利用数据挖掘技术对人体测量数据进行挖掘,为尺码系统的开发提供依据

N. Zakaria, Jamil Salleh Mohd, Nasir Taib, Yong Yuan Tan, Yap Bee Wah
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引用次数: 10

摘要

对来自马来西亚雪兰莪州农村和城市地区学校的629名年龄在7至12岁之间的女孩进行了人体测量调查,涵盖了主要种族,即马来人、华人和印度人。根据ISO8559-1998身体测量标准,从每个受试者中提取了33种不同的身体尺寸。首先,对整个数据进行了均值、均值和标准差的描述性分析。然后利用因子分析法对数据进行进一步的分析。采用主成分分析(PCA)技术将各变量简化为相似的因子成分。选取特征值大于1的两个组件。因此,确定了两个重要组成部分,PC1称为周长尺寸,PC2称为长度尺寸。接下来,使用两个关键变量,使用Kmeans聚类方法将儿童分成4个不同的聚类。通过分割得到粗壮、娇小、苗条和大组四种体型。使用决策树对这些集群组进行验证。然后将这些分段的组转换为大小表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using data mining technique to explore anthropometric data towards the development of sizing system
An anthropometric survey of 629 girls aged between 7and 12 years old were conducted covering major ethnic groups namely Malays, Chinese and Indians from schools in rural and urban districts of Selangor state in Malaysia. 33 different body dimensions were taken from each subject following the ISO8559-1998 standard for body measurement. Firstly, the whole data was analysed using descriptive analysis of average, mean and standard deviation. The data was then further explored using the factor analysis method. Principal component analysis technique (PCA) was done to reduce the variables to similar factor components. Two components that have Eigen value more than 1 were selected. As a result, two important components were determined which is PC1 named as girth dimensions and PC2 is length dimensions. Next, two key variables were used to segment the children into 4 distinct clusters using Kmeans cluster method. Four body types were obtained from the segmentation known as stout, petite, slim and big groups. These cluster groups were validated using decision tree. These segmented groups will then be converted into size tables.
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