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Dempster-Shafer Fusion of Semi-supervised Learning Methods for Predicting Defaults in Social Lending

机译:半监督学习方法的Dempster-Shafer融合预测社会贷款违约

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In social lending, it is hard to know whether borrowers will repay well or not. Most researchers use supervised learning for default prediction, but labeling data by hand is time-consuming. Moreover, labeling results of semi-supervised learning methods are not the same each other. In this paper, we propose a fusion method of label propagation and transductive SVM based on Dempster-Shafer theory for precisely labeling unlabeled data to improve the performance. We remove few unlabeled data with lower reliabilities in labeling results and fusion of the two results based on Dempster-Shafer theory. We have conducted experiments with supervised learning method trained with labeled unlabeled data. As a result, the proposed method produced the best accuracies, 6.15% higher than the result trained with labeled data only, and 1.3% higher than the conventional methods.
机译:在社会借贷中,很难知道借款人是否会还清欠款。大多数研究人员将监督学习用于默认预测,但是手动标记数据非常耗时。此外,半监督学习方法的标记结果彼此不同。在本文中,我们提出了一种基于Dempster-Shafer理论的标签传播与转导SVM的融合方法,以精确标记未标记的数据以提高性能。我们基于Dempster-Shafer理论删除了一些标记结果可靠性较低的未标记数据,并将这两个结果融合在一起。我们进行了带标签的未标记数据训练的监督学习方法的实验。结果,提出的方法产生了最佳的准确性,比仅使用标记数据训练的结果高6.15%,比常规方法高1.3%。

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