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Role of Intensity of Emotions for Effective Personalized Video Recommendation: A Reinforcement Learning Approach

机译:情绪强度为有效的个性化视频推荐的作用:加强学习方法

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摘要

Development of artificially intelligent agents in video recommendation systems over past decade has been an active research area. In this paper, we have presented a novel hybrid approach (combining collaborative as well as content-based filtering) to create an agent which targets the intensity of emotional content present in a video for recommendation. Since cognitive preferences of a user in real world are always in a dynamic state, tracking user behavior in real time as well as the general cognitive preferences of the users toward different emotions is a key parameter for recommendation. The proposed system monitors the user interactions with the recommended video from its user interface and web camera to learn the criterion of decision-making in real time through reinforcement learning. To evaluate the proposed system, we have created our own UI, collected videos from YouTube, and applied Q-learning to train our system to effectively adapt user preferences.
机译:在过去十年中,在视频推荐系统中开发人工智能代理是一个活跃的研究区。 在本文中,我们介绍了一种新的混合方法(结合基于内容的滤波)来创建一个目标,该代理针对视频中存在的情绪内容的强度。 由于现实世界中用户的认知偏好始终处于动态状态,因此实时跟踪用户行为以及用户对不同情绪的一般认知偏好是推荐的关键参数。 所提出的系统监视用户与推荐视频从其用户界面和网络摄像机进行交互,以通过加强学习来实时地学习决策的标准。 为了评估所提出的系统,我们创建了自己的UI,从YouTube收集了视频,并应用了Q-Learning培训我们的系统以有效地调整用户偏好。

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