A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System

For cross-domain recommendation, it can be divided into strong correlation and weak correlation problems according to the consistency between auxiliary domain and target domain. The weak correlation problem is more practical than the strong correlation problem, and the solution is more difficult. Th...

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Main Authors: Lanting Wang, Yu Xin
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
CCA
Online Access:https://ieeexplore.ieee.org/document/9404173/
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spelling doaj-bc4c682e43c946a384d3677e929bf78a2021-04-23T23:01:11ZengIEEEIEEE Access2169-35362021-01-019605436055210.1109/ACCESS.2021.30731969404173A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation SystemLanting Wang0https://orcid.org/0000-0001-8980-1565Yu Xin1Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, ChinaFaculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, ChinaFor cross-domain recommendation, it can be divided into strong correlation and weak correlation problems according to the consistency between auxiliary domain and target domain. The weak correlation problem is more practical than the strong correlation problem, and the solution is more difficult. The difficulty lies in how to establish an effective transfer model, to make sure the auxiliary domain and the target domain can perform effective collaborative training. For weak correlation problem, if the item-side of auxiliary domain and the target domain are not aligned, or the transfer model has a strong dependency on the user-side of the auxiliary domain, it will seriously affect the effect of cross-domain recommendation. To solve these problems mentioned above, we propose a CCA-based item-side alignment method (CIAM) by introducing: (1) item side alignment method. We use CCA to align the item side between auxiliary and target domain, to intensify the weak correlation between 2 domains. (2) the transfer model of retaining the user feature of target domain. The CIAM retained user features of target domain in UV decomposition, that makes the transfer model could not destroy the user feature between 2 domains. The proposed CIAM can improve the assistance of auxiliary domain, and can avoid the influence of the needless user-side of the auxiliary do-main on cross-domain recommendation. By experimental analysis, it can be verified that the proposed CIAM algorithm has a better performance than general cross-domain recommendation methods.https://ieeexplore.ieee.org/document/9404173/CCAcross-domain recommendationitem-side alignmenttransfer learning
collection DOAJ
language English
format Article
sources DOAJ
author Lanting Wang
Yu Xin
spellingShingle Lanting Wang
Yu Xin
A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
IEEE Access
CCA
cross-domain recommendation
item-side alignment
transfer learning
author_facet Lanting Wang
Yu Xin
author_sort Lanting Wang
title A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
title_short A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
title_full A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
title_fullStr A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
title_full_unstemmed A CCA-Based Item-Side Alignment Method for Cross-Domain Recommendation System
title_sort cca-based item-side alignment method for cross-domain recommendation system
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description For cross-domain recommendation, it can be divided into strong correlation and weak correlation problems according to the consistency between auxiliary domain and target domain. The weak correlation problem is more practical than the strong correlation problem, and the solution is more difficult. The difficulty lies in how to establish an effective transfer model, to make sure the auxiliary domain and the target domain can perform effective collaborative training. For weak correlation problem, if the item-side of auxiliary domain and the target domain are not aligned, or the transfer model has a strong dependency on the user-side of the auxiliary domain, it will seriously affect the effect of cross-domain recommendation. To solve these problems mentioned above, we propose a CCA-based item-side alignment method (CIAM) by introducing: (1) item side alignment method. We use CCA to align the item side between auxiliary and target domain, to intensify the weak correlation between 2 domains. (2) the transfer model of retaining the user feature of target domain. The CIAM retained user features of target domain in UV decomposition, that makes the transfer model could not destroy the user feature between 2 domains. The proposed CIAM can improve the assistance of auxiliary domain, and can avoid the influence of the needless user-side of the auxiliary do-main on cross-domain recommendation. By experimental analysis, it can be verified that the proposed CIAM algorithm has a better performance than general cross-domain recommendation methods.
topic CCA
cross-domain recommendation
item-side alignment
transfer learning
url https://ieeexplore.ieee.org/document/9404173/
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AT yuxin accabaseditemsidealignmentmethodforcrossdomainrecommendationsystem
AT lantingwang ccabaseditemsidealignmentmethodforcrossdomainrecommendationsystem
AT yuxin ccabaseditemsidealignmentmethodforcrossdomainrecommendationsystem
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