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A Study of Recommender Systems Using Markov Decision Process

机译:基于马尔可夫决策过程的推荐系统研究

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As the number of items increase in every domain, users find it particularly difficult to decide which item is most suitable for them. Due to the availability of such large pool of data, it is crucial to automate the process. For carrying out this task, recommender systems are used. But conventional recommender systems adopt a static view of data. Hence, reinforcement learning is used to make a dynamic recommendation of items to the user. In the presented paper, research work done in recommender systems by using the Markov Decision Process, which is a reinforcement learning model, has been discussed.
机译:随着每个域中项目数量的增加,用户发现决定哪个项目最适合他们特别困难。由于拥有如此庞大的数据池,因此自动化该过程至关重要。为了执行此任务,使用了推荐系统。但是常规推荐系统采用静态数据视图。因此,强化学习用于向用户动态推荐商品。在本文中,已经讨论了通过使用马尔可夫决策过程(一种增强型学习模型)在推荐系统中完成的研究工作。

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