Positive and Unlabeled Multi-Graph Learning.

IEEE Transactions on Cybernetics(2017)

引用 60|浏览33
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摘要
In this paper, we advance graph classification to handle multi-graph learning for complicated objects, where each object is represented as a bag of graphs and the label is only available to each bag but not individual graphs. In addition, when training classifiers, users are only given a handful of positive bags and many unlabeled bags, and the learning objective is to train models to classify pre...
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关键词
Reliability,Uncertainty,Training,Feature extraction,Algorithm design and analysis,Cybernetics,Computer science
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