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- Title
MTLM: a multi-task learning model for travel time estimation.
- Authors
Xu, Saijun; Zhang, Ruoqian; Cheng, Wanjun; Xu, Jiajie
- Abstract
Travel time estimation (TTE) is an important research topic in many geographic applications for smart city research. However, existing approaches either ignore the impact of transportation modes, or assume the mode information is known for each training trajectory and the query input. In this paper, we propose a multi-task learning model for travel time estimation called MTLM, which recommends the appropriate transportation mode for users, and then estimates the related travel time of the path. It integrates transportation-mode recommendation task and travel time estimation task to capture the mutual influence between them for more accurate TTE results. Furthermore, it captures spatio-temporal dependencies and transportation mode effect by learning effective representations for TTE. It combines the transportation-mode recommendation loss and TTE loss for training. Extensive experiments on real datasets demonstrate the effectiveness of our proposed methods.
- Subjects
TIME perception; SMART cities
- Publication
GeoInformatica, 2022, Vol 26, Issue 2, p379
- ISSN
1384-6175
- Publication type
Article
- DOI
10.1007/s10707-020-00422-x