深度动态混合隶属度随机块模型

Zheng Yu, M. Pietrasik, M. Reformat
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引用次数: 1

摘要

潜在社区模型通过将网络实体分配给社区并将实体关系建模为其社区的关系,成功地对网络数据进行了统计建模。在本文中,我们描述了这些模型在推断两个群体之间的关系时的局限性,当这些群体之间的实体关系是未知的。我们提出了一种解决方案,将社团关系矩阵分解为两个社团特征矩阵,从而增加社团关系之间的依赖关系。我们引入了基于深度动态混合隶属度随机块模型的网络(DDBN)来证明这种方法的可行性。我们的模型将混合隶属度随机块模型(MMSB)与深度神经网络相结合,用于丰富的特征提取,并使用长短期记忆单元在潜在特征中引入时间依赖性,用于动态网络建模。我们在静态和动态网络中的链路预测任务上评估了我们的模型,发现我们的模型与最先进的方法取得了相当的结果。•计算方法→神经网络;概率图模型中的学习;分解方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Dynamic Mixed Membership Stochastic Blockmodel
Latent community models are successful at statistically modeling network data by assigning network entities to communities and modelling entity relations as the relations of their communities. In this paper, we describe the limitation of these models in inferring relations between two communities when the entity relations between these communities are unobserved. We propose a solution to this problem by factorizing the community relations matrix into two community feature matrices, thereby adding a dependency between community relations. We introduce the deep dynamic mixed membership stochastic blockmodel based network (DDBN) to demonstrate the feasibility of such an approach. Our model marries the mixed membership stochastic blockmodel (MMSB) with deep neural networks for rich feature extraction and introduces a temporal dependency in latent features using a long short-term memory unit for dynamic network modeling. We evaluate our model on the link prediction task in static and dynamic networks and find that our model achieves comparable results with state-of-the-art methods.CCS CONCEPTS• Computing methodologies → Neural networks; Learning in probabilistic graphical models; Factorization methods.
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