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Behavioural data mining of transit smart card data: A data fusion approach

机译:公交智能卡数据的行为数据挖掘:一种数据融合方法

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摘要

The aim of this study is to develop a data fusion methodology for estimating behavioural attributes of trips using smart card data to observe continuous long-term changes in the attributes of trips. The method is intended to enhance understanding of travellers' behaviour during monitoring the smart card data. In order to supplement absent behavioural attributes in the smart card data, this study developed a data fusion methodology of smart card data with the person trip survey data with the naive Bayes probabilistic model. A model for estimating the trip purpose is derived from the person trip survey data. By using the model, trip purposes are estimated as supplementary behavioural attributes of the trips observed in the smart card data. The validation analysis showed that the proposed method successfully estimated the trip purposes in 86.2% of the validation data. The empirical data mining analysis showed that the proposed methodology can be applied to find and interpret the behavioural features observed in the smart card data which had been difficult to obtain from each independent dataset.
机译:这项研究的目的是开发一种数据融合方法,用于使用智能卡数据来评估行程属性的连续长期变化,从而估计行程的行为属性。该方法旨在增强在监视智能卡数据期间对旅行者行为的理解。为了补充智能卡数据中缺少的行为属性,本研究开发了一种智能卡数据与人行调查数据的数据融合方法,并具有朴素的贝叶斯概率模型。从人员出行调查数据中得出用于估计出行目的的模型。通过使用该模型,行程目的被估计为在智能卡数据中观察到的行程的补充行为属性。验证分析表明,该方法在验证数据的86.2%中成功估计了行程目的。经验数据挖掘分析表明,所提出的方法可用于发现和解释在智能卡数据中观察到的行为特征,这些行为特征很难从每个独立的数据集中获得。

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