The Analysis and Forecasting of ATP Tennis Matches Using a High-Dimensional Dynamic Model

Tinbergen Institute Discussion Paper 2018-009/III

18 Pages Posted: 4 Feb 2018

See all articles by Paolo Gorgi

Paolo Gorgi

University of Padua; VU University Amsterdam - Faculty of Economics and Business Administration

Siem Jan Koopman

Vrije Universiteit Amsterdam - School of Business and Economics; Tinbergen Institute; Aarhus University - CREATES

Rutger Lit

VU University Amsterdam

Date Written: January 23, 2018

Abstract

We propose a basic high-dimensional dynamic model for tennis match results with time varying player-specific abilities for different court surface types. Our statistical model can be treated in a likelihood-based analysis and is capable of handling high-dimensional datasets while the number of parameters remains small. In particular, we analyze 17 years of tennis matches for a panel of over 500 players, which leads to more than 2000 dynamic strength levels. We find that time varying player-specific abilities for different court surfaces are of key importance for analyzing tennis matches. We further consider several other extensions including player-specific explanatory variables and the accountance of specific configurations for Grand Slam tournaments. The estimation results can be used to construct rankings of players for different court surface types. We finally show that our proposed model can also be effective in forecasting. We provide evidence that our model significantly outperforms existing models in the forecasting of tennis match results.

Keywords: Sports Statistics, Score-Driven Time Series Models, Rankings, Forecasting

JEL Classification: C32, C53

Suggested Citation

Gorgi, Paolo and Gorgi, Paolo and Koopman, Siem Jan and Lit, Rutger, The Analysis and Forecasting of ATP Tennis Matches Using a High-Dimensional Dynamic Model (January 23, 2018). Tinbergen Institute Discussion Paper 2018-009/III, Available at SSRN: https://ssrn.com/abstract=3110555 or http://dx.doi.org/10.2139/ssrn.3110555

Paolo Gorgi (Contact Author)

University of Padua ( email )

Via 8 Febbraio, 2
Padova, Vicenza 35122
Italy

VU University Amsterdam - Faculty of Economics and Business Administration ( email )

De Boelelaan 1105
Amsterdam, 1081HV
Netherlands

Siem Jan Koopman

Vrije Universiteit Amsterdam - School of Business and Economics ( email )

De Boelelaan 1105
Amsterdam, 1081 HV
Netherlands
+31205986019 (Phone)

HOME PAGE: http://sjkoopman.net

Tinbergen Institute ( email )

Gustav Mahlerplein 117
1082 MS Amsterdam
Netherlands

HOME PAGE: http://personal.vu.nl/s.j.koopman

Aarhus University - CREATES ( email )

School of Economics and Management
Building 1322, Bartholins Alle 10
DK-8000 Aarhus C
Denmark

Rutger Lit

VU University Amsterdam ( email )

De Boelelaan 1105
Amsterdam, ND North Holland 1081 HV
Netherlands

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
221
Abstract Views
1,019
Rank
276,476
PlumX Metrics