Holsworth Research Initiative, La Trobe Rural Health School, La Trobe University, Bendigo, VIC, Australia.
La Trobe University Bendigo Pioneers, Bendigo, Australia.
PLoS One. 2024 Feb 29;19(2):e0298743. doi: 10.1371/journal.pone.0298743. eCollection 2024.
Using logistic regression and neural networks, the aim of this study was to compare model performance when predicting player draft outcome during the 2021 AFL National Draft. Physical testing, in-game movement and technical involvements were collected from 708 elite-junior Australian Rules football players during consecutive seasons. Predictive models were generated using data from 465 players (2017 to 2020). Data from 243 players were then used to prospectively predict the 2021 AFL National Draft. Logistic regression and neural network models were compared for specificity, sensitivity and accuracy using relative cut-off thresholds from 5% to 50%. Using factored and unfactored data, and a range of relative cut-off thresholds, neural networks accounted for 73% of the 40 best performing models across positional groups and data configurations. Neural networks correctly classified more drafted players than logistic regression in 88% of cases at draft rate (15%) and convergence threshold (35%). Using individual variables across thresholds, neural networks (specificity = 79 ± 13%, sensitivity = 61 ± 24%, accuracy = 76 ± 8%) were consistently superior to logistic regression (specificity = 73 ± 15%, sensitivity = 29 ± 14%, accuracy = 66 ± 11%). Where the goal is to identify talented players with draft potential, model sensitivity is paramount, and neural networks were superior to logistic regression.
本研究运用逻辑回归和神经网络,旨在比较在预测 2021 年澳式足球联盟(AFL)全国选秀中球员选秀结果时,两种模型的表现。连续几个赛季,从 708 名精英青年澳式足球运动员中收集了体能测试、比赛中的运动表现和技术参与数据。使用来自 465 名球员(2017 年至 2020 年)的数据生成预测模型。然后,使用 243 名球员的数据来前瞻性地预测 2021 年 AFL 全国选秀。使用 5%至 50%的相对截止阈值,比较逻辑回归和神经网络模型的特异性、敏感性和准确性。使用因子化和非因子化数据以及一系列相对截止阈值,神经网络在位置组和数据配置的 40 个表现最佳的模型中,占 73%。在选秀率(15%)和收敛阈值(35%)下,神经网络在 88%的情况下正确分类的选秀球员多于逻辑回归,在所有情况下都正确分类了更多的首轮秀。在整个阈值下使用个体变量,神经网络(特异性=79±13%,敏感性=61±24%,准确性=76±8%)比逻辑回归(特异性=73±15%,敏感性=29±14%,准确性=66±11%)表现更为优异。如果目标是识别具有选秀潜力的有天赋的球员,那么模型敏感性至关重要,而神经网络优于逻辑回归。