故事情节:在没有位置信息的社交空间中进行无监督的地理事件解复用

Shiguang Wang, P. Giridhar, Hongwei Wang, Lance M. Kaplan, T. Pham, A. Yener, T. Abdelzaher
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引用次数: 10

摘要

在城市地区部署最广泛的一些物联网设备是城市个人拥有的智能手机。它们的扩散导致了众测/众包服务的出现,在这些服务中,人们(使用手机)收集有关其环境的数据,而服务器则为各种感兴趣的应用目的聚合数据。随着社交媒体的出现,人类数据输入的一种常见替代形式已经成为媒体帖子(例如,在Twitter上)。这导致了在社交媒体内容之上建立众测服务的前景,利用人类作为“传感器”。在本文中,我们开发了一个这样的服务,称为{\em故事线}。该服务检测和跟踪用户感兴趣的物理城市事件,例如车祸、基础设施损坏(在自然灾害之后)或国内动乱的实例。它为客户端软件提供了一个接口,允许实时浏览这些事件,还为软件应用程序提供了一个接口,用于结构化表示事件及其相关统计数据。该服务包含了使用社交媒体数据进行实时检测、解复用和跟踪物理事件的新算法。在我们对Twitter feed的评估中,我们表明我们的服务在事件检测和解复用方面优于两个最先进的基线。我们还进行了两个案例研究,以展示我们系统的实时事件检测能力和事件跟踪性能的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
StoryLine: Unsupervised Geo-event Demultiplexing in Social Spaces without Location Information
Some of the most widely deployed IoT devices in urban areas are smartphones in the possession of urban individuals. Their proliferation has led to the emergence of crowdsensing/crowdsourcing services, where humans collect data about their environment (using phones), and servers aggregate the data for various application purposes of interest. With the emergence of social media, a common alternative form of human data entry has become media posts (e.g., on Twitter). This leads to the prospect of building crowdsensing services on top of social media content, exploiting humans as ``sensors". In this paper, we develop one such service, called {\em StoryLine}. The service detects and tracks physical urban events of interest to the user, such as car accidents, infrastructure damage (in the aftermath of a natural disaster), or instances of civil unrest. It offers an interface to client-side software that allows browsing such events in real time, as well as an interface for software applications to a structured representation of the events and their related statistics. The service embodies novel algorithms for real-time detection, demultiplexing, and tracking of physical events using social media data. In our evaluation with Twitter feeds, we show that our service outperforms two state-of-the-art baselines in event detection and demultiplexing. We also conduct two case-studies to show the effectiveness of the real-time event detection capability and event tracking performance of our system.
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