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A Spin-Glass Model for Semi-Supervised Community Detection

机译:半监督社区检测的自旋玻璃模型

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摘要

Current modularity-based community detection methods show decreased performance as relational networks become increasingly noisy. These methods also yield a large number of diverse community structures as solutions, which is problematic for applications that impose constraints on the acceptable solutions or in cases where the user is focused on specific communities of interest. To address both of these problems, we develop a semi-supervised spin-glass model that enables current community detection methods to incorporate background knowledge in the forms of individual labels and pairwise constraints. Unlike current methods, our approach shows robust performance in the presence of noise in the relational network, and the ability to guide the discovery process toward specific community structures. We evaluate our algorithm on several benchmark networks and a new political sentiment network representing cooperative events between nations that was mined from news articles over six years.
机译:随着关系网络变得越来越嘈杂,当前基于模块化的社区检测方法显示出性能下降。这些方法还产生大量不同的社区结构作为解决方案,这对于在可接受的解决方案上施加约束的应用程序或在用户将注意力集中在特定的特定社区上的情况下是有问题的。为了解决这两个问题,我们开发了一个半监督的旋转玻璃模型,该模型使当前的社区检测方法能够以单个标签和成对约束的形式结合背景知识。与当前的方法不同,我们的方法在关系网络中存在噪声的情况下表现出强大的性能,并具有将发现过程导向特定社区结构的能力。我们在数个基准网络和代表国家间合作事件的新政治情绪网络上评估了我们的算法,该网络是从过去六年的新闻报道中提取的。

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