Extent:
Online-Ressource (XIV, 138 p, online resource)
Series:
Type of publication: Book / Working Paper
Language: English
Notes:
Includes bibliographical references and index
Sports Data Mining; Preface; Aims; Audience; Future; Contents; List of Figures; List of Tables; Chapter 1: Sports Data Mining: The Field; Chapter Overview; Chapter Overview; Chapter Overview; Chapter Overview; 1 Definition; 2 History; 3 Societal Dimensions; 4 The International Landscape; 5 Criticisms; 6 Questions for Discussion; Chapter 2: Sports Data Mining Methodology; Chapter Overview; 1 Scientific Foundation; 2 Traditional Data Mining Applications; 3 Deriving Knowledge; 4 Questions for Discussion; Chapter 3: Data Sources for Sports; Chapter Overview; 1 Introduction
2 Professional Societies2.1 The Society for American Baseball Research; 2.2 Association for Professional Basketball Research; 2.3 Professional Football Researchers Association; 3 Sport-Related Associations; 3.1 The International Association on Computer Science in Sport; 3.2 The International Association for Sports Information; 4 Special Interest Sources; 4.1 Baseball; 4.2 Basketball; 4.3 Football; 4.4 Cricket; 4.5 Soccer; 4.6 Multiple Sports; 5 Conclusions; 6 Questions for Discussion; Chapter 4: Research in Sports Statistics; Chapter Overview; 1 Introduction; 2 Sports Statistics
2.1 History and Inherent Problems of Statistics in Sports2.2 Bill James; 2.3 Dean Oliver; 3 Baseball Research; 3.1 Building Blocks; 3.2 Runs Created; 3.3 Win Shares; 3.4 Linear Weights and Total Player Rating; 3.5 Pitching Measures; 4 Basketball Research; 4.1 Shot Zones; 4.2 Player Efficiency Rating; 4.3 Plus/Minus Rating; 4.4 Measuring Player Contribution to Winning; 4.5 Rating Clutch Performances; 5 Football Research; 5.1 Defense-Adjusted Value Over Average; 5.2 Defense-Adjusted Points Above Replacement; 5.3 Adjusted Line Yards; 6 Emerging Research in Other Sports
6.1 NCAA Bowl Championship Series6.2 NCAA Men´s Basketball Tournament; 6.3 Soccer; 6.4 Cricket; 6.5 Olympic Curling; 7 Conclusions; 8 Questions for Discussion; Chapter 5: Tools and Systems for Sports Data Analysis; Chapter Overview; 1 Introduction; 2 Sports Data Mining Tools; 2.1 Advanced Scout; 2.2 Synergy Online; 2.3 SportsVis; 2.4 Sports Data Hub; 3 Scouting Tools; 3.1 Digital Scout; 3.2 Inside Edge; 4 Sports Fraud Detection; 4.1 Las Vegas Sports Consultants; 4.2 Offshore Gaming; 5 Conclusions; 6 Questions for Discussion; Chapter 6: Predictive Modeling for Sports and Gaming; 1 Introduction
2 Statistical Simulations2.1 Baseball; 2.2 Basketball´s BBall; 2.3 Other Sporting Simulations; 3 Machine Learning; 3.1 Soccer; 3.2 Greyhound and Thoroughbred Racing; 3.3 Commercial Products; 3.3.1 Synergy Online; 3.3.2 The Dr. Z System; 3.3.3 Front Office Football; 3.3.4 Visual Sports; 4 Conclusions; 5 Questions for Discussion; Chapter 7: Multimedia and Video Analysis for Sports; Chapter Overview; 1 Introduction; 2 Searchable Video; 2.1 SoccerQ; 2.2 Blinkx; 2.3 Clipta; 2.4 SportsVHL; 2.5 Truveo; 2.6 Bluefin Lab; 3 Motion Analysis; 4 Conclusions; 5 Questions for Discussion
Chapter 8: Web Sports Data Extraction and Visualization
ISBN: 978-1-4419-6730-5 ; 978-1-4419-6729-9
Other identifiers:
10.1007/978-1-4419-6730-5 [DOI]
Source:
ECONIS - Online Catalogue of the ZBW
Persistent link: https://www.econbiz.de/10014015128