人工智能与经典阅读的学习效果

Kyung-Ae Kyung-Ae
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摘要

本研究分析了经典阅读课满意度预测的机器学习和深度学习模型。以下是他们预测能力比较的主要发现。首先,传统回归模型的行列式系数较低。第二,决策树模型对经典阅读课满意度的预测效果优于传统回归模型。第三,在经典阅读课学习效果预测中,支持向量机模型具有较高的决定系数和较低的RMSE,具有较高的预测能力。第四,在经典阅读课的学习效果预测中,深度神经网络模型在适当的时代和批大小下也表现出较高的预测能力。因此,由于机器学习和深度学习模型可以更准确地预测经典阅读课程的满意度,我们需要采用机器学习和深度学习模型使用学习变量来预测经典阅读课程的满意度。
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Artificial Intelligence and Learning Effects of Reading Classics
This study analyzes the machine learning and deep learning models that were used to forecast the satisfaction effect of classics reading classes. The following were the main findings of the comparison of their predictive abilities. First, the traditional regression model is somewhat low in coefficient of determinant. Second, the decision tree models predicts the satisfaction effect of classics reading classes better than the traditional regression model. Third, when we predict the learning effects of classics reading lessons, the support vector machine models show the high predictive power with the high coefficients of determination and low RMSE. Fourth, when we predict the learning effects of classics reading lessons, the deep neural network models also show the higher predictive power with appropriate epochs and batch sizes. Thus, since the machine learning and deep learning models can predict the satisfaction of classics reading classes more accurately, we need to adopt the machine learning and deep learning models to predict the satisfaction of classics reading classes using the learning variables.
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