Enhancing VAEs for collaborative filtering: flexible priors & gating mechanisms

Daeryong Kim, B. Suh
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引用次数: 34

Abstract

Neural network based models for collaborative filtering have started to gain attention recently. One branch of research is based on using deep generative models to model user preferences where variational autoencoders were shown to produce state-of-the-art results. However, there are some potentially problematic characteristics of the current variational autoencoder for CF. The first is the too simplistic prior that VAEs incorporate for learning the latent representations of user preference. The other is the model's inability to learn deeper representations with more than one hidden layer for each network. Our goal is to incorporate appropriate techniques to mitigate the aforementioned problems of variational autoencoder CF and further improve the recommendation performance. Our work is the first to apply flexible priors to collaborative filtering and show that simple priors (in original VAEs) may be too restrictive to fully model user preferences and setting a more flexible prior gives significant gains. We experiment with the VampPrior, originally proposed for image generation, to examine the effect of flexible priors in CF. We also show that VampPriors coupled with gating mechanisms outperform SOTA results including the Variational Autoencoder for Collaborative Filtering by meaningful margins on 2 popular benchmark datasets (MovieLens & Netflix).
增强协同过滤的vae:灵活的先验和门控机制
近年来,基于神经网络的协同过滤模型开始受到人们的关注。研究的一个分支是基于使用深度生成模型来模拟用户偏好,其中变分自动编码器被证明可以产生最先进的结果。然而,目前CF的变分自编码器存在一些潜在的问题特征。首先是VAEs用于学习用户偏好的潜在表征的先验过于简单。另一个问题是该模型无法为每个网络学习具有多个隐藏层的更深层次表示。我们的目标是结合适当的技术来缓解上述变分自编码器CF的问题,并进一步提高推荐性能。我们的工作是第一个将灵活的先验应用于协同过滤,并表明简单的先验(在原始的VAEs中)可能过于严格,无法完全模拟用户偏好,而设置更灵活的先验可以获得显着的收益。我们使用最初用于图像生成的VampPrior进行实验,以检查灵活先验在CF中的影响。我们还表明,在两个流行的基准数据集(MovieLens和Netflix)上,VampPriors与门通机制相结合,其性能优于SOTA结果,包括用于协同过滤的变分自编码器。
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