分布式人群感知数据中关键全局事件的边缘辅助检测与总结

Abdelrahman Fahim, Ajaya Neupane, E. Papalexakis, Lance M. Kaplan, S. Krishnamurthy, T. Abdelzaher
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引用次数: 1

摘要

本文介绍了一种用于分布式检测和汇总人群感知事件的新型服务。这项工作的动机是微博媒体的激增,如Twitter,可以用来检测和描述现实世界中的事件,如抗议、灾难或内乱。由于人群感知的数据很可能是分布式的,因此我们考虑这样一种架构:数据首先在多个边缘服务器(例如,cloudlets或存储库)上积累,然后进行汇总,而不是直接运送到最终目的地(例如,在远程云中)。该体系结构允许优雅地处理过载和带宽限制(例如,在容量受损的情况下,例如在灾难发生后)。当带宽不足时,我们的服务BigEye仅将非常有限的元数据从分布式边缘存储库传输到中央汇总器,但却支持对全球感兴趣的关键事件进行高度准确的检测和简明的汇总。然后可以将这些摘要发送给消费者(例如救援人员)。我们的仿真表明,在检测关键事件时,BigEye达到了与所有数据集中可用的系统相同的精度和召回值,而传输所有原始数据所需的带宽仅为1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge-Assisted Detection and Summarization of Key Global Events from Distributed Crowd-Sensed Data
This paper introduces a novel service for distributed detection and summarization of crowd-sensed events. The work is motivated by the proliferation of microblogging media, such as Twitter, that can be used to detect and describe events in the physical world, such as protests, disasters, or civil unrest. Since crowd-sensed data is likely to be distributed, we consider an architecture, where the data first accumulates across a plurality of edge servers (e.g. cloudlets or repositories) and is then summarized, rather than being shipped directly to its ultimate destination (e.g., in a remote cloud). The architecture allows graceful handling of overload and bandwidth limitations (e.g., in scenarios where capacity is impaired, as the case might be after a disaster). When bandwidth is scarce, our service, BigEye, only transfers very limited metadata from the distributed edge repositories to the central summarizer and yet supports highly accurate detection and concise summarization of key events of global interest. These summaries can then be sent to consumers (e.g., rescue personnel). Our emulations show that BigEye achieves the same precision and recall values in detecting key events as a system where all data is available centrally, while consuming only 1% of the bandwidth needed to transmit all raw data.
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