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Discovery and representation of the preferences of automatically detected groups: Exploiting the link between group modeling and clustering

机译:发现和表示自动检测到的组的首选项:利用组建模和聚类之间的链接

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There are types of information systems, like those that produce group recommendations or a market segmentation, in which it is necessary to aggregate big amounts of data about a group of users in order to filter the data. Group modeling is the process that combines multiple user models into a single model that represents the knowledge available about the preferences of the users in a group. In group recommendation, group modeling allows a system to derive a group preference for each item. Different strategies lead to completely different group models, so the strategy used to model a group has to be evaluated in the domain in which the group recommender system operates. This paper evaluates group modeling strategies in a group recommendation scenario in which groups are detected by clustering the users. Once users are clustered and groups are formed, different strategies are tested, in order to find the one that allows a group recommender system to get the best accuracy. Experimental results show that the strategy used to build the group models strongly affects the performance of a group recommender system. An interesting property derived by our study is that clustering and group modeling are strongly connected. Indeed, the modeling strategy takes the same role that the centroid has when users are clustered, by producing group preferences that are equally distant from the preferences of every user. This "continuity" among the two tasks is essential in order to build accurate group recommendations.
机译:信息系统有多种类型,例如产生团体推荐或市场细分的信息系统,其中有必要汇总有关一组用户的大量数据以过滤数据。组建模是将多个用户模型组合为一个模型的过程,该模型表示有关组中用户偏好的可用知识。在小组推荐中,小组建模允许系统为每个项目导出小组偏好。不同的策略导致完全不同的组模型,因此必须在组推荐系统运行所在的域中评估用于组模型的策略。本文在小组推荐方案中评估小组建模策略,在该方案中,通过对用户进行聚类来检测小组。将用户聚类并形成组后,将测试不同的策略,以找到使组推荐系统获得最佳准确性的策略。实验结果表明,用于建立小组模型的策略强烈影响小组推荐系统的性能。我们的研究得出的一个有趣的特性是,聚类和组建模紧密相关。的确,通过产生与每个用户的偏好均等距离的组偏好,建模策略扮演的角色与聚类用户时的质心相同。为了建立准确的小组建议,两个任务之间的这种“连续性”至关重要。

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