Tensor Dirichlet Process Multinomial Mixture Model for Passenger Trajectory Clustering
Ziyue Li, Hao Yan, Chen Zhang, Andi Wang, Wolfgang Ketter, Lijun Sun,, Fugee Tsung

TL;DR
This paper introduces a tensor-based Dirichlet process mixture model for passenger trajectory clustering that automatically determines the number of clusters and incorporates spatial semantic graphs, improving clustering accuracy and scalability.
Contribution
The novel Tensor-DPMM model preserves hierarchical trip structures and automatically learns the number of clusters, with an innovative disband and relocate algorithm for better cluster management.
Findings
Clusters show higher within-cluster compactness.
Model effectively determines the number of clusters.
Improved clustering accuracy with spatial graph integration.
Abstract
Passenger clustering based on travel records is essential for transportation operators. However, existing methods cannot easily cluster the passengers due to the hierarchical structure of the passenger trip information, namely: each passenger has multiple trips, and each trip contains multi-dimensional multi-mode information. Furthermore, existing approaches rely on an accurate specification of the clustering number to start, which is difficult when millions of commuters are using the transport systems on a daily basis. In this paper, we propose a novel Tensor Dirichlet Process Multinomial Mixture model (Tensor-DPMM), which is designed to preserve the multi-mode and hierarchical structure of the multi-dimensional trip information via tensor, and cluster them in a unified one-step manner. The model also has the ability to determine the number of clusters automatically by using the…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Traffic Prediction and Management Techniques · Bayesian Methods and Mixture Models
MethodsEmirates Airlines Office in Dubai
