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基于图卷积与外积的协同过滤推荐模型
引用本文:苏静.基于图卷积与外积的协同过滤推荐模型[J].计算机应用研究,2021,38(10):3044-3048.
作者姓名:苏静
作者单位:天津科技大学 人工智能学院,天津300457
基金项目:天津市自然科学基金资助项目(19JCYBJC15300);天津市教委项目(2018KJ105)
摘    要:推荐系统帮助用户主动找到满足其偏好的个性化物品并推荐给用户.协同过滤算法是推荐系统中较为经典的算法,但是其会受到数据冷启动和稀疏性的限制,具有可解释性差和模型泛化能力差等缺点.针对其缺点进行研究,通过将原始的评分矩阵以用户—项目二部图的形式作为输入,将图卷积神经网络设计为一种图自编码器的变体,通过迭代的聚合邻居节点信息得到用户和项目的潜在向量表示,并在其基础上结合卷积神经网络,提出了一种基于卷积矩阵分解的推荐算法,提升了模型的可解释性和泛化能力,同时融合辅助信息也解决了数据的稀疏性问题,并使推荐的性能分别得到了1.4%和1.7%的提升.为今后在基于图神经网络的推荐方向上提供了一种新的思路.

关 键 词:推荐系统  协同过滤  图神经网络  卷积神经网络  矩阵分解
收稿时间:2021/2/7 0:00:00
修稿时间:2021/9/14 0:00:00

Collaborative filtering recommendation model based on graph convolution and cross product
sujing.Collaborative filtering recommendation model based on graph convolution and cross product[J].Application Research of Computers,2021,38(10):3044-3048.
Authors:sujing
Affiliation:Tianjin University of Science and Technology
Abstract:The function of recommendation system is to help users actively finding personalized items that meet their preferences and recommend them to users. Collaborative filtering algorithm is a classic algorithm in recommender system, but it is limited by cold start of data and sparsity and has disadvantages such as poor interpretability and poor model generalization ability. This paper studied of its shortcomings. By taking the original score matrix in the form of user-project bipartite graph as input, designing the figure convolution neural network as a variant of graph autoencoder, which was obtained by the latent vector of user and item by iteratively aggregating neighbor node information, and combining CNN, this paper proposed a recommendation algorithm based on convolution matrix decomposition to improve the interpretability of the model and generalization ability. And also solved the auxiliary information fusion the data sparseness, and made recommendation performance improved by 1.4% and 1.7%. It provides a new idea for recommendation direction based on graph neural network in the future.
Keywords:recommended system  collaborative filtering  graph neural network(GNN)  convolutional neural network(CNN)  matrix factorization
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