On Detecting an Emerging Class

C. Park, Hongsuk Shim
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引用次数: 4

Abstract

Most of classifiers implicitly assume that data samples belong to at least one class among predefined classes. However, all data patterns may not be known at the time of data collection or a new pattern can be emerging over time. Hence ideal classifiers need to be able to recognize an emerging pattern. In this paper, we explore the performances and limitations of the existing classification systems in detecting a new class. Also a new method is proposed that can monitor the change in class distribution and detect an emerging class. It works under the supervised learning model where along with classification an emerging class with new characteristic is detected so that classification model can be adapted systematically. For detection of an emerging class, we design statistical significance testing for signaling change of class distribution. When the alarm for new class generation is set on, candidates for new class members are retrieved for close examination by experts. Our experimental results demonstrate competent performances of the proposed method.
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关于发现一个新兴阶层
大多数分类器隐式地假设数据样本属于预定义类中的至少一个类。但是,在收集数据时可能不知道所有的数据模式,或者随着时间的推移可能会出现新的模式。因此,理想的分类器需要能够识别新出现的模式。在本文中,我们探讨了现有分类系统在检测新类方面的性能和局限性。并提出了一种新的方法,可以监测类分布的变化,发现新出现的类。它在监督学习模型下工作,在分类的同时发现具有新特征的新兴类,从而使分类模型能够系统地适应。对于新类别的检测,我们设计了类别分布信号变化的统计显著性检验。当设置新类生成警报时,将检索新类成员的候选对象,由专家进行仔细检查。实验结果表明,该方法具有良好的性能。
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