基于神经网络的NBA全明星阵容预测

B. Ji, Ji Li
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引用次数: 2

摘要

在本文中,我们研究了使用神经网络作为预测全明星赛首发和替补阵容的工具,从所有候选人中。收集了2008-09赛季至2012-13赛季的统计数据,并利用这些数据训练了前馈、径向基和广义回归神经网络等多种神经网络。采用AdaBoost集成学习算法检测神经网络的融合情况。此外,我们还探索了神经网络输入的哪些特征集对预测最有用。为提高预报精度,提出了一种较好的预报方案。利用AdaBoost和本文提出的方案,对起跑线的预测准确率可达91.7%,后备线的预测准确率可达73.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NBA All-Star Lineup Prediction Based on Neural Networks
In this paper we examined the use of Neural Networks as a tool to predict the starting and reserve line up of All-Star game, in the National Basketball Association, from all the candidates. Statistics of data from season 2008-09 to 2012-13 were collected and used to train a verity of Neural Networks such as feed-forward, radial basis and generalized regression Neural Networks. Fusion of the neural networks was also examined by using AdaBoost ensemble learning algorithm. Further, we have explored which features set input to the neural network was the most useful ones for prediction. And an excellent prediction scheme was proposed to improve the forecast accuracy. By using AdaBoost and the proposed scheme, the accuracy of our prediction of the starting line up is up to 91.7%, the reserve line up 73.3%.
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