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Real-time event detection for online behavioral analysis of big social data

机译:实时事件检测,用于大社交数据的在线行为分析

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摘要

Social networking services are becoming increasingly popular during the daily lives of Internet citizens, especially since the advent of smart mobile devices with integrated utility modules such as 4G/WIFI connectivity, global positioning services, cameras, and heart beat sensors. Many devices are available for sharing information at any time, which can be listed by posting a photo, sharing a status, or narrating an event. The behavior of users means that the flow of data (or a social data stream) has real-time characteristics, which actually comprise notifications about your friends' posts after a short delay for diffusion over the network. The data stream contains news pieces related to real social facts as well as unfocused information. In addition, important information (or events) attracts more public attention, which is demonstrated by the number of relevant messages or communication interactions between people interested in specific topics. From a technical perspective, the characteristics of data in the aforementioned scenario provide us with an opportunity to construct a model that can automatically determine the occurrence of events based on a social data stream. In this study, we propose an approach to solve the problem of early event identification, which requires appropriate approaches for processing incoming data in terms of the processing performance and number of data.
机译:社交网络服务在Internet公民的日常生活中变得越来越流行,尤其是自具有4G / WIFI连接,全球定位服务,摄像头和心跳传感器等集成实用程序模块的智能移动设备问世以来。许多设备可随时用于共享信息,可以通过发布照片,共享状态或叙述事件来列出这些设备。用户的行为意味着数据流(或社交数据流)具有实时特征,该特征实际上包括在网络上传播一小段延迟后有关您朋友的帖子的通知。数据流包含与真实社会事实相关的新闻以及不集中的信息。此外,重要信息(或事件)吸引了更多的公众关注,这由对特定主题感兴趣的人们之间的相关消息或交流互动的数量证明。从技术角度来看,上述场景中的数据特征为我们提供了构建模型的机会,该模型可以基于社交数据流自动确定事件的发生。在这项研究中,我们提出了一种解决早期事件识别问题的方法,该方法需要根据处理性能和数据数量来处理传入数据的适当方法。

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