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Applying Multicriteria Algorithms to Restaurant Recommendation

机译:将多准则算法应用于餐厅推荐

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摘要

In this paper we propose two novel multicriteria recommendation algorithms and present a comparison with other recommendation approaches in the gastronomic domain. The motivation comes from the fact that traditional single criterion approaches consider that two users share the same taste when they provide similar global ratings on the experienced items. However, these users could agree on global ratings while having completely different priorities on item attributes and different preferences on attribute values. Multicriteria recommenders seem to be a promising solution for this problem as they aggregate user ratings on several item components in order to generate more accurate recommendations. Experiments conducted on Santiago(e)Tapas, a real gastronomic contest where customers evaluate different aspects of several restaurants, demonstrate that one of our algorithms, Support Distance Weighting, outperforms other multi-criteria and single-criterion algorithms in terms of prediction precision.
机译:在本文中,我们提出了两种新颖的多标准推荐算法,并与美食领域的其他推荐方法进行了比较。其动机来自以下事实:传统的单一标准方法认为,当两个用户对有经验的项目提供相似的总体评分时,他们会共享相同的口味。但是,这些用户可以在全局评级上达成一致,同时在项目属性上拥有完全不同的优先级,在属性值上拥有不同的偏好。多准则推荐者似乎是解决该问题的有前途的解决方案,因为他们将用户评分汇总在多个项目组件上,以生成更准确的推荐。在真正的美食大赛Santiago(e)Tapas上进行的实验(顾客在那儿评估了几家餐厅的不同方面)表明,我们的算法之一(支持距离加权)在预测精度方面优于其他多准则和单准则算法。

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