关东海
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所属单位:计算机科学与技术学院/人工智能学院/软件学院
发表刊物:IEEE ACCESS
关键字:Label noise noise filtering unlabeled data soft majority voting
摘要:With the significant growth in the scale of data, an increasing amount of training data is available in many machine learning tasks. However, it is difficult to ensure perfect labeling with a large volume of training data. Some labels can be incorrect, resulting in label noise, which could lead to deterioration in learning performance. A common way to address label noise is to apply noise filtering techniques to identify and remove noise prior to learning. Multiple noise filtering approaches have been proposed. However, almost all existing works focus on only mislabeled training data and ignore the existence of unlabeled data. In fact, unlabeled data are common in many applications, and their values have been extensively studied and recognized. Therefore, in this paper, we explore the effective use of unlabeled data to improve the noise filtering performance. To this end, we propose a novel noise filtering algorithm called enhanced soft majority voting by exploiting unlabeled data (ESMVU), which is an ensemble-learning-based filter that adopts a soft majority voting strategy. ESMVU provides a systematic way to measure the value of unlabeled data by considering different aspects, such as label confidence and the sample distribution. Finally, the effectiveness of the proposed method is confirmed by experiments and comparison with other methods.
ISSN号:2169-3536
是否译文:否
发表时间:2018-01-01
合写作者:Wei, Hongqiang,袁伟伟,Han, Guangjie,Tian, Yuan,Al-Dhelaan, Mohanmmed,Al-Dhelaan, Abdullah
通讯作者:关东海