Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation

Data sparseness and cold start problems caused by unbalanced data distribution restrict the further development of personalized recommendation systems. With the rise of transfer learning technology, cross-domain recommendation based on transfer learning provides possibility to solve such problems. T...

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Main Author: REN Hao, LIU Baisong, SUN Jinyang
Format: Article
Language:zho
Published: Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press 2020-11-01
Series:Jisuanji kexue yu tansuo
Subjects:
Online Access:http://fcst.ceaj.org/CN/abstract/abstract2435.shtml
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author REN Hao, LIU Baisong, SUN Jinyang
author_facet REN Hao, LIU Baisong, SUN Jinyang
author_sort REN Hao, LIU Baisong, SUN Jinyang
collection DOAJ
description Data sparseness and cold start problems caused by unbalanced data distribution restrict the further development of personalized recommendation systems. With the rise of transfer learning technology, cross-domain recommendation based on transfer learning provides possibility to solve such problems. This kind of algorithm can solve the recommendation task in the target domain by transferring appropriate auxiliary domain knowledge which is different but related to the target domain, and improve the performance of target recommendation task in the target domain. The unique advantage of deep learning in non-linear feature learning and representation has greatly improved the performance of deep cross-domain recommendation algorithms. A review of cross-domain recommendation algorithms for knowledge transfer in recent years is carried out. The state-of-the-art algorithms are divided into two categories: cross-domain recommendation and deep cross-domain recommendation. According to different knowledge transfer technologies, they are sorted and summarized separately. And then various algorithms are analyzed and compared in depth from different perspectives such as model interpretability, applicable scenarios, user characteristics, model evaluation, etc. Finally, this paper summarizes the existing problems and dificiencies of existing algorithms, explores passible solutions and forecasts the future development trend.
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spelling doaj.art-28be0087681c4637bd9491b7e9293c0d2022-12-21T18:39:29ZzhoJournal of Computer Engineering and Applications Beijing Co., Ltd., Science PressJisuanji kexue yu tansuo1673-94182020-11-0114111813182710.3778/j.issn.1673-9418.2006053Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendationREN Hao, LIU Baisong, SUN Jinyang0Faculty of Information Science and Engineering, Ningbo University, Ningbo, Zhejiang 315211, ChinaData sparseness and cold start problems caused by unbalanced data distribution restrict the further development of personalized recommendation systems. With the rise of transfer learning technology, cross-domain recommendation based on transfer learning provides possibility to solve such problems. This kind of algorithm can solve the recommendation task in the target domain by transferring appropriate auxiliary domain knowledge which is different but related to the target domain, and improve the performance of target recommendation task in the target domain. The unique advantage of deep learning in non-linear feature learning and representation has greatly improved the performance of deep cross-domain recommendation algorithms. A review of cross-domain recommendation algorithms for knowledge transfer in recent years is carried out. The state-of-the-art algorithms are divided into two categories: cross-domain recommendation and deep cross-domain recommendation. According to different knowledge transfer technologies, they are sorted and summarized separately. And then various algorithms are analyzed and compared in depth from different perspectives such as model interpretability, applicable scenarios, user characteristics, model evaluation, etc. Finally, this paper summarizes the existing problems and dificiencies of existing algorithms, explores passible solutions and forecasts the future development trend.http://fcst.ceaj.org/CN/abstract/abstract2435.shtmldata sparsitytransfer learningknowledge transfercross-domain recommendation
spellingShingle REN Hao, LIU Baisong, SUN Jinyang
Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
Jisuanji kexue yu tansuo
data sparsity
transfer learning
knowledge transfer
cross-domain recommendation
title Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
title_full Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
title_fullStr Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
title_full_unstemmed Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
title_short Advances and Perspectives on Knowledge Transfer Based Cross-Domain Recom-mendation
title_sort advances and perspectives on knowledge transfer based cross domain recom mendation
topic data sparsity
transfer learning
knowledge transfer
cross-domain recommendation
url http://fcst.ceaj.org/CN/abstract/abstract2435.shtml
work_keys_str_mv AT renhaoliubaisongsunjinyang advancesandperspectivesonknowledgetransferbasedcrossdomainrecommendation