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首页> 外文期刊>Journal of Quantitative Analysis in Sports >Predicting NBA Games Using Neural Networks
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Predicting NBA Games Using Neural Networks

机译:使用神经网络预测NBA比赛

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In this paper we examine the use of neural networks as a tool for predicting the success of basketball teams in the National Basketball Association (NBA). Statistics for 620 NBA games were collected and used to train a variety of neural networks such as feed-forward, radial basis, probabilistic and generalized regression neural networks. Fusion of the neural networks is also examined using Bayes belief networks and probabilistic neural network fusion. Further, we investigate which subset of features input to the neural nets are the most salient features for prediction. We explored subsets obtained from signal-to-noise ratios and expert opinions to identify a subset of features input to the neural nets. Results obtained from these networks were compared to predictions made by numerous experts in the field of basketball. The best networks were able to correctly predict the winning team 74.33 percent of the time (on average) as compared to the experts who were correct 68.67 percent of the time.
机译:在本文中,我们研究了使用神经网络作为预测美国国家篮球协会(NBA)篮球队成功的工具。收集了620场NBA比赛的统计数据,并将其用于训练各种神经网络,例如前馈,径向基础,概率和广义回归神经网络。还使用贝叶斯信念网络和概率神经网络融合来检查神经网络的融合。此外,我们调查了输入到神经网络的哪些特征子集是最重要的预测特征。我们探索了从信噪比和专家意见获得的子集,以识别输入到神经网络的特征子集。从这些网络获得的结果与篮球领域众多专家的预测进行了比较。最好的网络能够正确地预测获胜团队的时间(平均)为74.33%,而专家的正确率为68.67%。

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