ETree: Effective and Efficient Event Modeling for Real-Time Online Social Media Networks

Hansu Gu, Xing Xie, Q. Lv, Yaoping Ruan, L. Shang
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引用次数: 51

Abstract

Outline social media networks (OSMNs) such as Twitter provide great opportunities for public engagement and event information dissemination. Event-related discussions occur in real time and at the worldwide scale. However, these discussions are in the form of short, unstructured messages and dynamically woven into daily chats and status updates. Compared with traditional news articles, the rich and diverse user-generated content raises unique new challenges for tracking and analyzing events. Effective and efficient event modeling is thus essential for real-time information-intensive OSMNs. In this work, we propose ETree, an effective and efficient event modeling solution for social media network sites. Targeting the unique challenges of this problem, ETree consists of three key components: (1) an n-gram based content analysis technique for identifying core information blocks from a large number of short messages, (2) an incremental and hierarchical modeling technique for identifying and constructing event theme structures at different granularities, and (3) an enhanced temporal analysis technique for identifying inherent causalities between information blocks. Detailed evaluation using 3.5 million tweets over a 5-month period demonstrates that ETree can efficiently generate high-quality event structures and identify inherent causal relationships with high accuracy.
实时在线社交媒体网络的有效和高效事件建模
概述社会媒体网络(osmn),如Twitter,为公众参与和事件信息传播提供了巨大的机会。与事件相关的讨论实时地在全球范围内进行。然而,这些讨论的形式是简短的、非结构化的消息,并动态地编织到日常聊天和状态更新中。与传统的新闻文章相比,丰富多样的用户生成内容为跟踪和分析事件提出了独特的新挑战。因此,有效和高效的事件建模对于实时信息密集型osmn至关重要。在这项工作中,我们提出了ETree,一个有效和高效的社交媒体网络网站事件建模解决方案。针对该问题的独特挑战,ETree由三个关键组件组成:(1)基于n图的内容分析技术,用于从大量短消息中识别核心信息块;(2)用于识别和构建不同粒度的事件主题结构的增量和分层建模技术;(3)用于识别信息块之间固有因果关系的增强时间分析技术。对5个月时间内350万条推文的详细评估表明,ETree可以高效地生成高质量的事件结构,并高精度地识别内在因果关系。
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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