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Survey of semantics-based recommendation algorithms

Version 2 2024-06-18, 06:40
Version 1 2023-10-25, 05:56
journal contribution
posted on 2024-06-18, 06:40 authored by ZH Huang, JW Zhang, B Zhang, J Yu, Y Xiang, DS Huang
Semantics-based recommendation technology has recently received a lot of attention in information services community. Compared with traditional recommendation algorithms, semantics-based recommendation algorithms have the marked advantages in the aspects of real-timing, robustness and recommendation quality. From the status and progress of domestic and foreign research, we summarize the following four aspects: semantics-based content recommendation algorithms, semantics-based collaborative filtering recommendation algorithms, semantics-based hybrid recommendation algorithms, and semantics-based social recommendation algorithms. And this paper is expected to provide a worthwhile reference for relevant researchers by detailedly analyzing semantics-based recommendation algorithms. Finally, we show readers the challenges and future research directions in this field.

History

Journal

Tien Tzu Hsueh Pao/Acta Electronica Sinica

Volume

44

Pagination

2262-2275

Location

Beijing, China

ISSN

0372-2112

Language

chi

Copyright notice

2016, Chinese Institute of Electronics

Issue

9

Publisher

Chinese Institute of Electronics

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