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Automatic User Preference Learning for Personalized Electronic Program Guide Applications

机译:个性化电子节目指南应用程序的自动用户偏好学习

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In this article, we introduce a user preference model contained in the User Interaction Tools Clause of the MPEG-7 Multimedia Description Schemes, which is described by a UserPreferences description scheme (DS) and a UsageHistory description scheme (DS). Then we propose a user preference learning algorithm by using a Bayesian network to which weighted usage history data on multimedia consumption is taken as input. Our user preference learning algorithm adopts a dynamic learning method for learning real-time changes in a user's preferences from content consumption history data by weighting these choices in time. Finally, we address a user preference-based television program recommendation system on the basis of the user preference learning algorithm and show experimental results for a large set of realistic usage-history data of watched television programs. The experimental results suggest that our automatic user reference learning method is well suited for a personalized electronic program guide (EPG) application.
机译:在本文中,我们介绍了MPEG-7多媒体描述方案的用户交互工具子句中包含的用户偏好模型,该模型由UserPreferences描述方案(DS)和UsageHistory描述方案(DS)进行描述。然后,我们提出了一种使用贝叶斯网络的用户偏好学习算法,该算法以多媒体消费的加权使用历史数据作为输入。我们的用户偏好学习算法采用动态学习方法,通过对这些选择进行及时加权,从内容消费历史数据中学习用户偏好的实时变化。最后,我们基于用户偏好学习算法解决了基于用户偏好的电视节目推荐系统,并针对大量观看的电视节目的实际使用历史数据显示了实验结果。实验结果表明,我们的自动用户参考学习方法非常适合个性化电子节目指南(EPG)应用。

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