协同过滤中新用户深度评价的启发

Wonbin Kweon, SeongKu Kang, Junyoung Hwang, Hwanjo Yu
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引用次数: 4

摘要

最近的推荐系统开始使用评级启发,它要求新用户对一个小的种子项目集进行评级,以推断他们的偏好,以提高初始推荐的质量。评级启发的关键挑战是选择最能推断新用户偏好的种子项目。本文提出了一种新的端到端深度学习评级启发框架,该框架在考虑非线性相互作用的情况下一次选择所有种子项。为此,首先定义从整个项目集中采样种子项目的分类分布,然后训练分类分布和神经重构网络,从采样种子项目的CF信息中推断用户对剩余项目的偏好。通过端到端训练,学习分类分布选择最具代表性的种子项,同时反映复杂的非线性相互作用。实验结果表明,DRE能够准确地推断新用户的偏好,其种子项集比其他方法获得的种子项集更能代表潜在空间,在推荐质量上优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Rating Elicitation for New Users in Collaborative Filtering
Recent recommender systems started to use rating elicitation, which asks new users to rate a small seed itemset for inferring their preferences, to improve the quality of initial recommendations. The key challenge of the rating elicitation is to choose the seed items which can best infer the new users’ preference. This paper proposes a novel end-to-end Deep learning framework for Rating Elicitation (DRE), that chooses all the seed items at a time with consideration of the non-linear interactions. To this end, it first defines categorical distributions to sample seed items from the entire itemset, then it trains both the categorical distributions and a neural reconstruction network to infer users’ preferences on the remaining items from CF information of the sampled seed items. Through the end-to-end training, the categorical distributions are learned to select the most representative seed items while reflecting the complex non-linear interactions. Experimental results show that DRE outperforms the state-of-the-art approaches in the recommendation quality by accurately inferring the new users’ preferences and its seed itemset better represents the latent space than the seed itemset obtained by the other methods.
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