• Chỉ mục bởi
  • Năm xuất bản
LIÊN KẾT WEBSITE

A Lasso-based Collaborative Filtering Recommendation Model

Huynh College of Information and Communication Technology Can Tho University (CTU) Can Tho City, Viet Nam|
Nghia Quoc (57192960419) | Long (57673081500); Phan Assessment Office, Tra Vinh University (TVU) Tra Vinh Province, Viet Nam| Vien Quang (57674180100); Van Nguyen Information & Communication Technology Department Ministry of Public Security (MPS) Hanoi, Viet Nam| Hiep Xuan (57673631400); Dam Faculty of Information Technology Can Tho Vocational College (CTVC) Can Tho City, Viet Nam|

International Journal of Advanced Computer Science and Applications Số 4, năm 2022 (Tập 13, trang 509-514)

ISSN: 2158107X

ISSN: 2158107X

DOI:

Tài liệu thuộc danh mục:

Article

English

Từ khóa: Collaborative filtering; Matrix algebra; Regression analysis; Calculated values; Collaborative filtering recommendations; Feedback matrices; IBCF-LASSO; Item-based; Lasso regressions; New approaches; UBCF-LASSO; Value-based; Recommender systems
Tóm tắt tiếng anh
This paper proposes a new approach to solve the problem of lack of information in rating data due to new users or new items, or there is too little rating data of the user for items of the collaborative filtering recommendation models (CFR models). In this approach, we consider the similarity between users or items based on the lasso regression to build the CFR models. In the commonly used CFR models, the recommendation results are built only based on the feedback matrix of users. The results of our model are predicted based on two similarity calculated values: (1) the similarity calculated value based on the rating matrix; (2) the similarity calculated value based on the prediction results of the Lasso regression. The experimental results of the proposed models on two popular datasets have been processed and integrated into the recommenderlab package showed that the suggested models have higher accuracy than the commonly used CFR models. This result confirms that Lasso regression helps to deal with the lack of information in the rating data problem of the CFR models. � 2022. All Rights Reserved.

Xem chi tiết