首页> 外文会议>International Conference on Signal Image Technology Internet Based Systems >An Accurate Probabilistic Model for Community Evolution Analysis in Social Network
【24h】

An Accurate Probabilistic Model for Community Evolution Analysis in Social Network

机译:社交网络中社区演化分析的精确概率模型

获取原文

摘要

The scope of the work is to build a framework able to study the evolution of a set of communities based on their underlying social activities. Generally, for a given community, many subgroups may exist and evolve with different and various opinions or behaviors. So, in this paper, we will focus on the identification of the potential subgroups and their potential relation/correlation corresponding to self-similarity over time. Clearly, we want to know if the subgroups remain unchanged then being stable or might they evolve to merge by forming new groups. In this respect, social engagement that refers to the participation of actors from a community to the activities of a social group is used to distribute activities into several classes. So building subgroups will be our first challenge and analyzing temporal correlation between them will be another interesting issue in this present work. The first problem can be solved by analyzing the activities inside the given initial community. We believe that, in many situations, activities should be characterized by parametric distributions as the gaussians. So, by means of the gaussian mixture modeler (GMM), subgroups can be identified successfully. Thereafter, the intrinsic relation between subgroups and their temporal evolution can be studied clearly with the calibration of hidden Markov models (HMM). The achievement of this study can help management operators to take decisions in two ways: i) since each GMM subgroup may correspond to a single individual's opinion/behavior, typical decision could be made for a given social group ii) also, the manager can take advantageous decisions by merging opinions for subgroups which have self-similarities, the HMM is here to learn more about this issue. We show the effectiveness of our approach by using real life data from Reddit.com.
机译:工作范围是建立一个框架,该框架能够根据其潜在的社会活动来研究一组社区的演变。通常,对于给定的社区,可能存在许多亚组并以不同的观点或行为来发展。因此,在本文中,我们将重点关注潜在亚组的识别及其与时间上自相似性相对应的潜在关系/相关性。显然,我们想知道子组是否保持不变,然后保持稳定,或者它们可能通过形成新的组而合并。在这方面,社会参与是指社区中的参与者参与社会团体的活动,用于将活动分为几类。因此,建立亚组将是我们的第一个挑战,而分析它们之间的时间相关性将是本工作中的另一个有趣问题。第一个问题可以通过分析给定初始社区内部的活动来解决。我们认为,在许多情况下,活动应以高斯人的参数分布为特征。因此,借助高斯混合建模器(GMM),可以成功识别子组。此后,可以通过隐马尔可夫模型(HMM)的校准清楚地研究子组之间的内在联系及其时间演化。这项研究的完成可以帮助管理人员以两种方式做出决策:i)由于每个GMM子组可能对应于单个人的意见/行为,因此可以针对给定的社会群体做出典型的决策ii)此外,经理可以采取通过合并具有自相似性的子组的意见来做出有利的决策,HMM在这里可以了解有关此问题的更多信息。我们通过使用Reddit.com的真实数据来证明我们的方法的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号