Two-phased DEA-MLA approach for predicting efficiency of NBA players

In sports, a calculation of efficiency is considered to be one of the most challenging tasks. In this paper, DEA is used to evaluate an efficiency of the NBA players, based on multiple inputs and multiple outputs. The efficiency is evaluated for 26 NBA players at the guard position based on...

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Main Authors: Radovanović Sandro, Radojičić Milan, Savić Gordana
Format: Article
Language:English
Published: University of Belgrade 2014-01-01
Series:Yugoslav Journal of Operations Research
Subjects:
Online Access:http://www.doiserbia.nb.rs/img/doi/0354-0243/2014/0354-02431400030R.pdf
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spelling doaj-fdc277c9e04c4630ba58dd3c292fa5ad2020-11-25T00:48:40ZengUniversity of BelgradeYugoslav Journal of Operations Research0354-02432014-01-0124334735810.2298/YJOR140430030R0354-02431400030RTwo-phased DEA-MLA approach for predicting efficiency of NBA playersRadovanović Sandro0Radojičić Milan1Savić Gordana2Faculty of Organizational Sciences, BelgradeFaculty of Organizational Sciences, BelgradeFaculty of Organizational Sciences, BelgradeIn sports, a calculation of efficiency is considered to be one of the most challenging tasks. In this paper, DEA is used to evaluate an efficiency of the NBA players, based on multiple inputs and multiple outputs. The efficiency is evaluated for 26 NBA players at the guard position based on existing data. However, if we want to generate the efficiency for a new player, we would have to re-conduct the DEA analysis. Therefore, to predict the efficiency of a new player, machine learning algorithms are applied. The DEA results are incorporated as an input for the learning algorithms, defining thereby an efficiency frontier function form with high reliability. In this paper, linear regression, neural network, and support vector machines are used to predict an efficiency frontier. The results have shown that neural networks can predict the efficiency with an error less than 1%, and the linear regression with an error less than 2%.http://www.doiserbia.nb.rs/img/doi/0354-0243/2014/0354-02431400030R.pdfdata envelopment analysisefficiency analysispredictive analyticsmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Radovanović Sandro
Radojičić Milan
Savić Gordana
spellingShingle Radovanović Sandro
Radojičić Milan
Savić Gordana
Two-phased DEA-MLA approach for predicting efficiency of NBA players
Yugoslav Journal of Operations Research
data envelopment analysis
efficiency analysis
predictive analytics
machine learning
author_facet Radovanović Sandro
Radojičić Milan
Savić Gordana
author_sort Radovanović Sandro
title Two-phased DEA-MLA approach for predicting efficiency of NBA players
title_short Two-phased DEA-MLA approach for predicting efficiency of NBA players
title_full Two-phased DEA-MLA approach for predicting efficiency of NBA players
title_fullStr Two-phased DEA-MLA approach for predicting efficiency of NBA players
title_full_unstemmed Two-phased DEA-MLA approach for predicting efficiency of NBA players
title_sort two-phased dea-mla approach for predicting efficiency of nba players
publisher University of Belgrade
series Yugoslav Journal of Operations Research
issn 0354-0243
publishDate 2014-01-01
description In sports, a calculation of efficiency is considered to be one of the most challenging tasks. In this paper, DEA is used to evaluate an efficiency of the NBA players, based on multiple inputs and multiple outputs. The efficiency is evaluated for 26 NBA players at the guard position based on existing data. However, if we want to generate the efficiency for a new player, we would have to re-conduct the DEA analysis. Therefore, to predict the efficiency of a new player, machine learning algorithms are applied. The DEA results are incorporated as an input for the learning algorithms, defining thereby an efficiency frontier function form with high reliability. In this paper, linear regression, neural network, and support vector machines are used to predict an efficiency frontier. The results have shown that neural networks can predict the efficiency with an error less than 1%, and the linear regression with an error less than 2%.
topic data envelopment analysis
efficiency analysis
predictive analytics
machine learning
url http://www.doiserbia.nb.rs/img/doi/0354-0243/2014/0354-02431400030R.pdf
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