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Outlier Detection from a Mizture Distribution When Training Data Are Unlabeled

机译:未标记训练数据时从混合物分布中进行异常检测

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摘要

We consider the difficult task of using seismic signals (or any other discriminants) for detecting nuclear explosions from the large number of background signals such as earthquakes and mining blasts. Given a ground-truth database (i.e., labeled data), Fisk et al. (1996) consider the problem of detecting outliers (nuclear explosions) from a single background-signal population, and their approach has been applied successfully in several regions around the world. Wang et al. (1997) attack the problem in terms of modeling the background as a mixture distribution and looking for outliers (nuclear events) from that mixture. However, those authors only considered the case in which at least some fraction of the training sample was labeled, that is, at least some ground-truth information was available, and the number of distinct classes of events was known. In the current article, we extend these results to the case in which no events in the training sample are labeled and also to the case in which the number of event types represented in the training sample is unknown. One can view the mixture approach as a robust method for fitting a density to training data that may not be normally distributed whether or not the data consist of identifiable components that have a physical interpretation. The technique is demonstrated using simulated data as well as two sets of seismic data.
机译:我们认为使用地震信号(或任何其他判别式)从大量背景信号(例如地震和采矿爆炸)中检测核爆炸的艰巨任务。菲斯克(Fisk)等人给出了真实的数据库(即标记的数据)。 (1996年)考虑了从单个背景信号种群中检测离群值(核爆炸)的问题,他们的方法已在世界各地成功应用。 Wang等。 (1997)通过将背景建模为混合物分布并从该混合物中寻找离群值(核事件)来解决这个问题。但是,这些作者仅考虑了以下情况:至少对训练样本的某些部分进行了标记,也就是说,至少可以获得一些真实的信息,并且知道了不同类别的事件。在当前的文章中,我们将这些结果扩展到训练样本中没有事件被标记的情况以及训练样本中代表的事件类型的数目未知的情况。可以将混合方法视为一种适合将密度拟合到可能不会正态分布的训练数据的鲁棒方法,而无论该数据是否由具有物理解释的可识别组件组成。使用模拟数据以及两组地震数据演示了该技术。

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