A Discriminant Model For Skill Oriented Prediction of Female Cricketers Depending Upon Selected Performance Parameters

Q2 Social Sciences
Sapna Mandoli, D. Sharma, H. Joshi
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引用次数: 1

Abstract

Research Purpose. The study aimed to develop a discriminant model for cricketers on the basis of physiological & anthropometric variables. Material and Methods. The study included sixty female seniors BCCI board players representing five different states with mean age 23.4 ± 2.03, mean height 152.1 ± 3.44, and mean weight 52.4 ± 4.21. A multivariate technique was used to predict the cricket performance by classifying the players into batsmen and pace bowlers on the basis of selected physiological & anthropometrical variables. Results. All the assumptions were positively full-filled (Shapiro-Wilk test p > 0.05 and F = 8.121, p = 0.264 for Box’sM test) for applying discriminant analysis to develop the model. A total of eleven performance variables were initially selected for the study and after applying the stepwise statistical technique of discriminant analysis, the model selected certain variables, namely Muscle Mass (1.311), Fat (-0.182) & Shoulder Diameter (0.292) and showed its effectiveness as the Eigenvalue for the fit model was 0.848. Conclusion. A discriminant function F1 = -29.531 + (1.311 × Muscle Mass) + (-0.182 × Fat) + (0.292 × Shoulder Diameter) was developed. The percentage of total variation explained by the model was 71.9%. A total of 93.2% of the observations were correctly classified using the proposed discriminant model.
基于选择性能参数的女性板球运动员技能导向预测判别模型
研究的目的。本研究旨在建立一个基于生理和人体测量变量的板球运动员判别模型。材料和方法。研究对象为60名来自5个州的老年女子棋手,平均年龄23.4±2.03岁,平均身高152.1±3.44岁,平均体重52.4±4.21岁。在选定的生理和人体测量变量的基础上,采用多元技术将球员分为击球手和投球手来预测板球的表现。结果。所有假设均被正填充(Shapiro-Wilk检验p < 0.05, Box 'sM检验F = 8.121, p = 0.264),适用判别分析建立模型。初步选取了11个性能变量进行研究,运用判别分析的逐步统计技术,模型选取了肌肉质量(1.311)、脂肪(-0.182)、肩径(0.292)等变量,拟合模型的特征值为0.848,显示了模型的有效性。结论。建立了判别函数F1 = -29.531 + (1.311 ×肌肉质量)+ (-0.182 ×脂肪)+ (0.292 ×肩径)。该模型解释的总变异百分比为71.9%。使用所提出的判别模型,共有93.2%的观测值被正确分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Teoria ta Metodika Fizicnogo Vihovanna
Teoria ta Metodika Fizicnogo Vihovanna Health Professions-Physical Therapy, Sports Therapy and Rehabilitation
CiteScore
2.20
自引率
0.00%
发文量
63
审稿时长
15 weeks
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