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Discovery of User Preference in Personalized Design Recommender System through Combining Collaborative Filtering and Content-Based Filtering

机译:通过组合协同过滤和基于内容的过滤,在个性化设计推荐系统中发现用户偏好

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More and more recommender systems build close relationships with their users by adapting to their needs and therefore providing a personal experience. One aspect of personalization is the recommendation and presentation of information and products so that users can access the recommender system more efficiently. However, powerful filtering technology is required in order to identify relevant items for each user. In this paper we describe how collaborative filtering and content-based filtering can be combined to provide better performance for information filtering. We propose the personalized design recommender system of textile design applying both technologies as one of the methods in the material development centered on customer's sensibility and preference. Finally, we plan to conduct empirical applications to verify the adequacy and the validity of our personalized design recommender system.
机译:越来越多的推荐系统通过适应他们的需求来与用户建立密切的关系,从而提供个人体验。个性化的一个方面是信息和产品的推荐和呈现,以便用户可以更有效地访问推荐系统。但是,需要强大的过滤技术,以识别每个用户的相关项目。在本文中,我们描述了如何组合协同滤波和基于内容的滤波,以提供更好的信息滤波性能。我们提出了纺织设计的个性化设计推荐系统,将两种技术应用于以客户的敏感性和偏好为中心的材料开发中的方法之一。最后,我们计划进行实证应用程序,以验证我们个性化设计推荐系统的充分性和有效性。

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