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Reweighting anthropometric data using a nearest neighbour approach

机译:使用最近邻方法对人体测量数据进行加权

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When designing products and environments, detailed data on body size and shape are seldom available for the specific user population. One way to mitigate this issue is to reweight available data such that they provide an accurate estimate of the target population of interest. This is done by assigning a statistical weight to each individual in the reference data, increasing or decreasing their influence on statistical models of the whole. This paper presents a new approach to reweighting these data. Instead of stratified sampling, the proposed method uses a clustering algorithm to identify relationships between the detailed and reference populations using their height, mass, and body mass index (BMI). The newly weighted data are shown to provide more accurate estimates than traditional approaches. The improved accuracy that accompanies this method provides designers with an alternative to data synthesis techniques as they seek appropriate data to guide their design practice.Practitioner Summary: Design practice is best guided by data on body size and shape that accurately represents the target user population. This research presents an alternative to data synthesis (e.g. regression or proportionality constants) for adapting data from one population for use in modelling another.
机译:在设计产品和环境时,很少为特定用户群体提供有关身体大小和形状的详细数据。缓解此问题的一种方法是重新加权可用数据,以使它们提供对目标目标人群的准确估算。这是通过为参考数据中的每个个体分配统计权重,增加或减少其对整体统计模型的影响来完成的。本文提出了一种对这些数据进行加权的新方法。代替分层抽样,所提出的方法使用聚类算法来根据详细人群和参考人群的身高,体重和体重指数(BMI)来识别它们之间的关系。与传统方法相比,新加权数据显示出更准确的估计。这种方法所带来的提高的准确性为设计人员提供了一种数据合成技术的替代方法,因为他们可以寻求适当的数据来指导他们的设计实践。从业者摘要:设计实践最好由准确代表目标用户群体的身体大小和形状数据指导。这项研究提出了一种数据合成的替代方法(例如回归或比例常数),用于适应来自一个总体的数据以用于另一个建模。

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