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Active Learning and Inference Method for Within Network Classification

机译:网络分类内的主动学习和推理方法

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In relational learning tasks such as within network classification the main problem arises from the inference of nodes' labels based on the the ground true labels of remaining nodes. The problem becomes even harder if the nodes from initial network do not have any labels assigned and they have to be acquired. However, labels of which nodes should be obtained in order to provide fair classification results? Active learning and inference is a practical framework to study this problem. The method for active learning and inference in within network classification based on node selection is proposed in the paper. Based on the structure of the network it is calculated the utility score for each node, the ranking is formulated and for selected nodes the labels are acquired. The paper examines several distinct proposals for utility scores and selection methods reporting their impact on collective classification results performed on various real-world networks.
机译:在网络分类中的关系学习任务中,主要问题是基于剩余节点的地面真标的节点标签的推断出来。如果来自初始网络的节点没有分配的标签,则此问题变得更加困难,并且必须获取它们。但是,应该获得哪些节点的标签,以便提供公平的分类结果?积极学习和推论是一个实用的框架来研究这个问题。基于节点选择,提出了基于节点选择的网络分类中的主动学习和推断的方法。基于网络的结构,计算每个节点的实用程序分数,配制排名并针对所选节点获取标签。本文审查了几种不同的实用性评分和选择方法的建议,并对各种现实网络进行了对集体分类结果的影响。

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