Inlier-Based Outlier Detection via Direct Density Ratio Estimation

Shohei Hido, Yuta Tsuboi, H. Kashima, Masashi Sugiyama, T. Kanamori
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引用次数: 81

Abstract

We propose a new statistical approach to the problem of inlier-based outlier detection, i.e.,finding outliers in the test set based on the training set consisting only of inliers. Our key idea is to use the ratio of training and test data densities as an outlier score; we estimate the ratio directly in a semi-parametric fashion without going through density estimation. Thus our approach is expected to have better performance in high-dimensional problems. Furthermore, the applied algorithm for density ratio estimation is equipped with a natural cross-validation procedure, allowing us to objectively optimize the value of tuning parameters such as the regularization parameter and the kernel width. The algorithm offers a closed-form solution as well as a closed-form formula for the leave-one-out error. Thanks to this, the proposed outlier detection method is computationally very efficient and is scalable to massive datasets. Simulations with benchmark and real-world datasets illustrate the usefulness of the proposed approach.
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基于直接密度比估计的内线离群点检测
我们提出了一种新的统计方法来解决基于内线的离群点检测问题,即基于仅由内线组成的训练集在测试集中发现离群点。我们的关键思想是使用训练和测试数据密度的比率作为离群值;我们以半参数方式直接估计比率,而不经过密度估计。因此,我们的方法有望在高维问题上有更好的性能。此外,所应用的密度比估计算法配备了自然交叉验证程序,使我们能够客观地优化正则化参数和核宽度等调优参数的值。该算法给出了一个闭式解,并给出了漏一误差的闭式公式。因此,本文提出的离群点检测方法计算效率高,可扩展到海量数据集。基于基准和真实世界数据集的仿真表明了所提出方法的有效性。
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