使用随机处理完成罕见事件规范:CRESST

Debanjan Banerjee, Ritish Menon
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引用次数: 0

摘要

在当今快速发展的世界中,罕见事件正变得越来越普遍。从研究安全隐患事件到识别交易欺诈,它们都在罕见事件的雷达之下。识别和研究罕见事件变得至关重要,特别是当潜在事件符合敏感或不利问题时。这里需要注意的是,尽管发生的概率非常接近于零,但罕见事件的潜在规格可能相当广泛。例如,在产品安全的父罕见事件中,可能存在多种类型的潜在危害,从而使子类更加罕见。在本文中,我们将探索一种新的算法,该算法旨在随着时间的推移研究罕见事件及其子类,主要关注预测和检测异常。这里研究的异常是相对异常,即它们可能对罕见时间序列的长期趋势没有贡献,但代表了与刚刚过去的基本状态的偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complete Rare Event Specification using Stochastic Treatment: CRESST
In the fast moving world today, rare events are becoming increasingly common. Ranging from studying incidents of safety hazards to identifying transaction fraud, they all fall under the radar of rare events. Identifying and studying rare events become of crucial importance, particularly when the underlying event conforms to a sensitive or an adverse issue. The thing to note here is, despite the probability of occurrence being very close to zero, the potential specification of the rare event could be quite extensive. For example, within the parent rare event of Product Safety, there could be multiple types of potential hazard, rendering the sub-classes rarer still. In this paper, we are going to explore a novel algorithm designed to study a rare event and its sub-classes over time with primary focus on forecast and detecting anomalies. The anomalies studied here are relative anomalies i.e., they may not contribute to the long-term trend of the rare time series but represent deviation from the base state as seen in the immediate past.
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