Towards a Knowledge-aware Food Recommender System Exploiting Holistic User Models

C. Musto, C. Trattner, A. Starke, G. Semeraro
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引用次数: 26

Abstract

Food recommender systems typically rely on popularity, as well as similarity between recipes to generate personalized suggestions. However, this leaves little room for users to explore new preferences, such as to adopt healthier eating habits. In this short paper, we present a recommendation strategy based on knowledge about food and users' health-related characteristics to generate personalized recipes suggestions. By focusing on personal factors as a user's BMI and dietary constraints, we exploited a holistic user model to re-rank a basic recommendation list of 4,671 recipes, and investigated in a web-based experiment (N=200) to what extent it generated satisfactory food recommendations. We found that some of the information encoded in a users' holistic user profiles affected their preferences, thus providing us with interesting findings to continue this line of research.
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基于整体用户模型的知识感知食物推荐系统
食物推荐系统通常依赖于受欢迎程度,以及食谱之间的相似性来生成个性化建议。然而,这给用户留下了很少的空间去探索新的偏好,比如采用更健康的饮食习惯。在这篇短文中,我们提出了一种基于食物知识和用户健康相关特征的推荐策略,以生成个性化的食谱建议。通过关注用户的BMI和饮食限制等个人因素,我们利用一个整体用户模型对包含4,671个食谱的基本推荐列表进行重新排序,并在一个基于网络的实验中(N=200)调查它在多大程度上产生了令人满意的食物推荐。我们发现,在用户的整体用户配置文件中编码的一些信息会影响他们的偏好,从而为我们提供了有趣的发现,可以继续进行这方面的研究。
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