An enhanced category detection based on active learning

Hao Huang, Shuoping Wang, Lianhang Ma
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Abstract

Identification of useful anomalies is an emerging task in active learning scenario. It plays the central roles in category detection in which one can using a sampling approach to label a data from rare category in an unlabeled date set by the help of the oracle who has a small querying budget. This paper presents an enhanced category detection that improves previous research work which leans to cost more querying budget. The new approach takes full advantage of the feedback of the oracle, and reduces the querying times. Experimental results on both synthetic and real data sets are effective and low-cost.
一种基于主动学习的增强类别检测方法
在主动学习场景中,有用异常的识别是一个新兴的任务。它在类别检测中起着核心作用,其中可以使用抽样方法在具有少量查询预算的oracle的帮助下,在未标记日期集中标记来自罕见类别的数据。本文提出了一种改进的类别检测方法,改进了以往的研究工作,使其更倾向于花费更多的时间查询预算。该方法充分利用了oracle的反馈功能,减少了查询次数。在合成数据集和真实数据集上的实验结果都是有效和低成本的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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