A Non-parametric Hidden Markov Clustering Model with Applications to Time Varying User Activity Analysis

Wutao Wei, Chuanhai Liu, M. Zhu, S. Matei
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引用次数: 3

Abstract

Activity data of individual users on social media are easily accessible in this big data era. However, proper modeling strategies for user profiles have not been well developed in the literature. Existing methods or models usually have two limitations. The first limitation is that most methods target the population rather than individual users, and the second is that they cannot model non-stationary time-varying patterns. Different users in general demonstrate different activity modes on social media. Therefore, one population model may fail to characterize activities of individual users. Furthermore, online social media are dynamic and ever evolving, so are users' activities. Dynamic models are needed to properly model users' activities. In this paper, we introduce a non-parametric hidden Markov model to characterize the time-varying activities of social media users. An EM algorithm has been developed to estimate the parameters of the proposed model. In addition, based on the proposed model, we develop a clustering method to group users with similar activity patterns.
非参数隐马尔可夫聚类模型在时变用户活动分析中的应用
在这个大数据时代,个人用户在社交媒体上的活动数据很容易获得。然而,在文献中还没有很好地开发合适的用户配置文件建模策略。现有的方法或模型通常有两个局限性。第一个限制是大多数方法针对的是总体而不是单个用户,第二个限制是它们不能模拟非平稳时变模式。一般来说,不同的用户在社交媒体上表现出不同的活动模式。因此,一个人口模型可能无法描述单个用户的活动。此外,在线社交媒体是动态的,不断发展的,用户的活动也是如此。需要动态模型来正确地为用户的活动建模。本文引入了一个非参数隐马尔可夫模型来描述社交媒体用户的时变活动。提出了一种电磁算法来估计模型的参数。此外,基于所提出的模型,我们开发了一种聚类方法来对具有相似活动模式的用户进行分组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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