基于二值遗传算法和模糊二值遗传算法的体脂预测智能特征子集选择

Farshid Keivanian, N. Mehrshad
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引用次数: 4

摘要

了解身体脂肪是一个非常重要的问题,因为它影响到每个人的健康。虽然有几种测量体脂率(BFP)的方法,但准确的方法往往与麻烦和/或高成本有关。因此,某些测量或解释变量被用来预测BFP。本研究提出了一种基于二元遗传算法和模糊二元遗传算法的非指定数量特征的智能特征子集选择方法,以发现最重要的变量或特征,并促进人工神经网络(ANN)分类器模型应用于体脂预测(BFP)。该预测模型采用模糊二值遗传算法,能够有效预测出12个特征中最有效的前臂围度特征,预测误差为±3.64031%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent feature subset selection with unspecified number for body fat prediction based on binary-GA and Fuzzy-Binary-GA
Knowing the body fat is an extremely important issue since it affects everyone's health. Although there are several ways to measure the body fat percentage (BFP), the accurate methods are often associated with hassle and/or high costs. Therefore, certain measurements or explanatory variables are used to predict the BFP. This study proposes an intelligent feature subset selection approach with unspecified number of features based on Binary GA and Fuzzy Binary GA algorithms to discover most important variable or feature and facilitate an artificial neural network (ANN) classifier model which is applied for body fat prediction (BFP). The proposed forecasting model is able to effectively predict the BFP with error of ± 3.64031% and the most effective feature of forearm circumference among total twelve features by using Fuzzy Binary GA.
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