Research commentary on recommendations with side information : a survey and research directions
Recommender systems have become an essential tool to help resolve the information overload problem in recent decades. Traditional recommender systems, however, suffer from data sparsity and cold start problems. To address these issues, a great number of recommendation algorithms have been proposed t...
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sg-ntu-dr.10356-1381802021-01-28T08:02:19Z Research commentary on recommendations with side information : a survey and research directions Sun, Zhu Guo, Qing Yang, Jie Fang, Hui Guo, Guibing Zhang, Jie Burke, Robin School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Side information Research commentary Recommender systems have become an essential tool to help resolve the information overload problem in recent decades. Traditional recommender systems, however, suffer from data sparsity and cold start problems. To address these issues, a great number of recommendation algorithms have been proposed to leverage side information of users or items (e.g., social network and item category), demonstrating a high degree of effectiveness in improving recommendation performance. This Research Commentary aims to provide a comprehensive and systematic survey of the recent research on recommender systems with side information. Specifically, we provide an overview of state-of-the-art recommendation algorithms with side information from two orthogonal perspectives. One involves the different methodologies of recommendation: the memory-based methods, latent factor, representation learning and deep learning models. The others cover different representations of side information, including structural data (flat, network, and hierarchical features, and knowledge graphs); and non-structural data (text, image and video features). Finally, we discuss challenges and provide new potential directions in recommendation, along with the conclusion of this survey. Accepted version 2020-04-28T02:12:25Z 2020-04-28T02:12:25Z 2019 Journal Article Sun, Z., Guo, Q., Yang, J., Fang, H., Guo, G., Zhang, J., & Burke, R. (2019). Research commentary on recommendations with side information : a survey and research directions. Electronic Commerce Research and Applications. Electronic Commerce Research and Applications, 37, 100879. doi:10.1016/j.elerap.2019.100879 1567-4223 https://hdl.handle.net/10356/138180 10.1016/j.elerap.2019.100879 2-s2.0-85072564292 37 100879 en SLE-RP6 Electronic Commerce Research and Applications © 2019 Elsevier. All rights reserved. This paper was published in Electronic Commerce Research and Applications and is made available with permission of Elsevier. application/pdf |
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Engineering::Electrical and electronic engineering Side information Research commentary Sun, Zhu Guo, Qing Yang, Jie Fang, Hui Guo, Guibing Zhang, Jie Burke, Robin Research commentary on recommendations with side information : a survey and research directions |
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Recommender systems have become an essential tool to help resolve the information overload problem in recent decades. Traditional recommender systems, however, suffer from data sparsity and cold start problems. To address these issues, a great number of recommendation algorithms have been proposed to leverage side information of users or items (e.g., social network and item category), demonstrating a high degree of effectiveness in improving recommendation performance. This Research Commentary aims to provide a comprehensive and systematic survey of the recent research on recommender systems with side information. Specifically, we provide an overview of state-of-the-art recommendation algorithms with side information from two orthogonal perspectives. One involves the different methodologies of recommendation: the memory-based methods, latent factor, representation learning and deep learning models. The others cover different representations of side information, including structural data (flat, network, and hierarchical features, and knowledge graphs); and non-structural data (text, image and video features). Finally, we discuss challenges and provide new potential directions in recommendation, along with the conclusion of this survey. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Sun, Zhu Guo, Qing Yang, Jie Fang, Hui Guo, Guibing Zhang, Jie Burke, Robin |
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Article |
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Sun, Zhu Guo, Qing Yang, Jie Fang, Hui Guo, Guibing Zhang, Jie Burke, Robin |
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Sun, Zhu |
title |
Research commentary on recommendations with side information : a survey and research directions |
title_short |
Research commentary on recommendations with side information : a survey and research directions |
title_full |
Research commentary on recommendations with side information : a survey and research directions |
title_fullStr |
Research commentary on recommendations with side information : a survey and research directions |
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Research commentary on recommendations with side information : a survey and research directions |
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research commentary on recommendations with side information : a survey and research directions |
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2020 |
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https://hdl.handle.net/10356/138180 |
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