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首页> 外文期刊>Journal of Biomechanics >Comparison of discrete-point vs. dimensionality-reduction techniques for describing performance-related aspects of maximal vertical jumping
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Comparison of discrete-point vs. dimensionality-reduction techniques for describing performance-related aspects of maximal vertical jumping

机译:离散点与降维技术的比较,用于描述最大垂直跳动的性能相关方面

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摘要

The aim of this study was to assess and compare the ability of discrete point analysis (DPA), functional principal component analysis (fPCA) and analysis of characterizing phases (ACP) to describe a dependent variable (jump height) using vertical ground reaction force curves captured during the propulsion phase of a countermovement jump. FPCA and ACP are continuous data analysis techniques that reduce the dimensionality of a data set by identifying phases of variation (key phases), which are used to generate subject scores that describe a subject[U+05F3]s behavior. A stepwise multiple regression analysis was used to measure the ability to describe jump height of each data analysis technique. Findings indicated that the order of effectiveness (high to low) across the examined techniques was: ACP (99%), fPCA (78%) and DPA (21%). DPA was outperformed by fPCA and ACP because it can inadvertently compare unrelated features, does not analyze the whole data set and cannot examine important features that occur solely as a phase. ACP outperformed fPCA because it utilizes information within the combined magnitude-time domain, and identifies and examines key phases separately without the deleterious interaction of other key phases.
机译:这项研究的目的是评估和比较离散点分析(DPA),功能主成分分析(fPCA)和特征相分析(ACP)的能力,以使用垂直地面反作用力曲线来描述因变量(跳跃高度)在反向运动跳跃的推进阶段捕获。 FPCA和ACP是连续数据分析技术,通过识别变化阶段(关键阶段)来减少数据集的维数,这些阶段用于生成描述受试者[U + 05F3]行为的受试者得分。使用逐步多元回归分析来衡量描述每种数据分析技术的跳跃高度的能力。研究结果表明,所检查技术的有效性顺序(从高到低)为:ACP(99%),fPCA(78%)和DPA(21%)。 fPAA和ACP优于DPA,因为DPA可能会无意间比较不相关的功能,不会分析整个数据集,也无法检查仅作为一个阶段出现的重要功能。 ACP优于fPCA,因为它利用了组合时域内的信息,并分别识别和检查关键相位,而没有其他关键相位的有害相互作用。

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