Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/100720
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Title: A network distance and graph-partitioning-based clustering method for improving the accuracy of urban hotspot detection
Authors: Zhao, P 
Liu, X 
Shen, J
Chen, M
Issue Date: 2019
Source: Geocarto international, 2019, v. 34, no. 3, p. 293-315
Abstract: Clustering is an important approach to identifying hotspots with broad applications, ranging from crime area analysis to transport prediction and urban planning. As an on-demand transport service, taxis play an important role in urban systems, and the pick-up and drop-off locations in taxi GPS trajectory data have been widely used to detect urban hotspots for various purposes. In this work, taxi drop-off events are represented as linear features in the context of the road network space. Based on such representation, instead of the most frequently used Euclidian distance, Jaccard distance is calculated to measure the similarity of road segments for cluster analysis, and further, a network distance and graph-partitioning-based clustering method is proposed for improving the accuracy of urban hotspot detection. A case study is conducted using taxi trajectory data collected from over 6500 taxis during one week, and the results indicate that the proposed method can identify urban hotspots more precisely.
Keywords: Graph-partitioning-based clustering
Hotspot detection
Network space
Spatiotemporal variations
Taxi trajectory
Publisher: Taylor & Francis
Journal: Geocarto international 
ISSN: 1010-6049
EISSN: 1752-0762
DOI: 10.1080/10106049.2017.1404140
Rights: © 2017 Informa UK Limited, trading as Taylor & Francis Group
This is an Accepted Manuscript of an article published by Taylor & Francis in Geocarto International on 29 Nov 2017 (published online), available at: http://www.tandfonline.com/10.1080/10106049.2017.1404140.
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