利用基于sns的图结构计算交通拥塞度

Putu Y. Kusmawan, B. Hong, Seungwoo Jeon, Jiwan Lee, Joonho Kwon
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引用次数: 11

摘要

社交网站(SNS)的信息可能包含主观的交通信息,包括与拥堵相关的表达,如“糟糕的交通”或“交通疯了”。此外,它们还包含异构级别的位置信息,例如点(纬度、经度)、道路或地区名称,这使得收集相关交通信息的过程变得复杂。本文旨在通过计算交通拥堵程度,利用SNS消息来监测道路上的交通状况。该过程首先根据位置信息对与道路相关的SNS消息进行分类,并构建一个初始图结构来存储每条消息。由于位置类型的异构性,我们需要根据初始图的空间参考组合初始图结构。然后,我们可以通过使用基于规则的方法计算表达式得分来测量主观拥塞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computing traffic congestion degree using SNS-based graph structure
Social networking site (SNS) messages can contain subjective traffic information, including congestion-related expressions such as “bad traffic” or “traffic is crazy”. Moreover, they also contain heterogeneous levels of location information, such as a point (latitude, longitude), a road, or an area name, which complicates the process of collecting related traffic information. This paper aims to use SNS messages for monitoring traffic conditions on a road by computing the traffic congestion degree. The process begins by classifying those SNS messages that are related to a road in terms of location information and constructing an initial graph structure to store each message. Because of the heterogeneous location types, we need to combine the initial graph structures based on their spatial references. We can then measure the subjective congestion by computing an expression score using our rule-based approach.
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