R을 이용한 FIFA 21 선수 데이터셋에 대한 분석
-
Updated
Mar 24, 2021 - R
R을 이용한 FIFA 21 선수 데이터셋에 대한 분석
Code of the article Early Prediction of Physical Performance in Elite Soccer Matches—A Machine Learning Approach to Support Substitutions, Entropy, Data Analytics in Sports Sciences: Changing the Game, 2021
Some R Analysis
To identify young soccer players who posses the potential to become the next Kylian Mbappé. Also, Linear Regression practice.
Analysis of historical European Premier League football (soccer) matches
Data Science Project Using Soccer Data
Access the site ➡️
Python data analysis and visualization.
This repository consists the supplemental materials of the paper "Decomposition of Expected Goal Models: Aggregated SHAP Values for Analyzing Scoring Potential of Player/Team".
Assessing the impact of coach interventions in player lineups in sports using machine learning models.
Percentile Rank vs Premier League Att Mid / Wingers | Season 2022-23 of Mohamed Salah 📊, The data was obtained from fbref.com and the chart was created using the Matplotlib library in Python.
This repository contains results of an exploratory data analysis with visualisation performed on nearly 11,000,000 entries across the European Soccer (Football) Database, based in the SQLite database engine, from Kaggle using SQL (SQLite) in Python.
clustering soccer player archetypes by using FIFA 2019 player stats data.
This project strives to show how one can begin to understand soccer (fútbol) set piece strategy with event tracking data.
Research conducted with STU over the summer of 2021. R used as main language.
La Quiniela is the name of a Spanish game of chance, managed by Loterías y Apuestas del Estado, which is based on the First and Second Divisions of football.
EUFA winning team prediction
A repository for exploratory analysis of European football league data using SQL in Python.
Inspired by the film moneyball, this repo contains the files to replicate a way of doing real football scouting: collecting all the transfermarkt player economic values and the player statistics of APIfootball.com of the current season.
Add a description, image, and links to the soccer-analytics topic page so that developers can more easily learn about it.
To associate your repository with the soccer-analytics topic, visit your repo's landing page and select "manage topics."