River:社交媒体流的实时影响监测系统

M. Sha, Yuchen Li, Yanhao Wang, Wentian Guo, K. Tan
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引用次数: 4

摘要

社交网络以流的形式在用户之间产生大量的交互数据。为了方便社交网络用户消费不断生成的流并识别首选的病毒式社交内容,我们提出了一个称为River的实时监控系统,用于在此演示中跟踪高速流中的一小部分有影响力的社交内容。与现有的社会监测系统相比,River具有以下四个新特点:(1)在减少影响重叠的同时,提取一组总体上具有最显著影响覆盖的内容;(2) River以主题为基础,监控与用户偏好相关的内容;(3) River具有位置感知功能,即用户可以对自己感兴趣的区域内的内容进行影响查询;(4) River采用了一种新颖的稀疏影响检查点(SIC)索引,以支持针对现实世界社交网络的实时流速率进行有效更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
River: A Real-Time Influence Monitoring System on Social Media Streams
Social networks generate a massive amount of interaction data among users in the form of streams. To facilitate social network users to consume the continuously generated stream and identify preferred viral social contents, we present a real-time monitoring system called River to track a small set of influential social contents from high-speed streams in this demo. River has four novel features which distinguish itself from existing social monitoring systems: (1) River extracts a set of contents which collectively have the most significant influence coverage while reducing the influence overlaps; (2) River is topic-based and monitors the contents which are relevant to users' preferences; (3) River is location-aware, i.e., it enables user influence query on the contents falling into the region of interests; and (4) River employs a novel sparse influential checkpoint (SIC) index to support efficient updates against the streaming rates of real-world social networks in real-time.
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