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Exploring Students Eating Habits Through Individual Profiling and Clustering Analysis

机译:通过个性分析和聚类分析探索学生饮食习惯

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Individual well-being strongly depends on food habits, therefore it is important to educate the general population, and especially young people, to the importance of a healthy and balanced diet. To this end, understanding the real eating habits of people becomes fundamental for a better and more effective intervention to improve the students' diet. In this paper we present two exploratory analyses based on centroidbased clustering that have the goal of understanding the food habits of university students. The first clustering analysis simply exploits the information about the students' food consumption of specific food categories, while the second exploratory analysis includes the temporal dimension in order to capture the information about when the students consume specific foods. The second approach enables the study of the impact of the time of consumption on the choice of the food.
机译:个人强烈依赖于食物习惯,因此为教育一般人口,特别是年轻人来说,重要的是健康和平衡饮食的重要性。为此,了解人们的真正饮食习惯成为改善学生饮食的更好更有效的干预的基础。在本文中,我们提出了两种基于质心基于聚类的探索性分析,这些分析具有了解大学生的食物习惯。第一次聚类分析只是利用了有关学生食品消费的特定食品类别的信息,而第二次探索性分析包括时间维度,以捕获学生消耗特定食物的信息。第二种方法能够研究消费时间对食物的选择的影响。

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