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Tytuł pozycji:

Recommendation Algorithm Combining Knowledge Graph and Short-Term Preferences

Tytuł:
Recommendation Algorithm Combining Knowledge Graph and Short-Term Preferences
Autorzy:
GAO Yang, LIU Yuan
Temat:
recommender systems
knowledge graph
short-term preferences
preference propagation
multi-task learning
Electronic computers. Computer science
QA75.5-76.95
Źródło:
Jisuanji kexue yu tansuo, Vol 15, Iss 6, Pp 1133-1144 (2021)
Wydawca:
Journal of Computer Engineering and Applications Beijing Co., Ltd., Science Press, 2021.
Rok publikacji:
2021
Kolekcja:
LCC:Electronic computers. Computer science
Typ dokumentu:
article
Opis pliku:
electronic resource
Język:
Chinese
ISSN:
1673-9418
Relacje:
http://fcst.ceaj.org/CN/abstract/abstract2727.shtml; https://doaj.org/toc/1673-9418
DOI:
10.3778/j.issn.1673-9418.2008059
Dostęp URL:
https://doaj.org/article/4495574547ae4934969cf1d48fa8cdfc  Link otwiera się w nowym oknie
Numer akcesji:
edsdoj.4495574547ae4934969cf1d48fa8cdfc
Czasopismo naukowe
In recent years, attention has been paid to knowledge graph as auxiliary information to enhance recom-mendation increasedly. Since the goal of the knowledge graph learning task is to restore the relationship of the triples in the knowledge graph, rather than to accomplish the recommendation task, it is difficult for the knowledge graph learning task to efficiently help the recommendation task improve the recommendation performance. In addition, user's interest is easily affected by short-term environment and mood. This paper proposes a recommendation model that is a multi-task feature learning approach for knowledge graph and short-term preferences enhanced recommendation (MKASR) in response to the above two points. Firstly, the RippleNet algorithm is used to extract the relationship pairs between the user and the knowledge graph entity, and then these relationship pairs are stored in the form of knowledge graph triples for participating in training. The bidirectional GRU (gate recurrent unit) network based on the attention mechanism is adopted from the user's recent interaction sequence of items to extract the user's short-term preferences. Secondly, this paper uses the multi-task learning method to train the knowledge graph learning module and the recommendation module. And the feature representation between user and item can be obtained. Finally, these feature representations and the short-term preferences of users are taken into account to make comprehensive recommendations to users. The experiments on real MovieLens-1M and Book-Crossing datasets demonstrate that the proposed model has improved performance compared with other recommendation algorithms in AUC, ACC, Precision and Recall evaluation indexes.

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