Comparações estatísticas e desenvolvimento de rankings de desempenho de jogadores de basquete

Autores

DOI:

https://doi.org/10.47197/retos.v55.103749

Palavras-chave:

rendimiento, baloncesto, estadística avanzada, error de estimación, rankings

Resumo

Esta pesquisa propôs um método para realizar rankings de jogadores de basquete com base em métricas estatísticas normalizadas do box-score. Ao considerar o erro de cada estimativa, tomando o número de jogos da época regular como uma população finita, este método é muito mais robusto e rigoroso do que simples comparações de valores médios específicos. Através da análise de cada jogo da temporada regular da NBA 2020/21, foram registrados os 72 jogos de cada uma das 30 equipes da competição, obtendo-se 22.989 recordes diferentes, que por sua vez foram vinculados a dezenas de indicadores de desempenho na partida. . Os resultados mostram que, de fato, o método baseado em estatísticas inferenciais e no desenvolvimento de rankings utilizando métricas normalizadas oferece vantagens para fazer uma comparação muito mais rigorosa do desempenho dos jogadores.

Palavras-chave: desempenho, basquete, estatísticas avançadas, erro de estimativa, rankings

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Publicado

2024-03-27

Como Citar

Martínez García, J. A. (2024). Comparações estatísticas e desenvolvimento de rankings de desempenho de jogadores de basquete. Retos, 55, 170–176. https://doi.org/10.47197/retos.v55.103749

Edição

Secção

Artigos de caráter científico: trabalhos de pesquisas básicas e/ou aplicadas.