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首页> 外文期刊>Research quarterly for exercise and sport >Moving Beyond Univariate Post-Hoc Testing in Exercise Science: A Primer on Descriptive Discriminate Analysis
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Moving Beyond Univariate Post-Hoc Testing in Exercise Science: A Primer on Descriptive Discriminate Analysis

机译:在运动科学中超越单性交生后测试:描述性歧视分析的底漆

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摘要

There has been a recent call to improve data reporting in kinesiology journals, including the appropriate use of univariate and multivariate analysis techniques. For example, a multivariate analysis of variance (MANOVA) with univariate post hocs and a Bonferroni correction is frequently used to investigate group differences on multiple dependent variables. However, this univariate approach decreases power, increases the risk for Type 1 error, and contradicts the rationale for conducting multivariate tests in the first place. Purpose: The purpose of this study was to provide a user-friendly primer on conducting descriptive discriminant analysis (DDA), which is a post-hoc strategy to MANOVA that takes into account the complex relationships among multiple dependent variables. Method: A real-world example using the Statistical Package for the Social Sciences syntax and data from 1,095 middle school students on their body composition and body image are provided to explain and interpret the results from DDA. Results: While univariate post hocs increased the risk for Type 1 error to 76%, the DDA identified which dependent variables contributed to group differences and which groups were different from each other. For example, students in the very lean and Healthy Fitness Zone categories for body mass index experienced less pressure to lose weight, more satisfaction with their body, and higher physical self-concept than the Needs Improvement Zone groups. However, perceived pressure to gain weight did not contribute to group differences because it was a suppressor variable. Conclusion: Researchers are encouraged to use DDA when investigating group differences on multiple correlated dependent variables to determine which variables contributed to group differences.
机译:最近有一个改善在运动学期刊中的数据报告,包括适当使用单变量和多变量分析技术。例如,具有单变量哨所和Bonferroni校正的多元差异(MANOVA)的分析经常用于调查多个依赖变量的组差异。然而,这种单变量方法降低了功率,提高了1型错误的风险,并将首先进行多变量测试的基本原理相矛盾。目的:本研究的目的是提供一种用于进行描述性判别分析(DDA)的用户友好的底漆,这是对MANOVA的后HOC策略,以考虑多个依赖变量之间的复杂关系。方法:使用统计包的真实榜对于社会科学的统计包和来自1,095名中学生的身体成分和身体形象的数据,以解释和解释DDA的结果。结果:虽然单变量的哨所Hocs增加1次误差的风险为76%,但DDA识别哪些依赖变量导致组差异,哪些群体彼此不同。例如,体重指数非常瘦健康健身区类别的学生越来越减轻了减肥,对身体的更高的满意度,更高的物理自我概念比需要改进区域组。然而,对体重的感知压力没有促成对差异的贡献,因为它是抑制变量。结论:鼓励研究人员在调查多个相关依赖变量上的群体差异时使用DDA来确定哪些变量有助于组差异。

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