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Online Direct Density-Ratio Estimation Applied to Inlier-Based Outlier Detection

机译:在线直接密度比估计在基于异常值的异常值检测中的应用

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摘要

Many machine learning problems, such as nonstationarity adaptation, outlier detection, dimensionality reduction, and conditional density estimation, can be effectively solved by using the ratio of probability densities. Since the naive two-step procedure of first estimating the probability densities and then taking their ratio performs poorly, methods to directly estimate the density ratio from two sets of samples without density estimation have been extensively studied recently. However, these methods are batch algorithms that use the whole data set to estimate the density ratio, and they are inefficient in the online setup, where training samples are provided sequentially and solutions are updated incrementally without storing previous samples. In this letter, we propose two online density-ratio estimators based on the adaptive regularization of weight vectors. Through experiments on inlier-based outlier detection, we demonstrate the usefulness of the proposed methods.
机译:通过使用概率密度的比率,可以有效地解决许多机器学习问题,例如非平稳性自适应,离群值检测,降维和条件密度估计。由于先估计概率密度然后取它们的比率的幼稚两步法性能较差,因此最近广泛研究了直接从两组样本直接估计密度比而不进行密度估计的方法。但是,这些方法是使用整个数据集来估计密度比的批处理算法,并且在在线设置中效率不高,因为在线设置是按顺序提供训练样本,并且解决方案在不存储先前样本的情况下进行增量更新。在这封信中,我们基于权重向量的自适应正则化提出了两个在线密度比估计量。通过基于离群值的离群值检测的实验,我们证明了所提出方法的有用性。

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