Home J Young Pharm, Vol 8/Issue 4/2016 Multi-Hierarchical Pattern Recognition of Athlete’s Relative Performance as A Criterion for Predicting Potential Athletes

Multi-Hierarchical Pattern Recognition of Athlete’s Relative Performance as A Criterion for Predicting Potential Athletes

by [email protected]
Published on:August 2016
Journal of Young Pharmacists, 2016; 8(4):463-470
Original Article | doi:10.5530/jyp.2016.4.24
Authors:

Mohamad Razali Abdullah1, Ahmad Bisyri Husin Musawi Maliki1, Rabiu Muazu Musa1, Norlaila Azura Kosni1, Hafizan Juahir2, Mainul Haque3

1Faculty of Applied Social Sciences, Universiti Sultan Zainal Abidin, 21300, Terengganu, Malaysia.

2East Coast Environmental Research Institute (ESERI), Universiti Sultan Zainal Abidin, 21300, Terengganu, Malaysia.

3Unit of Pharmacology, Faculty of Medicine and Defense Health, National Defense University of Malaysia, Kem Sungai Besi, 57000 Kuala Lumpur, Malaysia.

Abstract:

Objective: This study investigates the relative performance quality pattern of athletes that trains under Terengganu sports development program based on physical fitness and psychological components. Methods: Relative performance data (223×7) were obtained from various types of sport, and its main tributaries were evaluated for physical fitness and TEOSQ instrument. Multivariate methods of hierarchical agglomerative cluster analysis (HACA), discriminant analysis (DA), principal component analysis (PCA), and principal factor analysis (PFA), were used to study the relative performance variations of the most significant performance quality variables and to determine the origin of relative performance components. Results: Three clusters of performance were shaped in view of HACA. Forward and backward stepwise DA discriminates six and five performance quality variables from the first seven variables. PCA and FA were used to identify the origin of each quality performance variables based on three clustered groups. Three PCs were obtained with 67% total variation for the highperformance group (HPG) region, three PCs with 72% and 64% total variances were obtained for the moderate-performance group (MPG) and low-performance group (LPG) regions, respectively. The general performance sources for the three groups are from cardiovascular and ego orientation sources. The differences between groups are from flexibility for LPG, task orientation, muscle strength and endurance for MPG and for HPG is flexibility, strength and task orientation. Conclusion: Multivariate methods reveal meaningful information on the relative performance variability of a large and complex athlete’s performance quality data and can be used to determine the significant source and predict potential athletes.

Key words: Cluster analysis, Discriminant analysis, Goal orientation, Principal component analysis, Physical fitness, Relative performance.