new density-ratio estimator which incorporates dimensionality reduction into the density-ratio estimation procedure. Through experiments, the proposed method is shown to compare favorably with existing density-ratio estimators in terms of both accuracy and computational costs.
机译:由于可以将两个概率密度函数用于各种数据处理任务,例如非平稳性自适应,离群值检测,特征选择和条件概率估计,因此,最近已经积极探索了估计两个概率密度函数的比率的方法。在本文中,我们提出了一种新的密度比估计器,该方法将降维纳入了密度比估计过程。通过实验,该方法在准确性和计算成本上均可以与现有的密度比估计器进行比较。

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