A time-aware trajectory embedding model for next-location recommendation
Next-location recommendation is an emerging task with the proliferation of location-based services. It is the task of recommending the next location to visit for a user, given her past check-in records. Although several principled solutions have been proposed for this task, existing studies have not...
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sg-ntu-dr.10356-1392512020-05-18T06:52:09Z A time-aware trajectory embedding model for next-location recommendation Zhao, Wayne Xin Zhou, Ningnan Sun, Aixin Wen, Ji-Rong Han, Jialong Chang, Edward Y. School of Computer Science and Engineering Engineering::Computer science and engineering Next-location Recommendation Distributed Representation Learning Next-location recommendation is an emerging task with the proliferation of location-based services. It is the task of recommending the next location to visit for a user, given her past check-in records. Although several principled solutions have been proposed for this task, existing studies have not well characterized the temporal factors in the recommendation. From three real-world datasets, our quantitative analysis reveals that temporal factors play an important role in next-location recommendation, including the periodical temporal preference and dynamic personal preference. In this paper, we propose a Time-Aware Trajectory Embedding Model (TA-TEM) to incorporate three kinds of temporal factors in next-location recommendation. Based on distributed representation learning, the proposed TA-TEM jointly models multiple kinds of temporal factors in a unified manner. TA-TEM also enhances the sequential context by using a longer context window. Experiments show that TA-TEM outperforms several competitive baselines. 2020-05-18T06:52:08Z 2020-05-18T06:52:08Z 2017 Journal Article Zhao, W. X., Zhou, N., Sun, A., Wen, J.-R., Han, J., & Chang, E. Y. (2018). A time-aware trajectory embedding model for next-location recommendation. Knowledge and Information Systems, 56(3), 559-579. doi:10.1007/s10115-017-1107-4 0219-1377 https://hdl.handle.net/10356/139251 10.1007/s10115-017-1107-4 2-s2.0-85030562483 3 56 559 579 en Knowledge and Information Systems © 2017 Springer-Verlag London Ltd. All rights reserved. |
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Engineering::Computer science and engineering Next-location Recommendation Distributed Representation Learning |
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Engineering::Computer science and engineering Next-location Recommendation Distributed Representation Learning Zhao, Wayne Xin Zhou, Ningnan Sun, Aixin Wen, Ji-Rong Han, Jialong Chang, Edward Y. A time-aware trajectory embedding model for next-location recommendation |
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Next-location recommendation is an emerging task with the proliferation of location-based services. It is the task of recommending the next location to visit for a user, given her past check-in records. Although several principled solutions have been proposed for this task, existing studies have not well characterized the temporal factors in the recommendation. From three real-world datasets, our quantitative analysis reveals that temporal factors play an important role in next-location recommendation, including the periodical temporal preference and dynamic personal preference. In this paper, we propose a Time-Aware Trajectory Embedding Model (TA-TEM) to incorporate three kinds of temporal factors in next-location recommendation. Based on distributed representation learning, the proposed TA-TEM jointly models multiple kinds of temporal factors in a unified manner. TA-TEM also enhances the sequential context by using a longer context window. Experiments show that TA-TEM outperforms several competitive baselines. |
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School of Computer Science and Engineering |
author_facet |
School of Computer Science and Engineering Zhao, Wayne Xin Zhou, Ningnan Sun, Aixin Wen, Ji-Rong Han, Jialong Chang, Edward Y. |
format |
Article |
author |
Zhao, Wayne Xin Zhou, Ningnan Sun, Aixin Wen, Ji-Rong Han, Jialong Chang, Edward Y. |
author_sort |
Zhao, Wayne Xin |
title |
A time-aware trajectory embedding model for next-location recommendation |
title_short |
A time-aware trajectory embedding model for next-location recommendation |
title_full |
A time-aware trajectory embedding model for next-location recommendation |
title_fullStr |
A time-aware trajectory embedding model for next-location recommendation |
title_full_unstemmed |
A time-aware trajectory embedding model for next-location recommendation |
title_sort |
time-aware trajectory embedding model for next-location recommendation |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/139251 |
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1681057013834973184 |