CFP-预测NFL四分卫幻想得分的新方法

Dienul Paramarta, Juan Li
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引用次数: 0

摘要

主观专家预测传统上用于预测梦幻足球的分数,而机器预测的应用是有限的。基于记忆的协同过滤已广泛应用于推荐系统领域,用于预测评分和推荐商品。本研究探索并实现了基于用户和基于项目的协同过滤来预测NFL四分卫的每周统计数据和幻想积分。来自多个季节的预测与专家预测进行了比较。在每周的统计数据和总幻想点上,实现并不比专家做出更好的预测。然而,当作为附加特征使用时,来自实现的预测提高了其他回归模型的准确性。
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CFP- A New Approach to Predicting Fantasy Points of NFL Quarterbacks
Subjective expert projections have been traditionally used to predict points in fantasy football, while machine prediction applications are limited. Memory-based collaborative filtering has been widely used in the recommender system domain to predict ratings and recommend items. In this study, user-based and item-based collaborative filtering were explored and implemented to predict the weekly statistics and fantasy points of NFL quarterbacks. The predictions from multiple seasons were compared against expert projections. On both weekly statistics and total fantasy points, the implementations could not make significantly better predictions than experts. However, the prediction from the implementation improved the accuracy of other regression models when used as additional features.
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25th IEEE International Conference on Computational Science and Engineering, CSE 2022, Wuhan, China, December 9-11, 2022 UAV-empowered Vehicular Networking Scheme for Federated Learning in Delay Tolerant Environments A novel sentiment classification based on “word-phrase” attention mechanism CFP- A New Approach to Predicting Fantasy Points of NFL Quarterbacks A K-nearest neighbor classifier based on homomorphic encryption scheme
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