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Research on predicting students' learning effectiveness with deep learning mode

机译:深度学习模式预测学生学习效果的研究

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This paper builds a model using the multi-layer perceptron (MLP) of artificial intelligence “deep learning”. Use the relevant family background information provided by US high school students when enrolling in school, Such as gender, race, education level of parents, economic conditions of students, whether to participate in exam preparation courses and other factors. Used to predict the effectiveness of student learning. The number of students is 1,000. Select at random 95 percent of the student data as a training group, 5 percent of the students as a group to predict. After the MLP model through training and learning. Under the standard of 100 points. Predict student achievement and actual test scores. Verification using the mean absolute deviation (MAD) commonly used to evaluate prediction accuracy. After the statistics, the average difference score was found to be less than 10 points. The results of this study show that the MLP prediction model can help teachers to find out early students who need remedial teaching. To assist students in effective learning.
机译:本文使用人工智能“深度学习”的多层感知器(MLP)构建模型。在入学时使用美国高中生提供的相关家庭背景信息,例如性别,种族,父母的受教育程度,学生的经济状况,是否参加考试准备课程以及其他因素。用于预测学生学习的效果。学生人数为1,000。随机选择95%的学生数据作为训练组,选择5%的学生作为预测组。之后通过培训学习MLP模型。根据100分的标准。预测学生的成绩和实际考试成绩。使用通常用于评估预测准确性的平均绝对偏差(MAD)进行验证。统计后,发现平均差异得分小于10分。这项研究的结果表明,MLP预测模型可以帮助教师找出需要辅导教学的早期学生。协助学生有效学习。

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