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MMRate: Inferring Multi-aspect Diffusion Networks with Multi-pattern Cascades

机译:MMRate:推断具有多模式级联的多方面扩散网络

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摘要

Inferring diffusion networks from traces of cascades has been extensively studied to better understand information diffusion in many domains. A widely used assumption in previous work is that the diffusion network is homogenous and diffusion processes of cascades follow the same pattern. However, in social media, users may have various interests and the connections among them are usually multi-faceted. In addition, different cascades normally diffuse at different speeds and spread to diverse scales, and hence show various diffusion patterns. It is challenging for traditional models to capture the heterogeneous user interactions and diverse patterns of cascades in social media. In this paper, we investigate a novel problem of inferring multi-aspect diffusion networks with multi-pattern cascades. In particular, we study the effects of various diffusion patterns on the information diffusion process by analyzing users' retweeting behavior on a microblogging dataset. By incorporating aspect-level user interactions and various diffusion patterns, a new model for inferring Multi-aspect transmission Rates between users using Multi-pattern cascades (MMRate) is proposed. We also provide an Expectation Maximization algorithm to effectively estimate the parameters. Experimental results on both synthetic and microblogging datasets demonstrate the superior performance of our approach over the state-of-the- art methods in inferring multi-aspect diffusion networks.
机译:从级联的痕迹推断出扩散网络已得到广泛研究,以更好地理解许多领域中的信息扩散。在先前的工作中广泛使用的假设是扩散网络是同质的,并且级联的扩散过程遵循相同的模式。然而,在社交媒体中,用户可能有各种兴趣,并且它们之间的联系通常是多方面的。另外,不同的叶栅通常以不同的速度扩散并扩散到不同的规模,因此显示出各种扩散模式。对于传统模型而言,在社交媒体中捕获异类用户交互和级联的不同模式具有挑战性。在本文中,我们研究了一个推断具有多模式级联的多方面扩散网络的新问题。特别是,我们通过分析微博数据集上用户的转发行为来研究各种传播模式对信息传播过程的影响。通过结合方面级别的用户交互和各种扩散模式,提出了一种使用多模式级联(MMRate)推断用户之间的多方面传输速率的新模型。我们还提供了期望最大化算法来有效地估计参数。在合成和微博数据集上的实验结果证明,在推断多方面扩散网络方面,我们的方法优于最新方法。

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