Research on human body composition prediction model based on Akaike Information Criterion and improved entropy method

Bo Chen, Xiu-e Gao, Qingguo Zheng, Jingfeng Wu
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引用次数: 2

Abstract

The prediction model of existing human body composition based on measured bioelectricity has problems that include redundant influence factors and low prediction accuracy. To address these problems, this paper put forward a human body composition prediction model based on Akaike Information Criterion (AIC) and improved entropy method. First, combining with the AIC information principle, we selected a set of characteristic parameters from human physiological arguments, and constructed the human body composition prediction model; Second, improved entropy method was used to solve the unknown coefficients in predictive model, then worked out prediction model of human body composition; Finally, a comparative analysis experiment of the prediction model and the actual measurement data was designed, and the data were sampled by InBody770 body composition instrument. Experimental results showed that a good correlation existed between the model predictions data and the actual measurements, this study provided a theoretical basis for the model and analysis of human body composition.
基于赤池信息准则和改进熵法的人体成分预测模型研究
基于实测生物电的现有人体成分预测模型存在影响因素过多、预测精度低等问题。针对这些问题,提出了一种基于赤池信息准则(Akaike Information Criterion, AIC)和改进熵值法的人体成分预测模型。首先,结合AIC信息原理,从人体生理参数中选取一组特征参数,构建人体成分预测模型;其次,利用改进的熵值法求解预测模型中的未知系数,建立人体成分预测模型;最后,设计了预测模型与实际测量数据的对比分析实验,并用InBody770体成分仪对数据进行采样。实验结果表明,模型预测数据与实际测量结果具有较好的相关性,为人体成分的建模和分析提供了理论依据。
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