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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Tag-Aware Recommender System Based on Deep Reinforcement Learning
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Tag-Aware Recommender System Based on Deep Reinforcement Learning

机译:基于深度加强学习的标签感知推荐系统

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摘要

Recently, the application of deep reinforcement learning in the recommender system is flourishing and stands out by overcoming drawbacks of traditional methods and achieving high recommendation quality. The dynamics, long-term returns, and sparse data issues in the recommender system have been effectively solved. But the application of deep reinforcement learning brings problems of interpretability, overfitting, complex reward function design, and user cold start. This study proposed a tag-aware recommender system based on deep reinforcement learning without complex function design, taking advantage of tags to make up for the interpretability problems existing in the recommender system. Our experiment is carried out on the MovieLens dataset. The result shows that the DRL-based recommender system is superior than traditional algorithms in minimum error, and the application of tags have little effect on accuracy when making up for interpretability. In addition, the DRL-based recommender system has excellent performance on user cold start problems.
机译:近日,深强化学习的在推荐系统中的应用蓬勃发展,并克服了传统方法的缺陷,实现高品质的建议脱颖而出。在推荐系统中的动态,长期的回报,以及稀疏数据问题已得到有效解决。但在内心深处强化学习的应用带来了解释性的问题,过拟合,复杂的回报功能设计和用户冷启动。这项研究提出了一种基于深刻的强化学习标签感知推荐系统没有复杂的功能设计,以标签的优势,弥补了现有的推荐系统的解释性问题。我们的实验在MovieLens数据集进行。结果表明,基于DRL-推荐系统比最小误差传统算法优越,标签的应用解释性弥补时对精度的影响很小。此外,基于DRL-推荐系统对用户冷启动问题优异的性能。

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