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Learning in unlabeled networks - An active learning and inference approach

机译:在无标签网络中学习-一种主动的学习和推理方法

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摘要

The task of determining labels of all network nodes based on the knowledge about network structure and labels of some training subset of nodes is called the within-network classification. It may happen that none of the labels of the nodes is known and additionally there is no information about number of classes (types of labels) to which nodes can be assigned. In such a case a subset of nodes has to be selected for initial label acquisition. The question that arises is: "labels of which nodes should be collected and used for learning in order to provide the best classification accuracy for the whole network?". Active learning and inference is a practical framework to study this problem.
机译:基于有关网络结构和某些训练节点子集的标签的知识来确定所有网络节点的标签的任务称为网络内分类。可能发生的情况是,节点的标签都不是已知的,此外,没有关于可以分配节点的类数(标签的类型)的信息。在这种情况下,必须选择节点子集进行初始标签获取。出现的问题是:“应该收集哪些节点的标签并将其用于学习,以便为整个网络提供最佳的分类精度?”。主动学习和推理是研究此问题的实用框架。

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