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May 12, 2020 - HTML
nba-prediction
Here are 57 public repositories matching this topic...
Predicting NBA salaries using machine learning through R. Clustering players based on stats to determine player type in an increasingly position-less era of basketball.
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Nov 1, 2020 - R
The NBA game prediction using multiple classifiers and multiple feature sets along with a comparative analysis of the same. Web scraping techniques are used to scrap around the past 10 years data from the official nba/stats website to perform feature engineering for the classification problem.
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Feb 13, 2021 - Python
⛹️⛹️♀️⛹️Collecting NBA player data and predicting player position label ⛹️⛹️♀️⛹️
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Jun 17, 2024 - Jupyter Notebook
Analysis of voting patterns and their correlation to past candidates performance over the years to determine the probability of current candidates to be crowned the NBAs' Most Valuable Player for season 2019-20
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Dec 29, 2020 - Jupyter Notebook
Quantifying NBA player interactions
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Jan 11, 2023 - Python
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Aug 5, 2023 - R
Analyze and Predict NBA Players' Fantasy Scores
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Dec 3, 2020 - Python
predicting contracts for 2020 nba free agents
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Jul 14, 2020 - R
predicting 2020's Most Improved Player, as well as candidates for next year
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May 26, 2020 - R
Utilizing machine learning in attempt to accurately predict which NBA players will end up being named All Stars based on their first two seasons in the league
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Aug 18, 2020 - Jupyter Notebook
This project attempts to Predict an NBA player's salary bin through Random Forest Classification. This was an independent class project and the README is an adapted version of the final paper.
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Jan 25, 2021 - Jupyter Notebook
Predicting the final seeds of National Basketball Association teams, a Machine Learning approach
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Jun 17, 2023 - Jupyter Notebook
my dabbling in R and data analysis, predicting All-Star potential for players in the 2017 draft
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Oct 20, 2017 - R
This is the notebook of our final project for CMSC320: Introduction to Data Science. In this project, we explore Hall of Famers in the NBA.
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Dec 20, 2021 - HTML
Demonstrates the deployment process of FanaticFi, an NBA Draft Rank Prediction app empowered by Support Vector Machines (SVM) machine learning model using the Flask application and Heroku cloud services. This user-friendly web application is going to predict whether NBA rookie’s draft rank is within the top 15 or below based on given player’s st…
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Jul 22, 2022 - CSS
Carried out predictive analysis on the latest NBA 2020 games data to predict the winners/lossers of the NBA 2020 season. Used linear regression in python to develop a winning equation, matplotlib to develop charts and google api to create heat map.
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Nov 7, 2020
Machine Learning makes predicting NBA2K player ratings one of the easiest things in the world.
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Dec 7, 2021 - Jupyter Notebook
Predicting LeBron's Next Era
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Nov 15, 2018 - JavaScript
Python scripts that can be used to identify outstanding players for a given season as well as predict the output of a game given two teams
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Nov 21, 2021 - Python
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