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Link Prediction in Relational Data

机译:关系数据中的链接预测

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摘要

Many real-world domains are relational in nature, consisting of a set of objects related to each other in complex ways. This paper focuses on predicting the existence and the type of links between entities in such domains. We apply the relational Markov network framework of Taskar et al. to define a joint probabilistic model over the entire link graph — entity attributes and links. The application of the RMN algorithm to this task requires the definition of probabilistic patterns over subgraph structures. We apply this method to two new relational datasets, one involving university webpages, and the other a social network. We show that the collective classification approach of RMNs, and the introduction of subgraph patterns over link labels, provide significant improvements in accuracy over flat classification, which attempts to predict each link in isolation.
机译:许多现实世界的领域本质上都是关系型的,由一组以复杂方式彼此关联的对象组成。本文着重于预测此类领域中实体之间链接的存在和类型。我们应用Taskar等人的关系Markov网络框架。在整个链接图(实体属性和链接)上定义一个联合概率模型。 RMN算法在此任务上的应用要求定义子图结构上的概率模式。我们将此方法应用于两个新的关系数据集,一个涉及大学网页,另一个涉及社交网络。我们展示了RMN的集体分类方法,以及在链接标签上引入子图模式,相对于平面分类(尝试单独预测每个链接)的准确性提供了显着提高。

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