每年專案
摘要
Matrix factorization (MF) technique has been widely utilized in recommendation systems due to the precise prediction of users' interests. Prior MF-based methods adapt the overall rating to make the recommendation by extracting latent factors from users and items. However, in real applications, people's preferences usually vary with time; the traditional MF-based methods could not properly capture the change of users' interests. In this paper, by incorporating the recurrent neural network (RNN) into MF, we develop a novel recommendation system, M-RNN-F, to effectively describe the preference evolution of users over time. A learning model is proposed to capture the evolution pattern and predict the user preference in the future. The experimental results show that M-RNN-F performs better than other state-of-the-art recommendation algorithms. In addition, we conduct the experiments on real world dataset to demonstrate the practicability.
原文 | ???core.languages.en_GB??? |
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主出版物標題 | Proceedings - 2019 12th International Conference on Ubi-Media Computing, Ubi-Media 2019 |
發行者 | Institute of Electrical and Electronics Engineers Inc. |
頁面 | 42-46 |
頁數 | 5 |
ISBN(電子) | 9781728128207 |
DOIs | |
出版狀態 | 已出版 - 8月 2019 |
事件 | 12th International Conference on Ubi-Media Computing, Ubi-Media 2019 - Bali, Indonesia 持續時間: 6 8月 2019 → 9 8月 2019 |
出版系列
名字 | Proceedings - 2019 12th International Conference on Ubi-Media Computing, Ubi-Media 2019 |
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???event.eventtypes.event.conference??? | 12th International Conference on Ubi-Media Computing, Ubi-Media 2019 |
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國家/地區 | Indonesia |
城市 | Bali |
期間 | 6/08/19 → 9/08/19 |
指紋
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