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将分析技术从生态学转移到运动科学中。

Transferring an Analytical Technique from Ecology to the Sport Sciences.

机构信息

Discipline of Sport and Exercise Science, James Cook University, Townsville, QLD, Australia.

Institute of Sport, Exercise and Activity Living (ISEAL), Victoria University, Melbourne, VIC, Australia.

出版信息

Sports Med. 2018 Mar;48(3):725-732. doi: 10.1007/s40279-017-0775-2.

Abstract

BACKGROUND

Learning transfer is defined as an individual's capability to apply prior learnt perceptual, motor, or conceptual skills to a novel task or performance environment. In the sport sciences, learning transfers have been investigated from an athlete-specific perspective. However, sport scientists should also consider the benefits of cross-disciplinary learning to aid critical thinking and metacognitive skill gained through the interaction with similar quantitative scientific disciplines.

OBJECTIVE

Using team sports performance analysis as an example, this study aimed to demonstrate the utility of a common analytical technique in ecology in the sports sciences, namely, nonmetric multidimensional scaling.

METHODS

To achieve this aim, three novel research examples using this technique are presented, each of which enables the analysis and visualization of athlete (organism), team (aggregation of organisms), and competition (ecosystem) behaviors.

RESULTS

The first example reveals the technical behaviors of Australian Football League Brownlow medalists from the 2001 to 2016 seasons. The second example delineates dissimilarity in higher and lower ranked National Rugby League teams within the 2016 season. Lastly, the third example shows the evolution of game play in the basketball tournaments between the 2004 and 2016 Olympic Games.

CONCLUSIONS

In addition to the novel findings of each example, the collective results demonstrate that, by embracing cross-disciplinary learning and drawing upon an analytical technique common to ecology, novel solutions to pertinent research questions within sports performance analysis could be addressed in a practically meaningful way. Cross-disciplinary learning may subsequently assist sport scientists in the analysis and visualization of multivariate datasets.

摘要

背景

学习迁移被定义为个体将先前习得的感知、运动或概念技能应用于新任务或表现环境的能力。在运动科学领域,已经从运动员特定的角度研究了学习迁移。然而,运动科学家还应该考虑跨学科学习的好处,以通过与类似定量科学学科的互动来帮助批判性思维和元认知技能的提高。

目的

本文以团队运动表现分析为例,旨在展示生态学中一种常见分析技术(非度量多维尺度分析)在运动科学中的应用。

方法

为了实现这一目标,本文呈现了三个使用该技术的新研究案例,每个案例都能够分析和可视化运动员(生物体)、团队(生物体的集合)和比赛(生态系统)的行为。

结果

第一个示例揭示了 2001 年至 2016 年澳大利亚足球联赛布朗洛奖章获得者的技术行为。第二个示例描绘了 2016 赛季中排名较高和较低的国家橄榄球联盟球队之间的差异。最后,第三个示例展示了 2004 年至 2016 年奥运会篮球比赛中比赛的演变。

结论

除了每个示例的新发现外,集体结果表明,通过接受跨学科学习并利用生态学中常见的分析技术,可以以实际有意义的方式解决运动表现分析中相关研究问题的新解决方案。跨学科学习随后可能会帮助运动科学家分析和可视化多元数据集。

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