Basic direction and realization path of PE teaching innovation in PSS based on deep learning model

Huiming Ke, Yang Wang
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Abstract

At present, the traditional model of PE in PSS (PSS)has seriously affected the quality of PE teaching in PSS and the perception of PE among primary and secondary school students. Because of the urgent need for innovation in PE in PSS, this study proposes the LSTM model to achieve an accurate prediction of the innovation direction of PE in PSS. Based on the LSTM model, the user behavior is classified by extracting the important features of the innovation direction. Expression to achieve accurate prediction of the future development direction of PE. Using the data confusion matrix to estimate the prediction accuracy of the LSTM model, the four evaluation indicators of Accuracy, Precision, F1, and AUC are 0.0532~0.2323 higher than the baseline model. The prediction results of PE teaching innovation in PSS from three aspects of teaching thought, teaching content, teaching objectives and essence are output, which has obvious guiding significance for the overall optimization of PE classrooms in PSS. This result shows that the LSTM prediction model has important practical value.
基于深度学习模式的PSS体育教学创新的基本方向与实现路径
目前,传统的PSS体育教学模式(PSS)严重影响了PSS体育教学质量和中小学生对体育的认知。针对PSS中PE创新的迫切需求,本研究提出LSTM模型来实现对PSS中PE创新方向的准确预测。基于LSTM模型,通过提取创新方向的重要特征对用户行为进行分类。表达实现对PE未来发展方向的准确预测。利用数据混淆矩阵对LSTM模型的预测精度进行估计,准确度、精度、F1、AUC四个评价指标比基线模型高0.0532~0.2323。输出了从教学思想、教学内容、教学目标和本质三个方面对PSS体育教学创新的预测结果,对PSS体育课堂的整体优化具有明显的指导意义。结果表明,LSTM预测模型具有重要的实用价值。
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