Recommending Pick-up Points for Taxi-drivers Based on Spatio-temporal Clustering

Using GPS trajectories to recommend pick-up points for taxi driver comes to be a promising approach of increasing profits and decreasing pollutions. In the existing methods, nearly all the GPS data of a city are computed for recommendation. However, it is time-consuming and not accurate enough owing...

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Bibliographic Details
Published in2012 International Conference on Cloud and Green Computing pp. 67 - 72
Main Authors Mingyue Zhang, Jianxun Liu, Yizhi Liu, Zhenyang Hu, Liang Yi
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.11.2012
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ISBN1467330272
9781467330275
DOI10.1109/CGC.2012.34

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Summary:Using GPS trajectories to recommend pick-up points for taxi driver comes to be a promising approach of increasing profits and decreasing pollutions. In the existing methods, nearly all the GPS data of a city are computed for recommendation. However, it is time-consuming and not accurate enough owing to too much spatio-temporal noise. Therefore, we propose a novel method of recommending pick-up for taxi driver based on spatio-temporal clustering. It is made up of data preprocessing and real-time recommendation. Firstly, we capture the historical pick-up points by analyzing their intervals. These points are clustered at different time and different regions to create candidate pick-up points. Secondly, after ranking the candidate pick-up points around the taxi, the top-5 valuable pick-up points are recommended for taxi drivers. The experimental results, whose data come from Microsoft Research Asia, show that our method can effectively recommend pick-up points for taxi drivers.
ISBN:1467330272
9781467330275
DOI:10.1109/CGC.2012.34