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Application of improved random forest algorithm and fuzzy mathematics in physical fitness of athletes

Tianye Gao, Jian Liu

2020Journal of Intelligent & Fuzzy Systems18 citationsDOI

Abstract

The comprehensive indicators of the physical fitness of young athletes and the specific modes of transportation, working and leisure activities as explanatory variables are not in line with the normal distribution. Moreover, there is a high correlation between explanatory variables, and fitting traditional regression models does not meet the assumptions, and multiple collinearity problems will occur, and good results will not be obtained. The random forest regression model has excellent performance in overcoming these difficulties. Therefore, the random forest regression model is constructed to evaluate the impact of various factors on the physical fitness of young people. This paper studies the impact of various factors on the health level of young people’s body and combines the source data and research goals to establish a comprehensive evaluation index system and an influential factor indicator system. In addition, this paper uses AHP to conduct comprehensive evaluation, and obtains the comprehensive physical quality of young people, and gives corresponding suggestions according to the actual situation.

Topics & Concepts

CollinearityRandom forestAthletesRegression analysisComputer scienceFuzzy logicPhysical fitnessAnalytic hierarchy processRegressionLinear regressionIndex (typography)StatisticsMathematicsMachine learningArtificial intelligenceOperations researchMedicinePhysical therapyWorld Wide WebSports Performance and TrainingPhysical Education and Training StudiesGenetics and Physical Performance
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