Shao Yuehjen E
Department of Statistics and Information Science, Fu Jen Catholic University, 510, Chung-Cheng Road, Xinzhuang District, New Taipei City 24205, Taiwan.
ScientificWorldJournal. 2014 Mar 2;2014:383910. doi: 10.1155/2014/383910. eCollection 2014.
Excess of body fat often leads to obesity. Obesity is typically associated with serious medical diseases, such as cancer, heart disease, and diabetes. Accordingly, 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. Traditional single-stage approaches may use certain body measurements or explanatory variables to predict the BFP. Diverging from existing approaches, this study proposes new intelligent hybrid approaches to obtain fewer explanatory variables, and the proposed forecasting models are able to effectively predict the BFP. The proposed hybrid models consist of multiple regression (MR), artificial neural network (ANN), multivariate adaptive regression splines (MARS), and support vector regression (SVR) techniques. The first stage of the modeling includes the use of MR and MARS to obtain fewer but more important sets of explanatory variables. In the second stage, the remaining important variables are served as inputs for the other forecasting methods. A real dataset was used to demonstrate the development of the proposed hybrid models. The prediction results revealed that the proposed hybrid schemes outperformed the typical, single-stage forecasting models.
体内脂肪过多往往会导致肥胖。肥胖通常与严重的医学疾病相关,如癌症、心脏病和糖尿病。因此,了解体脂是一个极其重要的问题,因为它影响着每个人的健康。虽然有几种方法可以测量体脂百分比(BFP),但准确的方法往往麻烦且成本高昂。传统的单阶段方法可能会使用某些身体测量数据或解释变量来预测BFP。与现有方法不同,本研究提出了新的智能混合方法以获得更少的解释变量,并且所提出的预测模型能够有效地预测BFP。所提出的混合模型由多元回归(MR)、人工神经网络(ANN)、多元自适应回归样条(MARS)和支持向量回归(SVR)技术组成。建模的第一阶段包括使用MR和MARS来获得更少但更重要的解释变量集。在第二阶段,将其余重要变量用作其他预测方法的输入。使用一个真实数据集来展示所提出的混合模型的开发过程。预测结果表明,所提出的混合方案优于典型的单阶段预测模型。