基于多类LDA分类器和CNN特征提取的学生成绩分析

S. RasheedMansoorAli, S. Perumal
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引用次数: 1

摘要

在现代社会,教育对于培养个人高尚的道德价值观和卓越品质至关重要。但新冠肺炎疫情的传播广泛影响了学生的教育,大多数学生通过在线学习平台继续接受教育。在这次大流行期间,全球学生的学习成绩一直低迷。利用多类线性判别分析(LDA)和卷积神经网络(CNN)模型来预测学生的学习速度和行为,解决了这个问题。本研究旨在将学生的表现分为低、中、高三个等级,以协助导师预测低等级学生。学生数据日志是从Kaggle学生表现分析数据集中收集的,并经过预处理以去除噪声和非冗余数据。通过分析预处理数据,CNN提取基于学生兴趣和主观模式序列的特征。然后用最小冗余最大相关性(mRMR)方法对提取的特征进行过滤。mRMR选择最好的特征,稀释最小的特征,分别处理每个特征。通过随机梯度下降(SGD)测量特征权重,并通过CNN更新以更好地学习特征。在最后阶段,多类LDA分类器将结果评估为已分类的类。根据预测,导师可以很容易地找到那些需要提高学习成绩的高偏好的低级别学生。实验表明,该模型的准确率(96.5%)、精密度(094)、查全率(092)、f分数(095)均高于现有方法,且计算时间更短。
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Multi-class LDA classifier and CNN feature extraction for student performance analysis during Covid-19 pandemic
In our modern world, education is essential for developing high moral values and excellence in individuals. But the spread of Covid-19 widely affects the student’s education, the majority of students have continued their education via online learning platforms. The academic performance of students has been sluggish across the globe during this pandemic. This problem is solved using a multiclass Linear Discriminant Analysis (LDA) and Convolutional Neural Network (CNN) model which predicts the student learning rate and behavior. This research aims to classify the students’ performance into low, medium, and high grades in order to assist tutors in predicting the low-ranking students. The student data log is collected from the Kaggle student performance analysis dataset and pre-processed to remove the noise and non-redundance data. By analyzing the pre-processed data, the CNN extracts feature that are based on student interest and subjective pattern sequences. Then extracted features are filtered by the Minimum Redundancy Maximum Relevance(mRMR) method. mRMR selects the best features and dilutes the least one which handles each feature separately. The feature weights are measured by Stochastic Gradient Descent (SGD) and updated for better feature learning by CNN. At the last stage, the Multi-class LDA classifier evaluates the result into categorized classes. Based on the prediction, the tutors can easily find the low ranks of students who need a high preference for improving their academic performance. Experiments showed that the proposed model achieves greater accuracy (96.5%), precision (094), recall (092), F-score (095), and requires less computation time than existing methods.
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