A Knowledge-Enhanced Deep Recommendation Framework Incorporating GAN-Based Models

Deqing Yang, Zikai Guo, Ziyi Wang, Juyang Jiang, Yanghua Xiao, Wei Wang
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引用次数: 33

Abstract

Although many researchers of recommender systems have noted that encoding user-item interactions based on DNNs promotes the performance of collaborative filtering, they ignore that embedding the latent features collected from external sources, e.g., knowledge graphs (KGs), is able to produce more precise recommendation results. Furthermore, CF-based models are still vulnerable to the scenarios of sparse known user-item interactions. In this paper, towards movie recommendation, we propose a novel knowledge-enhanced deep recommendation framework incorporating GAN-based models to acquire robust performance. Specifically, our framework first imports various feature embeddings distilled not only from user-movie interactions, but also from KGs and tags, to constitute initial user/movie representations. Then, user/movie representations are fed into a generator and a discriminator simultaneously to learn final optimal representations through adversarial training, which are conducive to generating better recommendation results. The extensive experiments on a real Douban dataset demonstrate our framework's superiority over some state-of-the-art recommendation models, especially in the scenarios of sparse observed user-movie interactions.
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基于gan模型的知识增强深度推荐框架
尽管许多推荐系统的研究人员已经注意到,基于dnn编码用户-物品交互可以提高协同过滤的性能,但他们忽略了嵌入从外部来源收集的潜在特征,例如知识图(KGs),能够产生更精确的推荐结果。此外,基于cf的模型仍然容易受到稀疏已知用户-项目交互场景的影响。在本文中,针对电影推荐,我们提出了一种新的基于gan模型的知识增强深度推荐框架,以获得鲁棒性。具体来说,我们的框架首先导入各种特征嵌入,这些特征嵌入不仅来自用户与电影的交互,还来自KGs和标签,以构成初始的用户/电影表示。然后,将用户/电影表示同时馈送到生成器和判别器中,通过对抗性训练学习最终的最优表示,有利于生成更好的推荐结果。在豆瓣真实数据集上的大量实验表明,我们的框架优于一些最先进的推荐模型,特别是在稀疏观察到的用户-电影交互场景中。
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