Less After-the-Fact: Investigative visual analysis of events from streaming twitter

Thomas Kraft, Xiaoyu Wang, Jeffrey Delawder, Wenwen Dou, Yu Li, W. Ribarsky
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引用次数: 36

Abstract

News and events are traditionally broadcasted in an “After-the-Fact” manner, where the masses react to news formulated by a group of professionals. However, the deluge of information and real-time online social media sites have significantly changed this information input-output cycle, allowing the masses to report real-time events around the world. Specifically, the use of Twitter has resulted in the creation of a digital wealth of knowledge that directly associates to such events. Although governments and industries acknowledge the value of extracting events from the TwitterSphere, unfortunately the sheer velocity and volume of tweets poses significant challenges to the desired event analysis. In this paper, we present our Geo and Temporal Association Creator (GTAC) which extracts structured representations of events from the Twitter stream. GTAC further supports event-level investigative analysis of social media data through interactively visualizing the event indicators (who, when, where, and what). Using GTAC, we are trying to create a near real-time analysis environment for analysts to identify event structures, geographical distributions, and key indicators of emerging events.
更少事后:从流媒体twitter对事件进行调查性视觉分析
新闻和事件传统上以“事后”的方式播出,大众对一群专业人士制定的新闻做出反应。然而,信息的泛滥和实时在线社交媒体网站极大地改变了这种信息输入输出周期,使大众能够实时报道世界各地的事件。具体来说,Twitter的使用导致了与这些事件直接相关的数字知识财富的创造。虽然政府和行业承认从TwitterSphere中提取事件的价值,但不幸的是,tweet的速度和数量对期望的事件分析构成了重大挑战。在本文中,我们介绍了我们的地理和时间关联创建者(GTAC),它从Twitter流中提取事件的结构化表示。GTAC还通过交互式可视化事件指示器(谁、何时、何地和什么)进一步支持对社交媒体数据进行事件级调查分析。使用GTAC,我们正在尝试为分析人员创建一个接近实时的分析环境,以识别事件结构、地理分布和新兴事件的关键指标。
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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