A Generic Framework for Social Event Analysis

Shengsheng Qian, Tianzhu Zhang, Changsheng Xu
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引用次数: 1

Abstract

Social event is something that occurs at specific place and time associated with some specific actions, and it consists of many stories over time. With the explosion of Web 2.0 platforms, a popular social event that is happening around us and around the world can spread very fast. As a result, social event analysis becomes more and more important for users to understand the whole evolutionary trend of social event over time. However, it is very challenging to do social event analysis because social event data from different social media sites have multi-modal, multi-domain, and large-scale properties. The goal of our research is to design advanced multimedia techniques to deal with the above issues and establish an effective and robust social event analysis framework for social event representation, detection, tracking and evolution analysis. (1) For social event representation, we propose a novel cross-domain collaborative learning algorithm based on non-parametric Bayesian dictionary learning model. It can make use of the shared domain priors and modality priors to collaboratively learn the data's representations by considering the domain discrepancy and the multi-modal property.(2) For social event detection, we propose a boosted multi-modal supervised Latent Dirichlet Allocation model. It can effectively exploit multi-modality information and utilize boosting weighted sampling strategy for large-scale data processing. (3) For social event tracking, we propose a novel multi-modal event topic model, which can effectively model the correlations between textual and visual modalities, and obtain their topics over time. (4) For social event evolution analysis, we propose a novel multi-modal multi-view topic-opinion mining model to conduct fined-grained topic and opinion analysis for social events from multiple social media sites collaboratively. It can discover multi-modal topics and the corresponding opinions over time to understand the evolutionary processes of social event. Extensive experimental results show that the proposed algorithms perform favorably against state-of-the-art methods for social event analysis.
社会事件分析的通用框架
社会事件是指发生在特定地点和时间的与特定行为相关的事情,它由许多故事组成。随着Web 2.0平台的爆炸式增长,在我们周围和世界各地发生的流行社会事件可以非常迅速地传播。因此,社交事件分析对于用户了解社交事件随时间的整体演变趋势变得越来越重要。然而,由于来自不同社交媒体网站的社交事件数据具有多模态、多域和大规模的特性,因此对社交事件进行分析是非常具有挑战性的。我们的研究目标是设计先进的多媒体技术来处理上述问题,并建立一个有效的、鲁棒的社会事件分析框架,用于社会事件的表示、检测、跟踪和演化分析。(1)针对社会事件表示,提出了一种基于非参数贝叶斯字典学习模型的跨领域协同学习算法。(2)针对社会事件检测,提出了一种增强的多模态监督潜狄利克雷分配模型。它可以有效地挖掘多模态信息,并利用增强加权采样策略进行大规模数据处理。(3)在社会事件跟踪方面,我们提出了一种新的多模态事件主题模型,该模型可以有效地模拟文本模态和视觉模态之间的相关性,并获得它们随时间变化的主题。(4)在社会事件演化分析方面,我们提出了一种新的多模态多视图话题-意见挖掘模型,对来自多个社交媒体网站的社会事件协同进行细粒度话题和意见分析。它可以发现随时间变化的多模态话题和相应的观点,从而了解社会事件的演变过程。广泛的实验结果表明,所提出的算法优于最先进的社会事件分析方法。
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