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  5. Constructing an artificial intelligence strategy algorithm for the identification of talented rowing athletes
 
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Constructing an artificial intelligence strategy algorithm for the identification of talented rowing athletes

Resource
SOFT COMPUTING
Date Issued
2021-10-30T05:05:40Z
Date
2021-07
DOI
10.1007/s00500-021-06050-3
URI
https://ir.ntus.edu.tw/handle/987654321/65805
Abstract
Taiwan's rowing athletes have performed well during the Asian Games, but their performance in the Olympics has not been adequate. In addition to their hard work and rigorous and effective training, the skill of the athletes is a key factor for achieving good results. In this study, an artificial intelligence (AI) evaluation algorithm is developed to help rowing athletes excel in the sporting events. The AI algorithm uses the analytic hierarchy process to invite experts and scholars in the rowing field to answer a questionnaire. The technique for order performance by similarity to ideal solution is then applied to calculate the ranking of selection indicators, to construct an evaluation model for rowing athletes. The key findings indicate that physicality (or the body structure) is the highest priority among the four main aspects of talent identification; this is followed, in descending order, by specialism, reaction, and psychological elements. The proposed AI strategy was established as the most beneficial decision model and can be used to identify talented rowers in the future.
Subjects
Artificial intelligence
AHP
TOPSIS
Rowing
Publisher
New York: SPRINGER
Type
article
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Checksum

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