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Missing Value Imputation in Stature Estimation by Learning Algorithms Using Anthropometric Data: A Comparative Study

机译:利用人体测量数据学习算法缺少价值估算:比较研究

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摘要

Estimating stature is essential in the process of personal identification. Because it is difficult to find human remains intact at crime scenes and disaster sites, for instance, methods are needed for estimating stature based on different body parts. For instance, the upper and lower limbs may vary depending on ancestry and sex, and it is of great importance to design adequate methodology for incorporating these in estimating stature. In addition, it is necessary to use machine learning rather than simple linear regression to improve the accuracy of stature estimation. In this study, the accuracy of statures estimated based on anthropometric data was compared using three imputation methods. In addition, by comparing the accuracy among linear and nonlinear classification methods, the best method was derived for estimating stature based on anthropometric data. For both sexes, multiple imputation was superior when the missing data ratio was low, and mean imputation performed well when the ratio was high. The support vector machine recorded the highest accuracy in all ratios of missing data. The findings of this study showed appropriate imputation methods for estimating stature with missing anthropometric data. In particular, the machine learning algorithms can be effectively used for estimating stature in humans.
机译:估算身材在个人识别过程中至关重要。因为难以找到人类在犯罪场景和灾害场所完好无损,例如,基于不同的身体部位估计地位需要方法。例如,上肢和下肢可能取决于血统和性别,并且可以重视设计适当的方法,以将这些估计成形掺入这些状态。此外,必须使用机器学习而不是简单的线性回归来提高身材估计的准确性。在这项研究中,使用三种归纳方法进行比较基于人体测量数据估计的序列的准确性。另外,通过比较线性和非线性分类方法的精度,导出了基于人类测量数据的估计地位的最佳方法。对于两性来说,当缺失的数据比率低时,多个估算越优越,并且当比率高时,均匀的平均估算很好。支持向量机记录了缺少数据的所有比率的最高精度。该研究的发现表明,用于估算具有缺失的人体测量数据的身材的适当估算方法。特别地,机器学习算法可以有效地用于估计人类的身材。

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