Hybrid Variational Autoencoder for Recommender Systems

Hangbin Zhang, R. Wong, Victor W. Chu
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引用次数: 4

Abstract

E-commerce platforms heavily rely on automatic personalized recommender systems, e.g., collaborative filtering models, to improve customer experience. Some hybrid models have been proposed recently to address the deficiency of existing models. However, their performances drop significantly when the dataset is sparse. Most of the recent works failed to fully address this shortcoming. At most, some of them only tried to alleviate the problem by considering either user side or item side content information. In this article, we propose a novel recommender model called Hybrid Variational Autoencoder (HVAE) to improve the performance on sparse datasets. Different from the existing approaches, we encode both user and item information into a latent space for semantic relevance measurement. In parallel, we utilize collaborative filtering to find the implicit factors of users and items, and combine their outputs to deliver a hybrid solution. In addition, we compare the performance of Gaussian distribution and multinomial distribution in learning the representations of the textual data. Our experiment results show that HVAE is able to significantly outperform state-of-the-art models with robust performance.
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用于推荐系统的混合变分自编码器
电子商务平台在很大程度上依赖于自动个性化推荐系统,例如协同过滤模型,来改善客户体验。为了解决现有模型的不足,最近提出了一些混合模型。然而,当数据集稀疏时,它们的性能会显著下降。最近的大部分工作都未能充分解决这一缺点。最多,他们中的一些人只是试图通过考虑用户端或项目端内容信息来缓解问题。在本文中,我们提出了一种新的推荐模型,称为混合变分自编码器(HVAE),以提高在稀疏数据集上的性能。与现有方法不同的是,我们将用户和项目信息编码到一个潜在空间中进行语义相关性测量。同时,我们利用协同过滤来寻找用户和项目的隐含因素,并将它们的输出组合在一起以提供混合解决方案。此外,我们还比较了高斯分布和多项分布在学习文本数据表示方面的性能。我们的实验结果表明,HVAE能够显著优于最先进的模型,具有鲁棒性。
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