基于异构图神经网络的电影推荐系统

Khalil Ur Rahman, Huifang Ma, Ali Arshad, Azad Khan Baheer
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引用次数: 0

摘要

异构图神经网络(gnn)作为一种鲁棒的基于深度学习的图表示技术,表现出了良好的性能,并得到了广泛的研究。尽管它已经充分考虑了具有大量链接和节点的网络,但异构性和语义数据量提供了重大障碍。注意机制是深度学习中最有趣的新发展之一,在许多领域都有很大的潜力。本研究展示了一个具有两个关键属性的系统,用于嵌入用户和电影。该框架利用gnn实现了多层次语义关注。我们合并了IMDB和Netflix电影和电视节目数据集,并将它们合并为一个统一的数据集,进一步用于结果分析。本文主要研究了一种基于异构图和多层次语义的电影推荐技术。我们提出了一个框架,结合观众和导演作为一个实体。在研究过程中,我们还按照提出的框架将两个数据集结合起来。然后,我们评估了图神经网络在异构图上的性能。我们发现,在使用所提出的技术时,所提出的模型优于当前的方法。我们的模型基于多层语义的框架显示了有效的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Movie Recommender System Based On Heterogeneous Graph Neural Networks
Heterogeneous Graph Neural Networks (GNNs) have shown good performance as a robust deep learning-based graph representation technique and have gained much research interest. Although it has adequately taken into account networks with a number of links and nodes, heterogeneity and the volume of semantic data provide significant obstacles. The attention mechanism, having great potential in a variety of areas, is one of the most interesting new developments in deep learning. This research demonstrates a system with two crucial attributes for embedding users and movies. The proposed framework achieves multi-level semantic attention using GNNs. We incorporated IMDB and Netflix Movie and TV Show datasets and merged them into a single consolidated dataset that was further utilized for results analysis. This paper mainly contributes a technique for movie recommendation using heterogeneous graphs and multi-level Semitics. We have proposed a framework that incorporates viewer and Director as an entity. During the research, we also combined two datasets in accordance with the proposed framework. After that, we evaluated the performance of the graph neural network on the heterogeneous graph. We discovered that the proposed model outperformed the current methodologies while using the proposed technique. Our model multilevel-Semitics-based framework shows effective results.
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