Deep Critiquing for VAE-based Recommender Systems

Kai Luo, Hojin Yang, Ga Wu, S. Sanner
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引用次数: 34

Abstract

Providing explanations for recommended items not only allows users to understand the reason for receiving recommendations but also provides users with an opportunity to refine recommendations by critiquing undesired parts of the explanation. While much research focuses on improving the explanation of recommendations, less effort has focused on interactive recommendation by allowing a user to critique explanations. Aside from traditional constraint- and utility-based critiquing systems, the only end-to-end deep learning based critiquing approach in the literature so far, CE-VNCF, suffers from unstable and inefficient training performance. In this paper, we propose a Variational Autoencoder (VAE) based critiquing system to mitigate these issues and improve overall performance. The proposed model generates keyphrase-based explanations of recommendations and allows users to critique the generated explanations to refine their personalized recommendations. Our experiments show promising results: (1) The proposed model is competitive in terms of general performance in comparison to state-of-the-art recommenders, despite having an augmented loss function to support explanation and critiquing. (2) The proposed model can generate high-quality explanations compared to user or item keyphrase popularity baselines. (3) The proposed model is more effective in refining recommendations based on critiquing than CE-VNCF, where the rank of critiquing-affected items drops while general recommendation performance remains stable. In summary, this paper presents a significantly improved method for multi-step deep critiquing based recommender systems based on the VAE framework.
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基于人工智能的推荐系统的深度批评
为推荐的项目提供解释不仅可以让用户理解接受推荐的原因,而且还为用户提供了通过批评解释中不希望看到的部分来改进推荐的机会。虽然许多研究都集中在改进推荐的解释上,但很少有人通过允许用户评论解释来关注交互式推荐。除了传统的基于约束和效用的批评系统之外,迄今为止文献中唯一基于端到端深度学习的批评方法CE-VNCF存在训练性能不稳定和效率低下的问题。在本文中,我们提出了一个基于变分自编码器(VAE)的批评系统来缓解这些问题并提高整体性能。提出的模型生成基于关键短语的推荐解释,并允许用户评论生成的解释,以改进他们的个性化推荐。我们的实验显示了有希望的结果:(1)尽管有一个增强的损失函数来支持解释和批评,但与最先进的推荐器相比,所提出的模型在一般性能方面具有竞争力。(2)与用户或项目关键词流行度基线相比,所提出的模型可以生成高质量的解释。(3)该模型比CE-VNCF更有效地改进了基于评论的推荐,在CE-VNCF中,受评论影响的项目排名下降,而一般推荐性能保持稳定。综上所述,本文提出了一种基于VAE框架的基于多步深度批评的推荐系统的改进方法。
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