Unlock the Power of Bayesian Statistics with R
This comprehensive guide is designed for anyone who wants to delve into the practical application of Bayesian methods for modeling sports data。 You will be exposed to a concise yet practical sequence of statistical concepts that get you on the path to sports modeling in R as quickly as possible – armed with just enough knowledge of Bayesian methods to make you moderately dangerous。 Along the way, you'll build on what you learn in each chapter, starting with the basics of Bayesian reasoning and probability, all the way through to more complex topics like Markov Chain Monte Carlo (MCMC) and Approximate Bayesian Computation (ABC)。 Each chapter is enriched with practical sports examples and fully downloadable R code, making it a hands-on and interactive experience。
Culminating with fully coded R examples of working Bayesian models for a number of sports including the NHL, NBA, NFL & MLB, Mack's combination of downloadable code and clear explanations will allow readers with different levels of familiarity with statistics to level-up their sports modeling skills。
Whether you are a seasoned sports bettor looking to enhance your Bayesian modeling skills or an R novice eager to improve your abilities, 'Bayesian Sports Models in R' has something for everyone。 This book not only teaches you the theory behind Bayesian methods but also demonstrates how to apply these techniques to real-world sports scenarios。 From predicting game outcomes to analyzing player performance, you'll learn how to leverage Bayesian models in the search for a competitive edge。 Plus, you can easily implement and customize these models to suit your specific needs, making them a valuable resource for anyone serious about sports modeling through simulation。
Bayesian methods are the gold standard for modeling events with large amounts of dynamic uncertainty。
You’re about to find out why。