A fuzzy-weighted Gaussian kernel-based machine learning approach for body fat prediction

被引:13
|
作者
Fan, Zongwen [1 ]
Chiong, Raymond [1 ]
Chiong, Fabian [2 ]
机构
[1] Univ Newcastle, Sch Elect Engn & Comp, Callaghan, NSW 2308, Australia
[2] Alice Springs Hosp, The Gap, NT 0870, Australia
关键词
Fuzzy weights; Fuzzy-weighted Gaussian kernel; Body fat prediction; Obesity; Relative error support vector machine; SUPPORT VECTOR MACHINE; X-RAY ABSORPTIOMETRY; REVERSE PREDICTION; OBESITY; PERCENTAGE; VALIDITY;
D O I
10.1007/s10489-021-02421-3
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Obesity is a critical public health problem associated with various complications and diseases. Accurate prediction of body fat is crucial for diagnosing obesity. Various measurement methods, including underwater weighing, dual energy X-ray absorptiometry, bioelectrical impedance analysis, magnetic resonance imaging, air displacement plethysmography, and near infrared interactance, have been used to assess body fat. These measurement methods, however, require special equipment associated with high-cost tests. The aim of this study is to investigate the use of machine learning-based models to accurately predict the body fat percentage. Considering the fact that off-the-shelf machine learning-based models are typically sensitive to noise data, we propose a fuzzy-weighted Gaussian kernel-based Relative Error Support Vector Machine (RE-SVM) for body fat prediction. We first design a fuzzy-weighted operation, which applies fuzzy weights to the error constraints of the RE-SVM, to alleviate the influence of noise data. Next, we also apply the fuzzy weights to improve the Gaussian kernel by considering the importance of different samples. Computational experiments and statistical tests conducted confirm that our proposed approach is able to significantly outperform other models being compared for body fat prediction across different performance metrics used. The proposed approach offers a viable alternative for diagnosing obesity when high-cost measurement methods are not available.
引用
收藏
页码:2359 / 2368
页数:10
相关论文
共 50 条
  • [31] GAUSSIAN KERNEL-BASED FUZZY ROUGH SET FOR INFORMATION FUSION OF IMPERFECT IMAGES
    Shi Qiang
    Chen Wangli
    Qin Qianqing
    Ma Guorui
    2014 12TH INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING (ICSP), 2014, : 900 - 904
  • [32] Kernel-based online machine learning and support vector reduction
    Agarwal, Sumeet
    Saradhi, V. Vijaya
    Karnick, Harish
    NEUROCOMPUTING, 2008, 71 (7-9) : 1230 - 1237
  • [33] Optimizing transition states via kernel-based machine learning
    Pozun, Zachary D.
    Hansen, Katja
    Sheppard, Daniel
    Rupp, Matthias
    Mueller, Klaus-Robert
    Henkelman, Graeme
    JOURNAL OF CHEMICAL PHYSICS, 2012, 136 (17):
  • [34] Kernel-Based Machine Learning for Efficient Simulations of Molecular Liquids
    Scherer, Christoph
    Scheid, Rene
    Andrienko, Denis
    Bereau, Tristan
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2020, 16 (05) : 3194 - 3204
  • [35] Machine learning algorithms for damage detection: Kernel-based approaches
    Santos, Adam
    Figueiredo, Eloi
    Silva, M. F. M.
    Sales, C. S.
    Costa, J. C. W. A.
    JOURNAL OF SOUND AND VIBRATION, 2016, 363 : 584 - 599
  • [36] Kernel-based machine learning for fast text mining in R
    Karatzoglou, Alexandros
    Feinerer, Ingo
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2010, 54 (02) : 290 - 297
  • [37] Exploring mutual information-based sentimental analysis with kernel-based extreme learning machine for stock prediction
    Wang, Feng
    Zhang, Yongquan
    Rao, Qi
    Li, Kangshun
    Zhang, Hao
    SOFT COMPUTING, 2017, 21 (12) : 3193 - 3205
  • [38] Exploring mutual information-based sentimental analysis with kernel-based extreme learning machine for stock prediction
    Feng Wang
    Yongquan Zhang
    Qi Rao
    Kangshun Li
    Hao Zhang
    Soft Computing, 2017, 21 : 3193 - 3205
  • [39] An improved kernel-based incremental extreme learning machine with fixed budget for nonstationary time series prediction
    Wei Zhang
    Aiqiang Xu
    Dianfa Ping
    Mingzhe Gao
    Neural Computing and Applications, 2019, 31 : 637 - 652
  • [40] Short-term water demand prediction model using kernel-based extreme learning machine
    Han H.
    Wu S.
    Hou B.
    Harbin Gongye Daxue Xuebao/Journal of Harbin Institute of Technology, 2022, 54 (02): : 17 - 24