TCDformer-based Momentum Transfer Model for Long-term Sports Prediction

Hui Liu, Jiacheng Gu, Xiyuan Huang, Junjie Shi, Tongtong Feng, Ning He
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Abstract

Accurate sports prediction is a crucial skill for professional coaches, which can assist in developing effective training strategies and scientific competition tactics. Traditional methods often use complex mathematical statistical techniques to boost predictability, but this often is limited by dataset scale and has difficulty handling long-term predictions with variable distributions, notably underperforming when predicting point-set-game multi-level matches. To deal with this challenge, this paper proposes TM2, a TCDformer-based Momentum Transfer Model for long-term sports prediction, which encompasses a momentum encoding module and a prediction module based on momentum transfer. TM2 initially encodes momentum in large-scale unstructured time series using the local linear scaling approximation (LLSA) module. Then it decomposes the reconstructed time series with momentum transfer into trend and seasonal components. The final prediction results are derived from the additive combination of a multilayer perceptron (MLP) for predicting trend components and wavelet attention mechanisms for seasonal components. Comprehensive experimental results show that on the 2023 Wimbledon men's tournament datasets, TM2 significantly surpasses existing sports prediction models in terms of performance, reducing MSE by 61.64% and MAE by 63.64%.
基于 TCDformer 的长期运动预测动量传递模型
准确的体育预测是专业教练的一项重要技能,有助于制定有效的训练策略和科学的比赛战术。传统方法通常使用复杂的数学统计技术来提高预测能力,但这种方法往往受到数据集规模的限制,难以处理具有变异分布的长期预测,尤其是在预测点数-集数-多级比赛时表现不佳。为了应对这一挑战,本文提出了基于 TCDformer 的动量传递模型 TM2,用于长期体育预测,该模型包括动量编码模块和基于动量传递的预测模块。TM2 首先使用局部线性缩放近似(LLSA)模块对大规模非结构化时间序列中的动量进行编码。然后,它将带有动量传递的重建时间序列分解为趋势和季节成分。最终的预测结果来自于预测趋势成分的多层感知器(MLP)和预测季节成分的小波注意机制的相加组合。综合实验结果表明,在 2023 年温布尔登男子锦标赛数据集上,TM2 的性能大大超过了现有的体育预测模型,MSE 降低了 61.64%,MAE 降低了 63.64%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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