使用与流量相关的命名实体对与流量事件相关的博客文章进行分类

A. Dundar Unsal, Hediye Tuydes-Yaman, Pinar Karagoz
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引用次数: 0

摘要

实时监控交通流量需要在道路网络上部署物理传感器。由于传感器在大规模网络上的部署成本,开发这种系统可能不切实际。本研究提出了一种从社交流中提取交通事件相关推文的方法,以便将社交媒体用户用作交通状况或事件的人类传感器。该方法为监测影响交通流的事件或条件提供了一种经济有效的方法。该方法包括三个步骤。第一步涉及自然语言处理任务,用于预处理博客文章。第二步使用由条件随机场构造的模型从博客文章文本中提取一组与流量事件相关的命名实体。第三步包括分类,以便检测报告影响流量的事件或情况的博客文章。在不同的特征集下,对一个月内收集的一组tweet进行了实验评估。结果显示了该方法用于流量监控的潜力,并揭示了使用与流量相关的命名实体可以提高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Event Related Blog Post Classification by Using Traffic Related Named Entities
Real-time monitoring of traffic flow requires physical sensors to be deployed on road networks. Development of such systems might be impractical due to deployment costs of sensors on large scale networks. This study presents a method to extract traffic event related tweets from social streams in order to employ users of social media as human sensors of traffic conditions or events. The proposed method offers a cost effective way of monitoring events or conditions affecting traffic flow. The method consists of three steps. The first step involves natural language processing tasks for preprocessing the blog posts. The second step extracts a set of traffic event related named entities from blog post texts using the model that is constructed with Conditional Random Fields. The third step includes classification in order to detect blog posts reporting events or conditions affecting traffic flow. The proposed method is experimentally evaluated on a set of tweets collected in one month under varying feature sets. The results show the potential of the approach for traffic monitoring and reveals that the use of traffic related named entities increases the classification accuracy.
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