DocumentCode
30193
Title
T-Finder: A Recommender System for Finding Passengers and Vacant Taxis
Author
Yuan, Nicholas Jing ; Yu Zheng ; Liuhang Zhang ; Xing Xie
Author_Institution
Microsoft Res. Asia, Beijing, China
Volume
25
Issue
10
fYear
2013
fDate
Oct. 2013
Firstpage
2390
Lastpage
2403
Abstract
This paper presents a recommender system for both taxi drivers and people expecting to take a taxi, using the knowledge of 1) passengers´ mobility patterns and 2) taxi drivers´ picking-up/dropping-off behaviors learned from the GPS trajectories of taxicabs. First, this recommender system provides taxi drivers with some locations and the routes to these locations, toward which they are more likely to pick up passengers quickly (during the routes or in these locations) and maximize the profit of the next trip. Second, it recommends people with some locations (within a walking distance) where they can easily find vacant taxis. In our method, we learn the above-mentioned knowledge (represented by probabilities) from GPS trajectories of taxis. Then, we feed the knowledge into a probabilistic model that estimates the profit of the candidate locations for a particular driver based on where and when the driver requests the recommendation. We build our system using historical trajectories generated by over 12,000 taxis during 110 days and validate the system with extensive evaluations including in-the-field user studies.
Keywords
Global Positioning System; recommender systems; traffic information systems; GPS trajectories; T-Finder; in-the-field user studies; passenger finding; profit maximization; recommender system; taxi driver picking-up-dropping-off behaviors; taxi drivers; taxicabs; vacant taxis; Global Positioning System; Probability; Recommender systems; Roads; Silicon; Trajectory; Vehicles; Global Positioning System; Location-based services; Probability; Recommender systems; Roads; Silicon; Trajectory; Vehicles; parking place detection; recommender systems; taxicabs; trajectories; urban computing;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2012.153
Filename
6261314
Link To Document