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Partially Supervised Graph Embedding for Positive Unlabelled Feature Selection

机译:部分监督的图形嵌入正面未标记的特征选择

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Selecting discriminative features in positive unlabelled (PU) learning tasks is a challenging problem due to lack of negative class information. Traditional supervised and semi-supervised feature selection methods are not able to be applied directly in this scenario, and unsupervised feature selection algorithms are designed to handle unlabelled data while neglecting the available information from positive class. To leverage the partially observed positive class information, we propose to encode the weakly supervised information in PU learning tasks into pairwise constraints between training instances. Violation of pairwise constraints are measured and incorporated into a partially supervised graph embedding model. Extensive experiments on different benchmark databases and a real-world cyber security application demonstrate the effectiveness of our algorithm.
机译:由于缺少负类信息,选择正未标识(PU)学习任务中的歧视特征是一个具有挑战性的问题。传统的监督和半监督特征选择方法无法直接应用于这种情况下,并且设计无监督的功能选择算法旨在处理未标记的数据,同时忽略正类的可用信息。为了利用部分观察到的正类信息,我们建议将PU学习任务中的弱监管信息编码为培训实例之间的成对约束。测量并将成对约束的违反并将其纳入部分监督的图形嵌入模型。在不同的基准数据库和现实世界网络安全应用程序上进行了广泛的实验,证明了我们算法的有效性。

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