一种用于混合图和海事监测数据的通用异常检测方法

Yifan Zhou, James Wright, S. Maskell
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引用次数: 2

摘要

本文提出了一种新的通用方法来检测异常(即统计异常值),该方法可以与生成主题模型一起使用。在本文中,我们在文本挖掘中广泛使用的混合图模型的背景下指定了该方法。可以通过对可能性应用阈值来检测主题模型的异常情况。然而,选择阈值是一项挑战,因为选择时需要考虑主题的相似性和文档的长度。本文描述了一种新的直观的异常检测方法,该方法只需简单地操作训练模型的输出。期望这种方法具有更直观地定义给定问题的参数。为了评估所提出方法的效用,我们还提出了一个用例,涉及使用自动识别系统(AIS)消息中的地理位置数据识别误报船型的船舶。我们表明,如果我们使用一种类型船舶的数据训练模型,则有可能将另一种类型的船舶识别为异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generic Anomaly Detection Approach Applied to Mixture-of-unigrams and Maritime Surveillance Data
This paper proposes a new generic method to detect anomalies (i.e., statistical outliers) which can be used with a generative topic model. In this paper, we specify this method in the context of the Mixture-of-unigrams model, which is widely used in text mining. It is possible to detect anomalies with a topic model by applying a threshold to the likelihood. However, it is challenging to choose the threshold since the choice needs to consider both the similarities of the topics and the length of documents. This paper describes a new intuitive method to detect anomalies which simply manipulates the output of the trained model. Such an approach is anticipated to have parameters that are more intuitive to define for a given problem. To assess the utility of the proposed approach, we also present a use case involving identifying ships misreporting their ship-type using geo-location data from the Automatic Identification System (AIS) messages. We show that, if we train a model using data for one type of ship, it is possible to identify ships of another type as anomalous.
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