Predicting the Final Points of the Decathlon Based on the Results of the First Day Events using Regr

Abstract Number:

3831 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Speed 

Participants:

Abdelmonaem Jornaz (1)

Institutions:

(1) Park University, N/A

First Author:

Abdelmonaem Jornaz  
Park University

Presenting Author:

Abdelmonaem Jornaz  
Park University

Abstract Text:

The decathlon is a complex athletics discipline that combines ten track and field events held over the course of two days for male athletes. These ten events can be classified as "running," "jumping," and "throwing" events. A dataset was gathered from the competition results of all Olympic games and world athletics championships from 1984 to 2023 (n = 595), and it was divided into training (90%) and testing (10%) subsets.
The main objective of this study is to predict the decathlon final points standings using the five events of the first day. The training and test set were resampled with replacement 10000 times of the original dataset, then four regression models were applied to test which model fits the data better, and the root mean square error (RMSE) was used as a model performance criterion. The results showed that the final performance is highly influenced by two events from the first day, which are long jump (LJ) and shot put (SP). In addition, the multiple linear regression model was the best performing model to predict the final results followed by partial least square regression and quantile regression.

Keywords:

Decathlon|Multiple linear regression model|Partial least square regression|Quantile regression|Principal component regression model|Root mean square error (RMSE)

Sponsors:

Section on Statistics in Sports

Tracks:

Miscellaneous

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