PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK

Football is the most popular sport in the world. Most of the countries in the world play a football league competition where every football club competes against each other for the win and the team with the highest points wins the league. One of the most popular football leagues in the world is the...

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Main Author: Febriansyah, Yayan
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/65253
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:65253
spelling id-itb.:652532022-06-21T15:47:16ZPREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK Febriansyah, Yayan Indonesia Final Project Formation, Football Player Lineup, Artificial Neural Network, deep learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/65253 Football is the most popular sport in the world. Most of the countries in the world play a football league competition where every football club competes against each other for the win and the team with the highest points wins the league. One of the most popular football leagues in the world is the English Premier League. Currently, models of machine learning and deep learning have been developed, which are applied in various fields, including in football. In this final project, one of the algorithms in deep learning will be used, namely Artificial Neural Network, which will be applied to predict the formation and line-up of the English Premier League team. The output of the model is the best formation of a team when facing another team. From the resulting best formation, the line-up is made to face every team in the English Premier League for one season. The resulting model is quite able to give good predictions even though there are some weakness in it. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Football is the most popular sport in the world. Most of the countries in the world play a football league competition where every football club competes against each other for the win and the team with the highest points wins the league. One of the most popular football leagues in the world is the English Premier League. Currently, models of machine learning and deep learning have been developed, which are applied in various fields, including in football. In this final project, one of the algorithms in deep learning will be used, namely Artificial Neural Network, which will be applied to predict the formation and line-up of the English Premier League team. The output of the model is the best formation of a team when facing another team. From the resulting best formation, the line-up is made to face every team in the English Premier League for one season. The resulting model is quite able to give good predictions even though there are some weakness in it.
format Final Project
author Febriansyah, Yayan
spellingShingle Febriansyah, Yayan
PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
author_facet Febriansyah, Yayan
author_sort Febriansyah, Yayan
title PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
title_short PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
title_full PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
title_fullStr PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
title_full_unstemmed PREDICTION OF ENGLISH PREMIER LEAGUE TEAM FORMATION AND LINEUP USING ARTIFICIAL NEURAL NETWORK
title_sort prediction of english premier league team formation and lineup using artificial neural network
url https://digilib.itb.ac.id/gdl/view/65253
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