在扩散预测中整合同质性和影响的变分自编码器框架

Aravind Sankar, Xinyang Zhang, A. Krishnan, Jiawei Han
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引用次数: 48

摘要

近年来,人们对理解和预测Twitter、Facebook等社交媒体平台上传播的信息产生了极大的兴趣。现有的扩散预测方法主要是通过将扩散级联投射到受影响用户的局部社会社区来利用受影响用户的顺序。然而,这无法捕捉到全局的社会结构,这些结构在任何级联中都没有明确体现,从而导致历史活动有限的非活跃用户的性能不佳。在本文中,我们提出了一种新的变分自编码器框架(Inf-VAE),通过邻近保持社会和位置编码的时间潜在变量来共同嵌入同质性和影响。为了模拟社会同质性,ef - vae利用强大的图神经网络架构来学习有选择地利用用户的社会联系的社会变量。给定种子用户激活序列,Inf-VAE使用一种新颖的表达性共同关注融合网络,该网络共同关注其社会和时间变量,以预测所有受影响用户的集合。我们在多个真实社会网络数据集(包括Digg、微博和Stack-Exchanges)上的实验结果表明,与最先进的扩散预测模型相比,ef - vae的收益显著(22% MAP@10);对于活动稀疏的用户,以及在种子集中缺乏直接社交邻居的用户,我们获得了巨大的收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inf-VAE: A Variational Autoencoder Framework to Integrate Homophily and Influence in Diffusion Prediction
Recent years have witnessed tremendous interest in understanding and predicting information spread on social media platforms such as Twitter, Facebook, etc. Existing diffusion prediction methods primarily exploit the sequential order of influenced users by projecting diffusion cascades onto their local social neighborhoods. However, this fails to capture global social structures that do not explicitly manifest in any of the cascades, resulting in poor performance for inactive users with limited historical activities. In this paper, we present a novel variational autoencoder framework (Inf-VAE) to jointly embed homophily and influence through proximity-preserving social and position-encoded temporal latent variables. To model social homophily, Inf-VAE utilizes powerful graph neural network architectures to learn social variables that selectively exploit the social connections of users. Given a sequence of seed user activations, Inf-VAE uses a novel expressive co-attentive fusion network that jointly attends over their social and temporal variables to predict the set of all influenced users. Our experimental results on multiple real-world social network datasets, including Digg, Weibo, and Stack-Exchanges demonstrate significant gains (22% MAP@10) for Inf-VAE over state-of-the-art diffusion prediction models; we achieve massive gains for users with sparse activities, and users who lack direct social neighbors in seed sets.
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