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Iterative Relational Classification Through Three-State Epidemic Dynamics

机译:三态流行病学的迭代关系分类

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摘要

Relational classification in networked data plays an important role in many problems such as text categorization, classification of web pages, group finding in peer networks, etc. We have previously demonstrated that for a class of label propagating algorithms the underlying dynamics can be modeled as a two-state epidemic process on heterogeneous networks, where infected nodes correspond to classified data instances. We have also suggested a binary classification algorithm that utilizes non-trivial characteristics of epidemic dynamics. In this paper we extend our previous work by considering a three-state epidemic model for label propagation. Specifically, we introduce a new, intermediate state that corresponds to "susceptible" data instances. The utility of the added state is that it allows to control the rates of epidemic spreading, hence making the algorithm more flexible. We show empirically that this extension improves significantly the performance of the algorithm. In particular, we demonstrate that the new algorithm achieves good classification accuracy even for relatively large overlap across the classes.
机译:网络数据中的关系分类在许多问题中起着重要作用,例如文本分类,网页分类,对等网络中的组查找等。我们之前已经证明,对于一类标签传播算法,可以将基本动态建模为异构网络上的两种状态的流行过程,其中受感染的节点对应于机密数据实例。我们还提出了一种利用流行病动力学非平凡特征的二进制分类算法。在本文中,我们通过考虑用于标签传播的三态流行模型来扩展我们以前的工作。具体来说,我们引入了一个新的中间状态,该状态对应于“敏感”数据实例。附加状态的实用性在于它可以控制流行病的传播速度,从而使算法更加灵活。我们凭经验表明,这种扩展大大提高了算法的性能。特别是,我们证明了新算法即使在类之间相对较大的重叠情况下也能实现良好的分类精度。

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