基于两个单类分类器的单类分类主动学习

Patrick Schlachter, Bin Yang
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引用次数: 5

摘要

本文介绍了一种新颖的、通用的单类分类主动学习方法。在机器学习领域,主动学习方法在减少人工标注方面发挥着重要作用。虽然近年来提出了许多主动学习方法,但大多数都局限于二元或多类问题。单类分类器在训练过程中只使用一个类的样本,即所谓的目标类,因此需要特殊的主动学习策略。针对单类分类提出的少数策略要么受到特定单类分类器的限制,要么其性能取决于对数据集的特定假设,如不平衡。我们提出的方法基于使用两个单类分类器,一个用于期望的目标类,另一个用于所谓的异常类。它允许发明新的查询策略、使用二进制查询策略和定义简单的停止标准。在此基础上,提出了两种查询策略。所提供的实验将所提出的方法与各种数据集上的已知策略进行了比较,并在几乎所有情况下显示出改进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active Learning for One-Class Classification Using Two One-Class Classifiers
This paper introduces a novel, generic active learning method for one-class classification. Active learning methods play an important role to reduce the efforts of manual labeling in the field of machine learning. Although many active learning approaches have been proposed during the last years, most of them are restricted on binary or multi-class problems. One-class classifiers use samples from only one class, the so-called target class, during training and hence require special active learning strategies. The few strategies proposed for one-class classification either suffer from their limitation on specific one-class classifiers or their performance depends on particular assumptions about datasets like imbalance. Our proposed method bases on using two one-class classifiers, one for the desired target class and one for the so-called outlier class. It allows to invent new query strategies, to use binary query strategies and to define simple stopping criteria. Based on the new method, two query strategies are proposed. The provided experiments compare the proposed approach with known strategies on various datasets and show improved results in almost all situations.
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