Basketball Data Science

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A01=Marica Manisera
A01=Paola Zuccolotto
advanced statistical methods
Agglomerative Hierarchical Clustering
Author_Marica Manisera
Author_Paola Zuccolotto
basketball shot outcome prediction
Bubble Plot
Category=PBT
Category=SFM
cluster analysis techniques
Convex Hull Areas
data analytics
data mining methods
Defensive Rebounds
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eq_nobargain
eq_non-fiction
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Field Goal Percentages
Free Throws
Game Quarter
Ggplot2 Package
Golden State Warriors
Loess Regression
Markov Switching Model
Milwaukee Bucks
Multiple Linear Regression
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NBA data science
NBA games
Oklahoma City Thunder
Open Source Package
Pearson's Contingency Coefficient
Pearson’s Contingency Coefficient
pressure situation analytics
quantitative sports research
R package
Radial Plots
Scatter Plot
scoring probability
Simple Linear Regression Model
Smoothing Parameter
spatial data analysis
sports machine learning
sports performance modelling
sprots analytics
statistics in sports
Stephen Curry

Product details

  • ISBN 9781138600812
  • Weight: 420g
  • Dimensions: 156 x 234mm
  • Publication Date: 14 Jan 2020
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Using data from one season of NBA games, Basketball Data Science: With Applications in R is the perfect book for anyone interested in learning and applying data analytics in basketball. Whether assessing the spatial performance of an NBA player's shots or doing an analysis of the impact of high pressure game situations on the probability of scoring, this book discusses a variety of case studies and hands-on examples using a custom R package. The codes are supplied so readers can reproduce the analyses themselves or create their own. Assuming a basic statistical knowledge, Basketball Data Science with R is suitable for students, technicians, coaches, data analysts and applied researchers.

Features:

  • One of the first books to provide statistical and data mining methods for the growing field of analytics in basketball
  • Presents tools for modelling graphs and figures to visualize the data
  • Includes real world case studies and examples, such as estimations of scoring probability using the Golden State Warriors as a test case
  • Provides the source code and data so readers can do their own analyses on NBA teams and players

Paola Zuccolotto and Marica Manisera are, respectively, Full and Associate Professor of Statistics at the University of Brescia. Paola Zuccolotto is the scientific director of the Big & Open Data Innovation Laboratory (BODaI-Lab), where she coordinates, together with Marica Manisera, the international project Big Data Analytics in Sports (BDsports).

They carry out scientific research activity in the field of Statistical Science, both with a methodological and applied approach. They authored/co-authored several scientific articles in international journals and books, participated to many national and international conferences, also as organizers of specialized sessions, often on the topic of Sports Analytics. They regularly act as scientific reviewers for the world’s most prestigious journals in the field of Statistics.

Paola Zuccolotto is a member of the Editorial Advisory Board of the Journal of Sports Sciences, while Marica Manisera is Associate Editor of the Journal of Sports Analytics; both of them are guest co-editors of special issues of international journals on Statistics in Sports. The International Statistical Institute (ISI) delegated them the task of revitalizing its Special Interest Group (SIG) on Sports Statistics. Marica Manisera is the Chair of the renewed ISI SIG on Sport.

Both of them teach undergraduate and graduate courses in the field of Statistics and are responsible for the scientific area dedicated to Sport Analytics at the PhD “Analytics for Economics and Management” of the University of Brescia. They also teach courses and seminars on Sports Analytics in University Masters on Sports Engineering and specialized training projects devoted to people operating in the sports world. They supervise students’ internships, final reports and master’s theses on the subject of Statistics, often with applications to sport data. They also work in collaboration with high-school teachers, creating experimental educational projects to bring students closer to quantitative subjects through Sport Analytics.

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