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典型文献
Sports match prediction model for training and exercise using attention-based LSTM network
文献摘要:
Sports matches are very popular all over the world.The prediction of a sports match is helpful to grasp the team's state in time and adjust the strategy in the process of the match.It's a challenging effort to predict a sports match.Therefore,a method is proposed to predict the result of the next match by using teams'historical match data.We combined the Long Short-Term Memory(LSTM)model with the attention mechanism and put forward an AS-LSTM model for predicting match results.Furthermore,to ensure the timeliness of the prediction,we add the time sliding window to make the prediction have better timeliness.Taking the football match as an example,we carried out a case study and proposed the feasibility of this method.
文献关键词:
作者姓名:
Qiyun Zhang;Xuyun Zhang;Hongsheng Hu;Caizhong Li;Yinping Lin;Rui Ma
作者机构:
Shandong Provincial University Laboratory for Protected Horticulture,Weifang University of Science and Technology,Shouguang,262700,China;Department of Computing Macquarie University,Sydney,Australia;Faculty of Engineering,University of Auckland,New Zealand;No.1 Middle School of Pidu Chengdu,Chengdu,611730,China;General Education Department,Shandong First Medical University(Shandong Academy of Medical Sciences),Taian,China
引用格式:
[1]Qiyun Zhang;Xuyun Zhang;Hongsheng Hu;Caizhong Li;Yinping Lin;Rui Ma-.Sports match prediction model for training and exercise using attention-based LSTM network)[J].数字通信与网络(英文),2022(04):508-515
A类:
B类:
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AB值:
0.553434
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