首页 | 本学科首页   官方微博 | 高级检索  
     

融合多源图信息的图神经网络会话推荐算法
引用本文:林炜,吴开军. 融合多源图信息的图神经网络会话推荐算法[J]. 四川大学学报(自然科学版), 2022, 59(6): 062003
作者姓名:林炜  吴开军
作者单位:上海海洋大学信息学院,上海201306
基金项目:上海市科技创新计划项目
摘    要:现有的基于图神经网络的会话推荐算法通过将会话序列构筑为图形结构捕捉项目转换关系,能够有效提高推荐性能.然而多数图神经网络及其改进模型在建模会话时仅考虑会话序列中项目的单次转换关系,忽略了会话中包含的大量有效信息,同时缺乏对项目间隐藏关联性的分析.因此提出融合多源图信息的图神经网络会话推荐算法.将用户重复行为信息,项目内容关联信息纳入到会话图建模过程当中,有效提取项目更深层次的复杂转换关系,并通过线性转换进行聚合.此外采用外部注意力机制辅助获取会话序列项目隐藏关联信息,使得生成的会话向量在推荐过程中更加精确.在真实数据集Yoochoose和Diginetica上进行实验,实验结果表明该模型优于基准模型,特别地,相较于SR-GNN模型在MRR@20指标上提高了12.50%,能更好地预测用户的下一次点击项目.

关 键 词:序列信息  图信息  图神经网络  注意力机制  会话推荐
收稿时间:2022-02-07
修稿时间:2022-04-03

Graph neural networks combined with multi-source graph information for session-based recommendation
LIN Wei and WU Kai-Jun. Graph neural networks combined with multi-source graph information for session-based recommendation[J]. Journal of Sichuan University (Natural Science Edition), 2022, 59(6): 062003
Authors:LIN Wei and WU Kai-Jun
Affiliation:School of Information, Shanghai Ocean University,School of Information, Shanghai Ocean University
Abstract:Existing session-based recommendations with graph neural networks could capture the item''s transition relationship by constructing graph structures from sessions. However, most graph neural networks and their improved models only consider the single transition relationship of items in the session when modeling sessions. As a result, a large amount of effective information is ignored, and the analysis of hidden correlations between items is lacking. Therefore, a session-based recommendation algorithm with graph neural network and multi-source graph information is proposed. In the algorithm, the users'' repeat behavior information and item content related information are incorporated into the session graph modeling process, which effectively extracts the deeper complex transformation relationship of items, and aggregates it through linear transformations. In addition, an external attention mechanism is used to obtain the hidden association information of the session sequence items, making the generated session vectors more accurate. The experiments were performed on the real datasets: Yoochoose and Diginetica, and the results showed that the model outperformed the benchmark model. In particularly, it outperforms the state-of-the-art benchmark model GC-SAN, on average by 12.50% in terms of the MRR@20 evaluation metric, and can better predict user''s next click items.
Keywords:Session information   Graph information   Graph neural network   Attention mechanism   Session-based recommendation
本文献已被 万方数据 等数据库收录!
点击此处可从《四川大学学报(自然科学版)》浏览原始摘要信息
点击此处可从《四川大学学报(自然科学版)》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号