Shanghai Normal University TIANHUA College, Shanghai 201815, China.
Comput Intell Neurosci. 2022 Jul 18;2022:2572372. doi: 10.1155/2022/2572372. eCollection 2022.
This paper proposes a prediction model of piano collective class teaching and learning effect based on DL network in order to realise the precise prediction and evaluation of piano collective class instructional effect and promote the improvement of piano collective class instructional quality. The idea of an instructional assessment index is quantified in this paper using specific data as its input and educational impact as its output. In parallel, several training networks are established to correspond to the first-level evaluation indexes, and the input samples are normalised. Finally, MATLAB performs the empirical research. According to the findings, this method's prediction accuracy can reach 94.41 percent, which is about 10.22 percent higher than that of conventional methods. This prediction model is somewhat realistic and feasible. When used to predict and assess instructional quality, this method not only eliminates the subjectivity of experts in the evaluation process but also yields satisfactory evaluation outcomes and has a broad range of applications. According to the model's predictions and evaluation findings in this paper, appropriate teachers can better understand the drawbacks of the collective class model, focus on some important aspects of teaching activities, and then enhance instructional methods and effects.
本文提出了一种基于深度学习(DL)网络的钢琴集体课教学效果预测模型,旨在实现对钢琴集体课教学效果的精准预测和评估,促进钢琴集体课教学质量的提高。本文用具体数据作为输入、教育影响作为输出,将教学评估指标的理念量化。同时,建立了多个与一级评估指标相对应的训练网络,并对输入样本进行归一化处理。最后,利用 MATLAB 进行实证研究。研究结果表明,该方法的预测准确率可达 94.41%,比传统方法高出约 10.22%。该预测模型具有一定的现实性和可行性。将该方法应用于教学质量的预测和评估,不仅可以消除评价过程中专家的主观性,还能得到满意的评价结果,具有广泛的应用前景。根据本文模型的预测和评估结果,合适的教师可以更好地了解集体课模式的不足之处,关注教学活动的一些重要方面,从而改进教学方法和效果。