Using Tags and Latent Factors in a Food Recommender System

Mouzhi Ge, Mehdi Elahi, Ignacio Fernández-Tobías, F. Ricci, David Massimo
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引用次数: 95

Abstract

Due to the extensive growth of food varieties, making better and healthier food choices becomes more and more complex. Most of the current food suggestion applications offer just generic advices that are not tailored to the user's personal taste. To tackle this issue, we propose in this paper a novel food recommender system that provides high quality and personalized recipe suggestions. These recommendations are generated by leveraging a data set of users' preferences expressed in the form of users' ratings and tags, which signal the food's ingredients or features that the users like. Our empirical evaluation shows that the proposed recommendation technique significantly outperforms state-of-the-art algorithms. We have found that using tags in food recommendation algorithms can significantly increase the prediction accuracy, i.e., the match of the predicted preferences with the true user's preferred recipes. Furthermore, our user study shows that our system prototype is of high usability.
在食品推荐系统中使用标签和潜在因素
由于食品品种的广泛增长,做出更好和更健康的食品选择变得越来越复杂。目前大多数的食物建议应用程序提供的只是一般的建议,而不是根据用户的个人口味量身定制的。为了解决这一问题,本文提出了一种新颖的食物推荐系统,该系统可以提供高质量和个性化的食谱建议。这些推荐是通过利用用户偏好的数据集生成的,这些数据集以用户评分和标签的形式表示,这些标签表明了用户喜欢的食物成分或特征。我们的实证评估表明,所提出的推荐技术显著优于最先进的算法。我们发现,在食物推荐算法中使用标签可以显著提高预测精度,即预测的偏好与真实用户的偏好食谱的匹配程度。此外,我们的用户研究表明,我们的系统原型具有很高的可用性。
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