基于句法的学习方法在交通异常事件地理定位中的应用

Yang Zhang, Xiangyu Dong, D. Zhang, Dong Wang
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引用次数: 7

摘要

社会感知是通过社交媒体探索“群体智慧”来观察物理世界的一种新的感知范式。本文主要研究基于社交媒体感知的异常交通事件定位问题。目前最先进的技术存在两个关键挑战:i)“仅限内容推断”:社交媒体帖子的有限和非结构化内容几乎无法提供准确推断所报告的交通事件位置的线索;Ii)“非正式和稀缺数据”:社交媒体帖子(如tweet)的语言是非正式的,报道异常流量事件的帖子数量往往很少。为了解决上述挑战,我们开发了SyntaxLoc,这是一个基于语法的概率学习框架,通过探索社交媒体内容的语法来准确识别位置实体。我们在纽约和洛杉矶进行了大量的实验,通过真实世界的案例研究来评估SyntaxLoc框架。评估结果表明,在准确识别可直接用于定位异常流量事件的位置实体方面,SyntaxLoc框架在最先进的基线上获得了显著的性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Syntax-based Learning Approach to Geo-locating Abnormal Traffic Events using Social Sensing
Social sensing has emerged as a new sensing paradigm to observe the physical world by exploring the “wisdom of crowd” on social media. This paper focuses on the abnormal traffic event localization problem using social media sensing. Two critical challenges exist in the state-of-the-arts: i) “content-only inference”: the limited and unstructured content of a social media post provides little clue to accurately infer the locations of the reported traffic events; ii) “informal and scarce data”: the language of the social media post (e.g., tweet) is informal and the number of the posts that report the abnormal traffic events is often quite small. To address the above challenges, we develop SyntaxLoc, a syntax-based probabilistic learning framework to accurately identify the location entities by exploring the syntax of social media content. We perform extensive experiments to evaluate the SyntaxLoc framework through real world case studies in both New York City and Los Angeles. Evaluation results demonstrate significant performance gains of the SyntaxLoc framework over state-of-the-art baselines in terms of accurately identifying the location entities that can be directly used to locate the abnormal traffic events.
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