-
- Renhe Jiang
- The University of Tokyo, Kashiwa, Japan
-
- Xuan Song
- SUSTech-UTokyo Joint Research Center on Super Smart City, Southern University of Science and Technology, The University of Tokyo, Shenzhen, China
-
- Zipei Fan
- SUSTech-UTokyo Joint Research Center on Super Smart City, Southern University of Science and Technology, The University of Tokyo, Kashiwa, Japan
-
- Tianqi Xia
- The University of Tokyo, Kashiwa, Japan
-
- Zhaonan Wang
- The University of Tokyo, Kashiwa, Japan
-
- Quanjun Chen
- SUSTech-UTokyo Joint Research Center on Super Smart City, Southern University of Science and Technology, The University of Tokyo, Kashiwa, Japan
-
- Zekun Cai
- The University of Tokyo, Kashiwa, Japan
-
- Ryosuke Shibasaki
- The University of Tokyo, Kashiwa, Japan
説明
<jats:p>Rapidly developing location acquisition technologies provide a powerful tool for understanding and predicting human mobility in cities, which is very significant for urban planning, traffic regulation, and emergency management. However, with the existing methodologies, it is still difficult to accurately predict millions of peoples’ mobility in a large urban area such as Tokyo, Shanghai, and Hong Kong, especially when collected data used for model training are often limited to a small portion of the total population. Obviously, human activities in city are closely linked with point-of-interest (POI) information, which can reflect the semantic meaning of human mobility. This motivates us to fuse human mobility data and city POI data to improve the prediction performance with limited training data, but current fusion technologies can hardly handle these two heterogeneous data. Therefore, we propose a unique POI-embedding mechanism, that aggregates the regional POIs by categories to generate an artificial POI-image for each urban grid and enriches each trajectory snippet to a four-dimensional tensor in an analogous manner to a short video. Then, we design a deep learning architecture combining CNN with LSTM to simultaneously capture both the spatiotemporal and geographical information from the enriched trajectories. Furthermore, transfer learning is employed to transfer mobility knowledge from one city to another, so that we can fully utilize other cities’ data to train a stronger model for the target city with only limited data available. Finally, we achieve satisfactory performance of human mobility prediction at the citywide level using a limited amount of trajectories as training data, which has been validated over five urban areas of different types and scales.</jats:p>
収録刊行物
-
- ACM/IMS Transactions on Data Science
-
ACM/IMS Transactions on Data Science 2 (1), 1-26, 2021-01-03
Association for Computing Machinery (ACM)
- Tweet
詳細情報 詳細情報について
-
- CRID
- 1360009142919268864
-
- DOI
- 10.1145/3416914
-
- ISSN
- 26911922
-
- データソース種別
-
- Crossref
- KAKEN