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Real-time trip purpose prediction using online location-based search and discovery services

机译:使用基于在线位置的搜索和发现服务进行实时出行目的预测

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摘要

The use of smartphone technology is increasingly considered a state-of-the-art practice in travel data collection. Researchers have investigated various methods to automatically predict trip characteristics based upon locational and other smartphone sensing data. Of the trip characteristics being studied, trip purpose prediction has received relatively less attention. This research develops trip purpose prediction models based upon online location based search and discovery services (specifically, Google Places API) and a limited set of trip data that are usually available upon the completion of the trip. The models have the potential to be integrated with smartphone technology to produce real-time trip purpose prediction. We use a recent, large-scale travel behavior survey that is augmented by downloaded Google Places information on each trip destination to develop and validate the models. Two statistical and machine learning prediction approaches are used, including nested logit and random forest methods. Both sets of models show that Google Places information is a useful predictor of trip purpose-in situations where activity- and person-related information is uncollectable, missing, or unreliable. Even when activity and person-related information is available, incorporating Google Places information provides incremental improvements in trip purpose prediction. (C) 2017 Elsevier Ltd. All rights reserved.
机译:智能手机技术的使用越来越被认为是旅行数据收集中的最新实践。研究人员研究了各种基于位置和其他智能手机感应数据自动预测行程特征的方法。在正在研究的行程特征中,行程目的预测受到的关注相对较少。这项研究基于基于在线位置的搜索和发现服务(特别是Google Places API)以及旅行完成后通常可用的有限旅行数据集,开发了旅行目的预测模型。这些模型有可能与智能手机技术集成,以产生实时旅行目的预测。我们使用最近的大规模旅行行为调查,并通过在每个旅行目的地上下载Google Places信息进行补充,以开发和验证模型。使用了两种统计和机器学习预测方法,包括嵌套logit和随机森林方法。两组模型都表明,在无法收集,丢失或不可靠与活动和人有关的信息的情况下,Google地方信息可以有效地预测出行目的。即使有活动和与人有关的信息,合并Google地方信息也可以逐步改善旅行目的的预测。 (C)2017 Elsevier Ltd.保留所有权利。

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