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Cluster algorithm based on LDA model for public transport passengers' trip purpose identification in specific area

机译:基于LDA模型的聚类算法在特定区域公交乘客出行目的识别中的应用

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A better understanding of travel demand will enable transit authorities to evaluate the services they offer, adjust marketing strategies and improve overall transit performance. In this paper, we aim to develop a method to identify the trip purpose of passenger flow who have trips to commercial district. While the same region always has the different functions, it is fairly challenging to identify travel patterns for individual transit riders in a large dataset. To this end, we use the Latent Dirichlet Allocation algorithm to generate users' trip topic. And then, with the extraction of user topic distribution as the eigenvectors of the user, we cluster users into groups that have different trip purposes. The performance of the algorithm is compared with those of other prevailing classification algorithms. The results indicate that the proposed method outperforms other commonly used data-mining algorithms in terms of accuracy and efficiency.
机译:对旅行需求的更好理解将使运输当局能够评估他们提供的服务,调整营销策略并改善总体运输绩效。在本文中,我们旨在开发一种方法来识别出行到商业区的客流的出行目的。尽管同一地区始终具有不同的功能,但是要在大型数据集中为各个过境乘车者确定出行方式是相当困难的。为此,我们使用潜在Dirichlet分配算法来生成用户的出行主题。然后,通过提取用户主题分布作为用户的特征向量,我们将用户分为具有不同出行目的的组。将算法的性能与其他主流分类算法的性能进行比较。结果表明,该方法在准确性和效率上均优于其他常用的数据挖掘算法。

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