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Published in: BMC Sports Science, Medicine and Rehabilitation 1/2024

Open Access 01-12-2024 | Research

A novel comparative study of NNAR approach with linear stochastic time series models in predicting tennis player's performance

Authors: Abdullah M. Almarashi, Muhammad Daniyal, Farrukh Jamal

Published in: BMC Sports Science, Medicine and Rehabilitation | Issue 1/2024

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Abstract

Background

Prediction models have gained immense importance in various fields for decision-making purposes. In the context of tennis, relying solely on the probability of winning a single match may not be sufficient for predicting a player's future performance or ranking. The performance of a tennis player is influenced by the timing of their matches throughout the year, necessitating the incorporation of time as a crucial factor. This study aims to focus on prediction models for performance indicators that can assist both tennis players and sports analysts in forecasting player standings in future matches.

Methodology

To predict player performance, this study employs a dynamic technique that analyzes the structure of performance using both linear and nonlinear time series models. A novel approach has been taken, comparing the performance of the non-linear Neural Network Auto-Regressive (NNAR) model with conventional stochastic linear and nonlinear models such as Auto-Regressive Integrated Moving Average (ARIMA), Exponential Smoothing (ETS), and TBATS (Trigonometric Seasonal Decomposition Time Series).

Results

The study finds that the NNAR model outperforms all other competing models based on lower values of Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and Mean Absolute Percentage Error (MAPE). This superiority in performance metrics suggests that the NNAR model is the most appropriate approach for predicting player performance in tennis. Additionally, the prediction results obtained from the NNAR model demonstrate narrow 95% Confidence Intervals, indicating higher accuracy and reliability in the forecasts.

Conclusion

In conclusion, this study highlights the significance of incorporating time as a factor when predicting player performance in tennis. It emphasizes the potential benefits of using the NNAR model for forecasting future player standings in matches. The findings suggest that the NNAR model is a recommended approach compared to conventional models like ARIMA, ETS, and TBATS. By considering time as a crucial factor and employing the NNAR model, both tennis players and sports analysts can make more accurate predictions about player performance.
Literature
1.
go back to reference Alison K, Barry S, Brain C, Aonghus L, Jakim B, Cailbhe D. Prediction equations for marathon performance: a systematic review. Int J Sports Physiol Perform. 2019;14(9):1159–69.CrossRef Alison K, Barry S, Brain C, Aonghus L, Jakim B, Cailbhe D. Prediction equations for marathon performance: a systematic review. Int J Sports Physiol Perform. 2019;14(9):1159–69.CrossRef
2.
go back to reference Ye J, Luo D, Shu C. Online learner performance prediction method based on short text emotion enhancement. Acta Automatica Sinica. 2020;46(9):14. Ye J, Luo D, Shu C. Online learner performance prediction method based on short text emotion enhancement. Acta Automatica Sinica. 2020;46(9):14.
3.
go back to reference Tian Z, Fan Q, Wang C. Application of deep learning in bridge response prediction and health monitoring. J Railway Eng Soc. 2021;38(6):6. Tian Z, Fan Q, Wang C. Application of deep learning in bridge response prediction and health monitoring. J Railway Eng Soc. 2021;38(6):6.
4.
go back to reference Jones AM, Vanhatalo A. The’Critical power’ concept: applications to sports performance with a focus on intermittent high-intensity exercise. Sports Med. 2017;47(1):1–14. Jones AM, Vanhatalo A. The’Critical power’ concept: applications to sports performance with a focus on intermittent high-intensity exercise. Sports Med. 2017;47(1):1–14.
5.
6.
go back to reference Kong J, Yang C, Wang J, et al. Deep-stacking network approach by multisource data mining for hazardous risk identification in iot-based intelligent food management systems. Comput Intell Neurosci. 2021;1194565:16. Kong J, Yang C, Wang J, et al. Deep-stacking network approach by multisource data mining for hazardous risk identification in iot-based intelligent food management systems. Comput Intell Neurosci. 2021;1194565:16.
7.
go back to reference Huang Z, Liu Y, Zhan C, Lin C, Cai W, Chen Y. A novel group recommendation model with two-stage deep learning. IEEE Transact Syst Man Cybernet: Syst 2021. In press. Huang Z, Liu Y, Zhan C, Lin C, Cai W, Chen Y. A novel group recommendation model with two-stage deep learning. IEEE Transact Syst Man Cybernet: Syst 2021. In press.
9.
go back to reference Boulier BL, Stekler HO. Are sports seedings good predictors?: an evaluation. Int J Forecast. 1999;15(1):83–91.CrossRef Boulier BL, Stekler HO. Are sports seedings good predictors?: an evaluation. Int J Forecast. 1999;15(1):83–91.CrossRef
10.
go back to reference Newton PK, Keller JB. Probability of winning at tennis I. Theory and data. Stud Appl Math. 2005;114(3):241–69.CrossRef Newton PK, Keller JB. Probability of winning at tennis I. Theory and data. Stud Appl Math. 2005;114(3):241–69.CrossRef
11.
go back to reference Knottenbelt WJ, Spanias D, Madurska AM. A common-opponent stochastic model for predicting the outcome of professional tennis matches. Comput Math Appl. 2012;64(12):3820–7.CrossRef Knottenbelt WJ, Spanias D, Madurska AM. A common-opponent stochastic model for predicting the outcome of professional tennis matches. Comput Math Appl. 2012;64(12):3820–7.CrossRef
12.
go back to reference Akhtar S, Scarf P, Rasool Z. Rating players in test match cricket. J Operational Res Soc. 2015;66(4):684–95.CrossRef Akhtar S, Scarf P, Rasool Z. Rating players in test match cricket. J Operational Res Soc. 2015;66(4):684–95.CrossRef
13.
go back to reference Scarf P, Shi X, Akhtar S. Modelling batting strategy in test cricket. In: Progress in Industrial Mathematics at ECMI 2008. Berlin, Heidelberg: Springer 2010. pp. 481–489, Scarf P, Shi X, Akhtar S. Modelling batting strategy in test cricket. In: Progress in Industrial Mathematics at ECMI 2008. Berlin, Heidelberg: Springer 2010. pp. 481–489,
15.
go back to reference Fayomi A, Majeed R, Algarni A, Akhtar S, Jamal F, Nasir JA. Forecasting Tennis Match Results Using the Bradley-Terry Model. Int J Photoenergy. 2022;2022:1898132.CrossRef Fayomi A, Majeed R, Algarni A, Akhtar S, Jamal F, Nasir JA. Forecasting Tennis Match Results Using the Bradley-Terry Model. Int J Photoenergy. 2022;2022:1898132.CrossRef
16.
go back to reference Klaassen FJ, Magnus JR. Forecasting the winner of a tennis match. Eur J Oper Res. 2003;148(2):257–67.CrossRef Klaassen FJ, Magnus JR. Forecasting the winner of a tennis match. Eur J Oper Res. 2003;148(2):257–67.CrossRef
17.
go back to reference McHale I, Morton A. A Bradley-Terry type model for forecasting tennis match results. Int J Forecast. 2011;27(2):619–30.CrossRef McHale I, Morton A. A Bradley-Terry type model for forecasting tennis match results. Int J Forecast. 2011;27(2):619–30.CrossRef
18.
go back to reference Koopman SJ, Lit R. The analysis and forecasting of tennis matches by using a high dimensional dynamic model. J R Stat Soc A Stat Soc. 2019;182(4):1393–409.CrossRef Koopman SJ, Lit R. The analysis and forecasting of tennis matches by using a high dimensional dynamic model. J R Stat Soc A Stat Soc. 2019;182(4):1393–409.CrossRef
20.
go back to reference Wang S, Shen X, Zhao J, Sun Y. Predicting the impact of marine meteorology on ship speed based on ASAE deep learning. J Traf Transport Eng. 2018;18(2):9. Wang S, Shen X, Zhao J, Sun Y. Predicting the impact of marine meteorology on ship speed based on ASAE deep learning. J Traf Transport Eng. 2018;18(2):9.
21.
go back to reference Zhou Q. Sports achievement prediction and influencing factors analysis combined with deep learning model. Sci Program. 2022;2022:3547703. Zhou Q. Sports achievement prediction and influencing factors analysis combined with deep learning model. Sci Program. 2022;2022:3547703.
22.
go back to reference Klaassen FJ, Magnus JR. Are points in tennis independent and identically distributed? Evidence from a dynamic binary panel data model. J Am Stat Assoc. 2001;96(454):500–9.CrossRef Klaassen FJ, Magnus JR. Are points in tennis independent and identically distributed? Evidence from a dynamic binary panel data model. J Am Stat Assoc. 2001;96(454):500–9.CrossRef
23.
go back to reference Newton PK, Aslam K. Monte Carlo tennis: a stochastic Markov chain model. J Quant Anal Sports. 2009;5(3). Newton PK, Aslam K. Monte Carlo tennis: a stochastic Markov chain model. J Quant Anal Sports. 2009;5(3).
24.
go back to reference Bradley RA, Terry ME. Rank analysis of incomplete block designs: I. The method of paired comparisons. Biometrika. 1952;39(3/4):324–45.CrossRef Bradley RA, Terry ME. Rank analysis of incomplete block designs: I. The method of paired comparisons. Biometrika. 1952;39(3/4):324–45.CrossRef
25.
go back to reference Clarke SR, Dyte D. Using official ratings to simulate major tennis tournaments. Int Trans Oper Res. 2000;7(6):585–94.CrossRef Clarke SR, Dyte D. Using official ratings to simulate major tennis tournaments. Int Trans Oper Res. 2000;7(6):585–94.CrossRef
26.
go back to reference Cheng B, Titterington DM. Neural networks: a review from a statistical perspective. Stat Sci. 1994;9(1):2–30. Cheng B, Titterington DM. Neural networks: a review from a statistical perspective. Stat Sci. 1994;9(1):2–30.
27.
go back to reference Aras S, Kocakoc ID. A new model selection strategy in time series forecasting with artificial neural networks: IHTS. Neurocomputing. 2016;174:974–87.CrossRef Aras S, Kocakoc ID. A new model selection strategy in time series forecasting with artificial neural networks: IHTS. Neurocomputing. 2016;174:974–87.CrossRef
Metadata
Title
A novel comparative study of NNAR approach with linear stochastic time series models in predicting tennis player's performance
Authors
Abdullah M. Almarashi
Muhammad Daniyal
Farrukh Jamal
Publication date
01-12-2024
Publisher
BioMed Central
Published in
BMC Sports Science, Medicine and Rehabilitation / Issue 1/2024
Electronic ISSN: 2052-1847
DOI
https://doi.org/10.1186/s13102-024-00815-7

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