Rating Prediction in Review-Based Recommendations via Adversarial Auto-Encoder

Jin Yi, Jiajin Huang, Jin Qin
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引用次数: 9

Abstract

Recommendation methods usually use users' historical ratings on items to predict ratings on their unrated items to make recommendations. However, the sparse rating data limit the recommendation quality. In order to solve the sparsity problem, other auxiliary information is combined to mine users' preferences for higher recommendation quality. This paper proposes a novel recommendation model, which harnesses an adversarial learning among auto-encoders to improve recommendation quality by minimizing the gap of rating and review relation of users and items. The empirical studies on real-world datasets prove that the proposed method improves recommendation performance.
基于评论的推荐中基于对抗性自编码器的评级预测
推荐方法通常使用用户对物品的历史评分来预测其未评级物品的评分,从而进行推荐。然而,稀疏的评分数据限制了推荐的质量。为了解决稀疏性问题,结合其他辅助信息挖掘用户偏好,以获得更高的推荐质量。本文提出了一种新的推荐模型,该模型利用自编码器之间的对抗学习,通过最小化用户和物品的评分和评论关系的差距来提高推荐质量。在真实数据集上的实证研究表明,该方法提高了推荐性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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