基于ß-VAE的推荐评价偏好表示解耦

Preksha Nema, Alexandros Karatzoglou, Filip Radlinski
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引用次数: 24

摘要

现代推荐系统通常将用户和项目嵌入到学习的向量空间表示中。该空间的相似度用于生成推荐,推荐方法与嵌入空间的结构无关。由于推荐系统需要更加透明和可控,我们假设为用户和项目表示的某些维度分配意义是有益的。解开缠结是一种通常用于此目的的技术。我们提出了一种新的有监督的推荐任务解纠缠方法。我们的模型学习感兴趣的属性被解开的嵌入,而在训练时只需要非常少量的标记项目。然后,该模型可以为所有用户生成交互式和可批评的推荐,在推荐时不需要任何标签,也不会牺牲任何推荐性能。因此,我们的方法为用户提供了操纵、批评和微调建议的杠杆,并深入了解为什么要提出特定的建议。仅给定推荐时的用户-项目交互,我们表明它根据已解耦的属性识别用户品味,允许用户跨这些属性操作推荐。
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Disentangling Preference Representations for Recommendation Critiquing with ß-VAE
Modern recommender systems usually embed users and items into a learned vector space representation. Similarity in this space is used to generate recommendations, and recommendation methods are agnostic to the structure of the embedding space. Motivated by the need for recommendation systems to be more transparent and controllable, we postulate that it is beneficial to assign meaning to some of the dimensions of user and item representations. Disentanglement is one technique commonly used for this purpose. We presenta novel supervised disentangling approach for recommendation tasks. Our model learns embeddings where attributes of interest are disentangled, while requiring only a very small number of labeled items at training time. The model can then generate interactive and critiquable recommendations for all users, without requiring any labels at recommendation time, and without sacrificing any recommendation performance. Our approach thus provides users with levers to manipulate, critique and fine-tune recommendations, and gives insight into why particular recommendations are made. Given only user-item interactions at recommendation time, we show that it identifies user tastes with respect to the attributes that have been disentangled, allowing for users to manipulate recommendations across these attributes.
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