异常/相关事件检测(A/RED):主动机器学习查找罕见事件

R. Loveland, Noah Kaplan
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引用次数: 0

摘要

在许多工业应用程序中,数据以未标记流的形式出现,其中可能包含用户以前未见过的类。在这些情况下,用户通常关心四件事:分类、类发现、特定类中的事件通知以及需要标记的数据量。在这项工作中,我们提出了异常/相关事件检测(A/RED),这是一个主动学习系统,它在不平衡的数据流上运行,以找到新的类并对传入的事件进行分类。A/RED的独特之处在于它考虑了用户对类相关性的偏好。A/RED查询涉及请求标签和二进制相关标签。更频繁地查询相关类,因此,分类器对这些实例执行得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomalous/Relevant Event Detection (A/RED): Active Machine Learning for Finding Rare Events
In many industrial applications, data comes in the form of an unlabeled stream, likely containing classes that a user has not seen before. In these cases, a user generally cares about four things: classification, class discovery, notification of events in certain classes, and the amount of data they need to label. In this work we present Anomalous/ Relevant Event Detection (A/RED), an active learning system that operates upon imbalanced data streams to find new classes and classify incoming events. A/RED is unique in that it takes into account user preference for the relevance of classes. An A/RED query involves asking for a label and a binary relevance label. A relevant class is queried more often, and as a result, the classifier performs better for these instances.
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