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Outlying Sequence Detection in Large Data Sets: A data-driven approach

机译:大数据集中的异常序列检测:一种数据驱动的方法

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摘要

Outliers refer to observations that do not conform to the expected patterns in high-dimensional data sets. When such outliers signify risks (e.g., in fraud detection) or opportunities (e.g., in spectrum sensing), harnessing the costs associated with the risks or missed opportunities necessitates mechanisms that can identify them effectively. Designing such mechanisms involves striking an appropriate balance between reliability and cost of sensing, as two opposing performance measures, where improving one tends to penalize the other. This article poses and analyzes outlying sequence detection in a hypothesis testing framework under different outlier recovery objectives and different degrees of knowledge about the underlying statistics of the outliers.
机译:离群值是指与高维数据集中的预期模式不一致的观察结果。当这些异常值表示风险(例如,在欺诈检测中)或机会(例如,在频谱感知中)时,利用与风险或错过的机会相关的成本就需要能够有效识别它们的机制。设计这样的机制需要在可靠性和感测成本之间取得适当的平衡,因为两种相对的性能指标会有所提高,而另一方会受到不利影响。本文提出并分析了在假设测试框架中,在不同的离群值恢复目标和不同的离群值基础统计知识的情况下的离群序列检测。

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