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Ensemble learning in recommender systems: combining multiple user interactions for ranking personalization

机译:在推荐系统中整合学习:组合多个用户交互以对个性化进行排名

摘要

In this paper, we propose a technique that uses multimodal interactions of users to generate a more accurate list of recommendations optimized for the user . Our approach is a response to the actual scenario on the Web which allows users to interact with the content in different ways, and thus, more information about his preferences can be obtained to improve recommendation. The proposal consists of an ensemble learning technique that combines rankings generated by unimodal recommenders based on particular interaction types. By using a combination of different types of feedback from users, we are able to provide better recommendations, as shown by our experimental evaluation.
机译:在本文中,我们提出了一种技术,该技术使用用户的多模式交互来生成更准确的针对用户优化的推荐列表。我们的方法是响应Web上的实际情况,该情况允许用户以不同的方式与内容进行交互,因此,可以获得有关其首选项的更多信息以改善推荐。该提案包含一种综合学习技术,该技术结合了单峰推荐者基于特定交互类型生成的排名。通过结合使用来自用户的不同类型的反馈,我们能够提供更好的建议,如我们的实验评估所示。

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