基于强化学习的推荐系统多目标评价

A. Grishanov, A. Ianina, K. Vorontsov
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摘要

Movielens数据集已经成为推荐系统评估的默认选择。本文在Movielens (1M)数据集上分析了强化学习代理的最佳策略,研究了推荐的精度和多样性之间的平衡。我们发现,琐碎策略能够最大化排名质量标准,但由于最终预测缺乏多样性,对推荐系统的用户无用。我们提出的方法利用Ornstein-Uhlenbeck过程的随机性来激励智能体探索环境。实验表明,优化Ornstein-Uhlenbeck过程漂移系数可以提高推荐的多样性,同时保持较高的nDCG和HR标准。据我们所知,在以前的工作中,对推荐环境中的智能体策略的分析并没有过多的研究。
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Multiobjective Evaluation of Reinforcement Learning Based Recommender Systems
Movielens dataset has become a default choice for recommender systems evaluation. In this paper we analyze the best strategies of a Reinforcement Learning agent on Movielens (1M) dataset studying the balance between precision and diversity of recommendations. We found that trivial strategies are able to maximize ranking quality criteria, but useless for users of the recommendation system due to the lack of diversity in final predictions. Our proposed method stimulates the agent to explore the environment using the stochasticity of Ornstein-Uhlenbeck processes. Experiments show that optimization of the Ornstein-Uhlenbeck process drift coefficient improves the diversity of recommendations while maintaining high nDCG and HR criteria. To the best of our knowledge, the analysis of agent strategies in recommendation environments has not been studied excessively in previous works.
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