How to make sense of team sport data: from acquisition to data modeling and research aspects

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How to make sense of team sport data : from acquisition to data modeling and research aspects. / Stein, Manuel; Janetzko, Halldór; Seebacher, Daniel; Jäger, Alexander; Nagel, Manuel; Hölsch, Jürgen; Kosub, Sven; Schreck, Tobias; Keim, Daniel A.; Grossniklaus, Michael.

I: Data, Bind 2, Nr. 1, 2, 01.2017.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Stein, M, Janetzko, H, Seebacher, D, Jäger, A, Nagel, M, Hölsch, J, Kosub, S, Schreck, T, Keim, DA & Grossniklaus, M 2017, 'How to make sense of team sport data: from acquisition to data modeling and research aspects', Data, bind 2, nr. 1, 2. https://doi.org/10.3390/data2010002

APA

Stein, M., Janetzko, H., Seebacher, D., Jäger, A., Nagel, M., Hölsch, J., Kosub, S., Schreck, T., Keim, D. A., & Grossniklaus, M. (2017). How to make sense of team sport data: from acquisition to data modeling and research aspects. Data, 2(1), [2]. https://doi.org/10.3390/data2010002

Vancouver

Stein M, Janetzko H, Seebacher D, Jäger A, Nagel M, Hölsch J o.a. How to make sense of team sport data: from acquisition to data modeling and research aspects. Data. 2017 jan.;2(1). 2. https://doi.org/10.3390/data2010002

Author

Stein, Manuel ; Janetzko, Halldór ; Seebacher, Daniel ; Jäger, Alexander ; Nagel, Manuel ; Hölsch, Jürgen ; Kosub, Sven ; Schreck, Tobias ; Keim, Daniel A. ; Grossniklaus, Michael. / How to make sense of team sport data : from acquisition to data modeling and research aspects. I: Data. 2017 ; Bind 2, Nr. 1.

Bibtex

@article{67eaeaaa9206494d84b19ccfb43aa462,
title = "How to make sense of team sport data: from acquisition to data modeling and research aspects",
abstract = "Automatic and interactive data analysis is instrumental in making use of increasing amounts of complex data. Owing to novel sensor modalities, analysis of data generated in professional team sport leagues such as soccer, baseball, and basketball has recently become of concern, with potentially high commercial and research interest. The analysis of team ball games can serve many goals, e.g., in coaching to understand effects of strategies and tactics, or to derive insights improving performance. Also, it is often decisive to trainers and analysts to understand why a certain movement of a player or groups of players happened, and what the respective influencing factors are. We consider team sport as group movement including collaboration and competitionof individuals following specific rule sets. Analyzing team sports is a challenging problem as it involves joint understanding of heterogeneous data perspectives, including high-dimensional, video, and movement data, as well as considering team behavior and rules (constraints) given in the particular team sport. We identify important components of team sport data, exemplified bythe soccer case, and explain how to analyze team sport data in general. We identify challenges arising when facing these data sets and we propose a multi-facet view and analysis including pattern detection, context-aware analysis, and visual explanation. We also present applicable methods andtechnologies covering the heterogeneous aspects in team sport data. ",
author = "Manuel Stein and Halld{\'o}r Janetzko and Daniel Seebacher and Alexander J{\"a}ger and Manuel Nagel and J{\"u}rgen H{\"o}lsch and Sven Kosub and Tobias Schreck and Keim, {Daniel A.} and Michael Grossniklaus",
year = "2017",
month = jan,
doi = "10.3390/data2010002",
language = "English",
volume = "2",
journal = "Data",
issn = "2306-5729",
publisher = "MDPI",
number = "1",

}

RIS

TY - JOUR

T1 - How to make sense of team sport data

T2 - from acquisition to data modeling and research aspects

AU - Stein, Manuel

AU - Janetzko, Halldór

AU - Seebacher, Daniel

AU - Jäger, Alexander

AU - Nagel, Manuel

AU - Hölsch, Jürgen

AU - Kosub, Sven

AU - Schreck, Tobias

AU - Keim, Daniel A.

AU - Grossniklaus, Michael

PY - 2017/1

Y1 - 2017/1

N2 - Automatic and interactive data analysis is instrumental in making use of increasing amounts of complex data. Owing to novel sensor modalities, analysis of data generated in professional team sport leagues such as soccer, baseball, and basketball has recently become of concern, with potentially high commercial and research interest. The analysis of team ball games can serve many goals, e.g., in coaching to understand effects of strategies and tactics, or to derive insights improving performance. Also, it is often decisive to trainers and analysts to understand why a certain movement of a player or groups of players happened, and what the respective influencing factors are. We consider team sport as group movement including collaboration and competitionof individuals following specific rule sets. Analyzing team sports is a challenging problem as it involves joint understanding of heterogeneous data perspectives, including high-dimensional, video, and movement data, as well as considering team behavior and rules (constraints) given in the particular team sport. We identify important components of team sport data, exemplified bythe soccer case, and explain how to analyze team sport data in general. We identify challenges arising when facing these data sets and we propose a multi-facet view and analysis including pattern detection, context-aware analysis, and visual explanation. We also present applicable methods andtechnologies covering the heterogeneous aspects in team sport data.

AB - Automatic and interactive data analysis is instrumental in making use of increasing amounts of complex data. Owing to novel sensor modalities, analysis of data generated in professional team sport leagues such as soccer, baseball, and basketball has recently become of concern, with potentially high commercial and research interest. The analysis of team ball games can serve many goals, e.g., in coaching to understand effects of strategies and tactics, or to derive insights improving performance. Also, it is often decisive to trainers and analysts to understand why a certain movement of a player or groups of players happened, and what the respective influencing factors are. We consider team sport as group movement including collaboration and competitionof individuals following specific rule sets. Analyzing team sports is a challenging problem as it involves joint understanding of heterogeneous data perspectives, including high-dimensional, video, and movement data, as well as considering team behavior and rules (constraints) given in the particular team sport. We identify important components of team sport data, exemplified bythe soccer case, and explain how to analyze team sport data in general. We identify challenges arising when facing these data sets and we propose a multi-facet view and analysis including pattern detection, context-aware analysis, and visual explanation. We also present applicable methods andtechnologies covering the heterogeneous aspects in team sport data.

U2 - 10.3390/data2010002

DO - 10.3390/data2010002

M3 - Journal article

VL - 2

JO - Data

JF - Data

SN - 2306-5729

IS - 1

M1 - 2

ER -

ID: 178253468