自适应特征分割选择协同训练:在轮胎不规则磨损分类中的应用

Wei Du, R. Phlypo, T. Adalı
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引用次数: 4

摘要

共同训练是一种实用而强大的半监督学习方法。它产生高分类精度的训练数据集只包含一个小的标记数据集。协同训练的成功执行需要两个重要的特征条件:多样性和充分性。在本文中,我们提出了一种新的基于互信息(MI)的方法,该方法受到依赖分量分析(DCA)思想的启发,以实现子集之间(多样性)或子集内(充分性)最大独立的特征分割。我们评估了分类性能和这两个条件的相对重要性之间的关系。在实际轮胎数据上的实验结果表明,与多样性相比,充分性对分类精度的影响更为显著。进一步的结果表明,与基于mi的方法获得的特征分割的共同训练比监督分类具有更高的准确率,并且在使用一小组标记训练数据时显着更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive feature split selection for co-training: Application to tire irregular wear classification
Co-training is a practical and powerful semi-supervised learning method. It yields high classification accuracy with a training data set containing only a small set of labeled data. Successful performance in co-training requires two important conditions on the features: diversity and sufficiency. In this paper, we propose a novel mutual information (MI) based approach inspired by the idea of dependent component analysis (DCA) to achieve feature splits that are maximally independent between-subsets (diversity) or within-subsets (sufficiency). We evaluate the relationship between the classification performance and the relative importance of the two conditions. Experimental results on actual tire data indicate that compared to diversity, sufficiency has a more significant impact on their classification accuracy. Further results show that co-training with feature splits obtained by the MI-based approach yields higher accuracy than supervised classification and significantly higher when using a small set of labeled training data.
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