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Infinite multiple membership relational modeling for complex networks

机译:复杂网络的无限多成员关系建模

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Learning latent structure in complex networks has become an important problem fueled by many types of networked data originating from practically all fields of science. In this paper, we propose a new non-parametric Bayesian multiple-membership latent feature model for networks. Contrary to existing multiple-membership models that scale quadratically in the number of vertices the proposed model scales linearly in the number of links admitting multiple-membership analysis in large scale networks. We demonstrate a connection between the single membership relational model and multiple membership models and show on “real” size benchmark network data that accounting for multiple memberships improves the learning of latent structure as measured by link prediction while explicitly accounting for multiple membership result in a more compact representation of the latent structure of networks.
机译:复杂网络中潜在结构的学习已成为一个重要问题,而该问题实际上源于几乎所有科学领域的许多类型的网络数据。在本文中,我们提出了一种新的网络非参数贝叶斯多成员潜在特征模型。与现有的多成员模型在顶点数量上按平方比例缩放相反,所提出的模型在允许大型网络中进行多成员分析的链接数量上呈线性比例缩放。我们演示了单成员关系模型和多个成员模型之间的联系,并在“实际”规模基准网络数据上显示,考虑多个成员可以改善对潜在结构的学习(通过链接预测来衡量),同时明确考虑多个成员的结果网络潜在结构的紧凑表示。

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