Conversational Recommender System Using Deep Reinforcement Learning

Omprakash Sonie
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Abstract

Deep Reinforcement Learning (DRL) uses the best of both Reinforcement Learning and Deep Learning for solving problems which cannot be addressed by them individually. Deep Reinforcement Learning has been used widely for games, robotics etc. Limited work has been done for applying DRL for Conversational Recommender System (CRS). Hence, this tutorial covers the application of DRL for CRS. We give conceptual introduction to Reinforcement Learning and Deep Reinforcement Learning and cover Deep Q-Network, Dyna, REINFORCE and Actor Critic methods. We then cover various real life case studies with increasing complexity starting from CRS, deep CRS, adaptivity, topic guided CRS, deep and large-scale CRSs. We plan to share pre-read for Reinforcement Learning and Deep Reinforcement learning so that participants can grasp the material well.
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使用深度强化学习的会话推荐系统
深度强化学习(DRL)利用强化学习和深度学习的优点来解决无法单独解决的问题。深度强化学习已广泛应用于游戏、机器人等领域。将DRL应用于会话推荐系统(CRS)方面的工作有限。因此,本教程将介绍DRL在CRS中的应用。我们对强化学习和深度强化学习进行了概念介绍,并涵盖了Deep Q-Network, Dyna, REINFORCE和Actor Critic方法。然后,我们从CRS,深度CRS,适应性,主题引导CRS,深度和大规模CRS开始,涵盖各种日益复杂的现实生活案例研究。我们计划分享强化学习和深度强化学习的预读,以便参与者能够很好地掌握材料。
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