This study aims to cluster track and field athletes based on their average seasonal performance. Athletes’ performance measurements are treated as random perturbations of an underlying individual step function with season-specific random intercepts. A hierarchical Dirichlet process is used as a nonparametric prior to in- duce clustering of the observations across seasons and athletes. By linking clusters across seasons, similarities and differences in performance are identified. Using a real-world longitudinal shot put data set, the method is illustrated.
Clustering Athlete Performances in Track and Field Sports / Argiento, Raffaele; Colombi, Alessandro; Modotti, Lorenzo; Montagna, Silvia. - (2023), pp. 23-28. (Intervento presentato al convegno IES 2023 - Statistical Methods for Evaluation and Quality: Techniques, Technologies and Trends (T3) tenutosi a University ‘G. d’Annunzio’ of Chieti-Pescara nel 30 Agosto - 1 Settembre 2023) [10.60984/978-88-94593-36-5-IES2023].
Clustering Athlete Performances in Track and Field Sports
Silvia Montagna
2023
Abstract
This study aims to cluster track and field athletes based on their average seasonal performance. Athletes’ performance measurements are treated as random perturbations of an underlying individual step function with season-specific random intercepts. A hierarchical Dirichlet process is used as a nonparametric prior to in- duce clustering of the observations across seasons and athletes. By linking clusters across seasons, similarities and differences in performance are identified. Using a real-world longitudinal shot put data set, the method is illustrated.File | Dimensione | Formato | |
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Descrizione: Clustering athletes performances in track and field sports
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