Group Recommender Systems: Exploring Underlying Information of the User Space

P. Rougemont, Filipe Braida do Carmo, Marden Braga Pasinato, Carlos E. Mello, Geraldo Zimbrão
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Abstract

This work proposes a new methodology for the Group Recommendation problem. In this approach we choose the Most Representative User (MRU) as the group medoid in a user space projection, and then generate the recommendation list based on his preferences. We evaluate our proposal by using the well-known dataset Movie lens. We have taken two different measures so as to evaluate the group recommender strategies. The obtained results seem promising and our strategy has shown an empirical robustness compared with the baselines in the literature.
群组推荐系统:探索用户空间的底层信息
本研究为群体推荐问题提出了一种新的方法。在该方法中,我们选择最具代表性的用户(MRU)作为用户空间投影中的组媒介,然后根据他的偏好生成推荐列表。我们通过使用著名的数据集电影镜头来评估我们的提议。我们采用了两种不同的方法来评估群体推荐策略。获得的结果似乎很有希望,我们的策略与文献中的基线相比显示出经验稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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