Robust recommendation aims at capturing true preference of users from noisy data, for which there are two lines of methods have been proposed. One is based on noise injection, and the other is to adopt the generative model Variational Auto-encoder (VAE). However, the existing works still face two challenges. First, the noise injection based methods often draw the noise from a fixed noise distribution given in advance, while in real world, the noise distributions of different users and items may differ from each other due to personal behaviors and item usage patterns. Second, the VAE based models are not expressive enough to capture the true preference since VAE often yields an embedding space of a single modal, while in real world, user-item interactions usually exhibit multi-modality on user preference distribution. In this paper, we propose a novel model called Dual Adversarial Variational Embedding (DAVE) for robust recommendation, which can provide personalized noise reduction for different users and items, and capture the multi-modality of the embedding space, by combining the advantages of VAE and adversarial training between the introduced auxiliary discriminators and the variational inference networks. The extensive experiments conducted on real datasets verify the effectiveness of DAVE on robust recommendation.
翻译:强力建议旨在从噪音数据中捕捉用户的真正偏好,为此提出了两行方法。一是注入噪音,另一是采用基因模型变异自动编码器(VAE),但现有工作仍面临两个挑战。第一,以噪音注入为基础的方法往往从预先提供的固定噪音分布中提取噪音,而在现实世界中,不同用户和物品的噪音分布可能因个人行为和物品使用模式而不同。第二,基于VAE的模型不够明确,无法反映真正的偏好,因为VAE往往产生单一模式的嵌入空间,而在现实世界中,用户-项目互动通常展示用户偏好分布的多种模式。在本文件中,我们提出了一个名为“双对向动动动动动动动动动动动动嵌嵌(DAVAVE)”的新模型,用于提出稳健的建议,为不同的用户和物品提供个性化的噪音减少,并捕捉嵌入空间的多模式,方法是将VAEE和对立式模型的优势结合起来,同时在现实世界中,用户偏好地验证了对真实数据进行的巨大变换。