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Predicting taxi demand hotspots using automated Internet Search Queries

机译:使用自动Internet搜索查询预测出租车需求热点

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摘要

Disruptions due to special events are a well-known challenge in transport operations, since the transport system is typically designed for habitual demand. Part of the problem relates to the difficulty in collecting comprehensive and reliable information early enough to prepare mitigation measures.A tool that automatically scans the internet for events and predicts their impact would strongly support transport management in many cities in the world. This study addresses the challenges related to retrieving and analyzing web documents about real world events, and using them for demand explanation (if related to a past event) and prediction (if a future one).Transport demand is predicted with a supervised topic modeling algorithm by utilizing information about social events retrieved using various strategies, which made use of search aggregation, natural language processing, and query expansion. It was found that a two-step process produced the highest accuracy for transport demand prediction, where different (but related) queries are used to retrieve an initial set of documents, and then, based on these documents, a final query is constructed that obtains the set of predictive documents. These are then used to model the most discriminating topics related to the transport demand. A framework was proposed that sequentially handles all stages of data gathering, enrichment, and prediction with the intention of generating automated search queries.
机译:由于特殊事件造成的中断是运输操作中众所周知的挑战,因为运输系统通常是为习惯性需求而设计的。问题的一部分与难以及早收集全面而可靠的信息以制定缓解措施的困难有关。一种能够自动扫描互联网上事件并预测其影响的工具将为世界上许多城市的交通管理提供强有力的支持。这项研究解决了与检索和分析有关现实世界事件的Web文档并将其用于需求说明(如果与过去事件有关)和预测(如果将来要进行预测)有关的挑战。使用监督主题建模算法预测运输需求通过利用有关通过各种策略检索到的社交事件的信息,这些策略利用了搜索聚合,自然语言处理和查询扩展。发现,通过两步过程可以最准确地预测运输需求,其中使用不同(但相关)的查询来检索初始文档集,然后根据这些文档构造最终查询,以获取预测文件集。然后将这些用于建模与运输需求相关的最具区别性的主题。提出了一个框架,该框架顺序处理数据收集,充实和预测的所有阶段,以生成自动搜索查询。

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