Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects

With the rapid development of data mining and machine-learning technology and the outbreak of big sports data mining development challenges, sports data mining cannot simply use data statistical methods such as how to combine machine learning and data mining technology for effective mining and analy...

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Main Authors: Lina Ren, Shen Cao
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Electrical and Computer Engineering
Online Access:http://dx.doi.org/10.1155/2022/2794104
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author Lina Ren
Shen Cao
author_facet Lina Ren
Shen Cao
author_sort Lina Ren
collection DOAJ
description With the rapid development of data mining and machine-learning technology and the outbreak of big sports data mining development challenges, sports data mining cannot simply use data statistical methods such as how to combine machine learning and data mining technology for effective mining and analysis of sports data, to provide useful advice for public physical exercise, and this is an urgent need to study. It is a kind of efficient sports data mining study through the feature selection algorithm. Around the difficult problems existing in the study of sports effect, given the limitations of existing data sets and traditional research methods, this paper starts from the data mining algorithm, builds the sports effect evaluation database, based on feature selection idea, using elastic network algorithm, random forest algorithm, and the influence of sports on the effect of physical indicators. The evaluation algorithm introduces machine learning algorithm and feature selection algorithm to guide the sports effect evaluation research. When studying the evaluation problem of sports effect, according to the constructed sports effect evaluation database, elastic network algorithm is added to regularize, optimize, and realize feature selection. When selecting the characteristics of different sports ability, using information gains indicators to rank the importance of characteristics, which can scientifically and accurately obtain the influence degree of sports on different physical indicators, make the physical fitness research more scientific, and can reveal the effect of sports as far as possible. Experimental results show that the selected features and ground-truth have good accuracy, good evaluation performance, and high accuracy compared with the baseline method.
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institution Kabale University
issn 2090-0155
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spelling doaj-art-596b03ee987042fb854fe6699f730dfb2025-02-03T01:06:39ZengWileyJournal of Electrical and Computer Engineering2090-01552022-01-01202210.1155/2022/2794104Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports EffectsLina Ren0Shen Cao1Hebei Institute of CommunicationsHebei Institute of CommunicationsWith the rapid development of data mining and machine-learning technology and the outbreak of big sports data mining development challenges, sports data mining cannot simply use data statistical methods such as how to combine machine learning and data mining technology for effective mining and analysis of sports data, to provide useful advice for public physical exercise, and this is an urgent need to study. It is a kind of efficient sports data mining study through the feature selection algorithm. Around the difficult problems existing in the study of sports effect, given the limitations of existing data sets and traditional research methods, this paper starts from the data mining algorithm, builds the sports effect evaluation database, based on feature selection idea, using elastic network algorithm, random forest algorithm, and the influence of sports on the effect of physical indicators. The evaluation algorithm introduces machine learning algorithm and feature selection algorithm to guide the sports effect evaluation research. When studying the evaluation problem of sports effect, according to the constructed sports effect evaluation database, elastic network algorithm is added to regularize, optimize, and realize feature selection. When selecting the characteristics of different sports ability, using information gains indicators to rank the importance of characteristics, which can scientifically and accurately obtain the influence degree of sports on different physical indicators, make the physical fitness research more scientific, and can reveal the effect of sports as far as possible. Experimental results show that the selected features and ground-truth have good accuracy, good evaluation performance, and high accuracy compared with the baseline method.http://dx.doi.org/10.1155/2022/2794104
spellingShingle Lina Ren
Shen Cao
Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
Journal of Electrical and Computer Engineering
title Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
title_full Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
title_fullStr Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
title_full_unstemmed Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
title_short Application of Feature Selection Based on Elastic Network and Random Forest in the Evaluation of Sports Effects
title_sort application of feature selection based on elastic network and random forest in the evaluation of sports effects
url http://dx.doi.org/10.1155/2022/2794104
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AT shencao applicationoffeatureselectionbasedonelasticnetworkandrandomforestintheevaluationofsportseffects