Adaptive regression model for prediction of anthropometric data

E. Brolin, D. Högberg, L. Hanson, R. Örtengren
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引用次数: 3

Abstract

This paper presents and evaluates an adaptive linear regression model for the prediction of unknown anthropometric data based on a flexible set of known predictive data. The method is based on conditional regression and includes use of principal component analysis to reduce effects of multicollinearity between the predictive variables. Results from the study show that the proposed adaptive regression model produces more accurate predictions compared to a flat regression model based on stature and weight, and also compared to a hierarchical regression model, that uses geometric and statistical relationships between body measurements to create specific linear regression equations in a hierarchical structure. An additional evaluation shows that the accuracy of the adaptive regression model increases logarithmically with the sample size. Apart from the sample size, the accuracy of the regression model is affected by the number of, and on which measurements that are, variables in the predictive dataset.
人体测量数据预测的自适应回归模型
本文基于一组灵活的已知预测数据,提出并评价了一种用于预测未知人体测量数据的自适应线性回归模型。该方法以条件回归为基础,包括使用主成分分析来减少预测变量之间多重共线性的影响。研究结果表明,与基于身高和体重的平面回归模型相比,所提出的自适应回归模型的预测更为准确,也比利用身体测量之间的几何和统计关系在层次结构中创建特定线性回归方程的层次回归模型更准确。另一个评价表明,自适应回归模型的精度随样本量的增加呈对数增长。除了样本量之外,回归模型的准确性还受到预测数据集中变量的数量和测量值的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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