TY - JOUR
T1 - Multi-relation global context learning for session-based recommendation
AU - Liu, Yishan
AU - Cao, Wenming
AU - Cao, Guitao
N1 - Publisher Copyright:
© 2023, Emerald Publishing Limited.
PY - 2023/10/20
Y1 - 2023/10/20
N2 - Purpose: Session-based recommendation aims to predict the user's next preference based on the user's recent activities. Although most existing studies consider the global characteristics of items, they only learn the global characteristics of items based on a single connection relationship, which cannot fully capture the complex transformation relationship between items. We believe that multiple relationships between items in learning sessions can improve the performance of session recommendation tasks and the scalability of recommendation models. At the same time, high-quality global features of the item help to explore the potential common preferences of users. Design/methodology/approach: This work proposes a session-based recommendation method with a multi-relation global context–enhanced network to capture this global transition relationship. Specifically, we construct a multi-relation global item graph based on a group of sessions, use a graded attention mechanism to learn different types of connection relations independently and obtain the global feature of the item according to the multi-relation weight. Findings: We did related experiments on three benchmark datasets. The experimental results show that our proposed model is superior to the existing state-of-the-art methods, which verifies the effectiveness of our model. Originality/value: First, we construct a multi-relation global item graph to learn the complex transition relations of the global context of the item and effectively mine the potential association of items between different sessions. Second, our model effectively improves the scalability of the model by obtaining high-quality item global features and enables some previously unconsidered items to make it onto the candidate list.
AB - Purpose: Session-based recommendation aims to predict the user's next preference based on the user's recent activities. Although most existing studies consider the global characteristics of items, they only learn the global characteristics of items based on a single connection relationship, which cannot fully capture the complex transformation relationship between items. We believe that multiple relationships between items in learning sessions can improve the performance of session recommendation tasks and the scalability of recommendation models. At the same time, high-quality global features of the item help to explore the potential common preferences of users. Design/methodology/approach: This work proposes a session-based recommendation method with a multi-relation global context–enhanced network to capture this global transition relationship. Specifically, we construct a multi-relation global item graph based on a group of sessions, use a graded attention mechanism to learn different types of connection relations independently and obtain the global feature of the item according to the multi-relation weight. Findings: We did related experiments on three benchmark datasets. The experimental results show that our proposed model is superior to the existing state-of-the-art methods, which verifies the effectiveness of our model. Originality/value: First, we construct a multi-relation global item graph to learn the complex transition relations of the global context of the item and effectively mine the potential association of items between different sessions. Second, our model effectively improves the scalability of the model by obtaining high-quality item global features and enables some previously unconsidered items to make it onto the candidate list.
KW - Global context
KW - Graded attention
KW - Graph neural network
KW - Multi-relation global graph
KW - Session-based recommendation
UR - https://www.scopus.com/pages/publications/85150769679
U2 - 10.1108/DTA-07-2022-0290
DO - 10.1108/DTA-07-2022-0290
M3 - 文章
AN - SCOPUS:85150769679
SN - 2514-9288
VL - 57
SP - 562
EP - 579
JO - Data Technologies and Applications
JF - Data Technologies and Applications
IS - 4
ER -