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Towards a Collaborative Filtering Framework for Recommendation in Museums: From Preference Elicitation to Group's Visits

机译:建立博物馆推荐的协作过滤框架:从偏好引出到群体访问

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摘要

Recommendation systems based on collaborative filtering methods can be exploited in the context of providing personalized artworks tours within a museum. However, in order to be effectively used, several problems have to be addressed: user preferences are not expressed as rating, items to be suggested are located in a physical space, and users may be in a group. In this work, we present a general framework that, by using the Matrix Factorization (MF) approach and a graph representation of a museum, addresses the problem of generating and then recommending an artworks sequence for a group of visitors within a museum. To reach a high-quality initial personalization, the recommendation system uses a simple, but efficient, elicitation method that is inspired by the MF approach. Moreover, the proposed approach considers the individual or the aggregated artworks’ ratings to build up a solution that takes into account the physical location of the artworks.
机译:可以在提供博物馆内个性化艺术品参观的背景下利用基于协作过滤方法的推荐系统。然而,为了有效地使用,必须解决几个问题:用户偏好不表示为等级,要建议的项目位于物理空间中,并且用户可能在一组中。在这项工作中,我们提出了一个通用框架,该框架通过使用矩阵分解(MF)方法和博物馆的图形表示,解决了生成问题,然后为博物馆内的一组游客推荐艺术品序列的问题。为了达到高质量的初始个性化,推荐系统使用一种简单但有效的启发方法,该方法受MF方法启发。此外,建议的方法会考虑单个或总体艺术品的评级,以建立一个考虑艺术品实际位置的解决方案。

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