首页> 外文会议>Brunei International Conference on Engineering and Technology >IDENTIFYING SUB-GROUPS OF THE OBESE FROM NATIONAL HEALTH AND NUTRITIONAL STATUS SURVEY DATA USING MACHINE LEARNING TECHNIQUES
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IDENTIFYING SUB-GROUPS OF THE OBESE FROM NATIONAL HEALTH AND NUTRITIONAL STATUS SURVEY DATA USING MACHINE LEARNING TECHNIQUES

机译:使用机器学习技术识别来自国家健康和营养状况调查数据的肥胖子组

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The aim of this study is to discover unknown but meaningful patterns (groups) from the National Health and Nutritional Status and Survey (NHANSS) data by applying clustering analysis technique. This study focuses on determining the association of obesity, one of the leading causes of common non-communicable diseases, with the identified clusters. The subsets within NHANSS data were identified for obesity using various parameters including socio-demographic factors, physical activity and multiple dietary patterns of the participants. Due to the mixed data (qualitative and quantitative variables) in the dataset. two-step clustering technique with appropriate dissimilarity metric was chosen. Based on the two-step clustering method and association between the clusters and obesity factor, two clusters were formed and the anchoring characteristics of these clusters have been reported.
机译:本研究的目的是通过应用聚类分析技术发现来自国家健康和营养状况和调查(NHANSS)数据的未知但有意义的模式(组)。本研究重点是确定肥胖症,常见的非传染病患者的主要原因之一,具有所识别的集群。使用包括社会人口因子,身体活动和参与者的多种饮食模式的各种参数来确定NHANSS数据内的子集。由于数据集中的混合数据(定量和定量变量)。选择了具有适当不相似度量的两步聚类技术。基于两步聚类方法和簇与肥胖系数之间的关联,形成了两个簇,并报告了这些簇的锚固特性。

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