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E-raamat: Sports Analytics in Practice with R

(University of Notre Dame, IN)
  • Formaat: EPUB+DRM
  • Ilmumisaeg: 20-Apr-2022
  • Kirjastus: John Wiley & Sons Inc
  • Keel: eng
  • ISBN-13: 9781119598091
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  • Formaat: EPUB+DRM
  • Ilmumisaeg: 20-Apr-2022
  • Kirjastus: John Wiley & Sons Inc
  • Keel: eng
  • ISBN-13: 9781119598091
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"R is an open-source, freely available programming language used throughout this book. R is a powerful and longstanding programming language developed more than 20 years ago. It is a derivative of the "S" programming language for statistics originating in the mid-nineties developed by AT&T and Lucent Technologies. Unlike other programming languages R is optimized specifically for statistics including but not limited to simulation, machine learning, visualizations and traditional statistical modeling (linear regression) as well as tests. Due to the open-source nature of R, many developers, academics, and enthusiasts have contributed to its development for their specific needs. As a result, the language is extensible meaning it can be easily used for various purposes. For example, through R markdown simple websites and presentations can be created. In another use case, R can be used for traditional linear modeling or machine learning and can draw upon various data types for analysis including audio files, digital images, text, numeric and various other data files and types. Thus, it is widely used and non-specialized other than to say R is an analysis language. This differs from other languages which specialize in web development like Ruby, or python whichhas extended its functionality to building applications not just analysis. In this textbook, the R language is applied specifically to sports contexts. Of course, the code in this book can be used to extend your understanding of sports analytics. It may give you insights to a particular sport or analytical aspect within the sport itself such as what statistics should be focused on to win a basketball game. However, learning the code in this book can also help open up a world of analytical capabilities beyond sports. One of the benefits of learning statistics, programming and various analysis methods with sports data is that the data is widely available, and outcomes are known. This means that your analysis, models and visualizations can be applied, and you can review the outcomes as you expand upon what is covered in this book. This differs from other programming and statistical examples which may resort to boring, synthetic data to illustrate an analytical result. Using sports data is realistic and can be future oriented, making the learning more challenging yet engaging. Modeling the survivors of the Titanic pales in comparison since you cannot change the historical outcome or save future cruise ship mates. Thus, modeling which team will win a match orwhich player is a good draft pick is a superior learning experience"--

Sports Analytics in Practice with R

A practical guide for those looking to employ the latest and leading analytical software in sport

In the last twenty years, sports organizations have become a data-driven business. Before this, most decisions in sports were qualitatively driven by subject-matter experts. In the years since numerous teams found success with “Money Ball” analytical perspectives, the industry has sought to advance its analytical acumen to improve on- and off-field outcomes. The increasing demand for data to inform decisions for coaches, scouts, and players before and during sporting events has led to intriguing efforts to build upon this quantitative approach.

As this methodology for assessing performance has matured and grown in importance, so too has the open-source R software emerged as one of the leading analytical software packages. In fact, R is a top 10 programming language that is useful in academia and industry for statistics, machine learning, and rapid prototyping. Sports Analytics in Practice with R neatly marries these two advances to teach basic analytics for sports-related use—from cricket to baseball, from basketball to tennis, from soccer to sports gambling, and more.

Sports Analytics in Practice with R readers will also find:

  • A broad perspective of sports, focusing on a wide range of sports rather than just one
  • The first book of its kind that features coding examples
  • Case study approach throughout the book
  • Companion website including data sets to work through alongside the explanations

Sports Analytics in Practice with R is a helpful tool for students and professionals in the sports management field, but also for sports enthusiasts who have a coding background.

Preface vii

Author Biography ix

Foreword xii

1 Introduction to R 1

2 Data Visualization: Best Practices 25

3 Geospatial Data: Understanding Changing Baseball Player Behavior 55

4 Evaluating Players for the Football Draft 91

5 Logistic Regression: Explaining Basketball Wins and Losses with
Coefficients 133

6 Gauging Fan Sentiment in Cricket 155

7 Gambling Optimization 191

8 Exploratory Data Analysis: Searching Data for Opponent Insights 227

Index 253
Ted Kwartler, MBA, holds a Masters of Business Administration with a citation in analytics from the University of Notre Dame. He is currently a data science instructor at DataCamp.com and Harvard Universitys Extension School.