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Application of gradient boosted trees to gender prediction based on motivations of masters athletes

机译:基于大师级运动员动机的梯度增强树在性别预测中的应用

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摘要

Gradient boosted decision trees are statistical learning ensemble methods that iteratively refit decision tree sub-models to residuals. The aim of this research was to apply gradient boosted decision trees and investigate their ability as statistical techniques to predict gender based upon psychological constructs measuring motivations to participate in masters sports. Comparison was made between previously published research utilizing logistic regression, discriminate function analysis, radial basis functions and multilayer perceptrons with a selection of unboosted and boosted decision tree based models. The tree models selected were J48, C5.0, gradient boosted machine (GBM), XGBoost and LightGBM. The sample consisted of 3928 masters athletes (2010 males) from the World Masters Games, the largest sporting event in the world (by participant numbers). The efficacy of tree based models for prediction in this environment was established with even baseline older implementations, giving higher prediction accuracy than any methods used in prior research. The highest predictive accuracy was achieved using GBM (0.7134), exceeding accuracies of models using XGBoost (0.7012) or LightGBM (0.6904). These two recent implementations of boosting may have given lower predictive accuracy than GBM due to the high dimensionality relative to the number of cases in the data.
机译:梯度增强决策树是统计学习集成方法,可将决策树子模型迭代地重新拟合为残差。这项研究的目的是应用梯度增强决策树,并研究其作为统计技术的预测能力,这种预测技术基于测量参加动机的动机的心理结构来预测性别。在先前发表的利用逻辑回归,判别函数分析,径向基函数和多层感知器与选择了无增强和增强决策树模型的研究之间进行了比较。选择的树模型是J48,C5.0,梯度增强机(GBM),XGBoost和LightGBM。样本包括来自世界大师运动会的3928名大师级运动员(2010年男性),这是世界上最大的体育赛事(按参与者人数)。即使在基线较旧的实现下,也可以建立基于树的模型在此环境中进行预测的功效,与以往研究中使用的任何方法相比,其预测准确性更高。使用GBM(0.7134)可获得最高的预测准确性,超过了使用XGBoost(0.7012)或LightGBM(0.6904)的模型的准确性。由于相对于数据中病例数的高维数,这两种最近的增强实现方式可能给出的预测准确性低于GBM。

著录项

  • 来源
    《Model assisted statistics and applications》 |2018年第3期|235-252|共18页
  • 作者单位

    School of Environmental and Life Sciences, Charles Darwin University, Darwin, Northern Territory, Australia;

    School of Environmental and Life Sciences, Charles Darwin University, Darwin, Northern Territory, Australia;

    Exercise, Health and Performance Faculty Research Group, Faculty of Health Sciences The University of Sydney, Sydney, New South Wales, Australia,Institute of Health and Sport, Bond University, Robina, Queensland, Australia,School of Health and Human Sciences, Southern Cross University, Lismore, Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Sport psychology; gradient boosting; gender; masters athlete;

    机译:运动心理学;梯度提升;性别;硕士运动员;
  • 入库时间 2022-08-18 02:31:44

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