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Research on Application of Online Teaching Performance Prediction Based on Data Mining Algorithm

机译:基于数据挖掘算法的在线教学性能预测中的应用研究

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The application of data mining in teaching has entered the stage of development. During the epidemic, colleges and universities have accumulated a large amount of online teaching statistical data. These data can be used to establish a classification model for predicting student performance. In this paper, the Naive Bayes algorithm is improved to solve the problem of underflow when the data feature values are too large. The student performance prediction classification model is constructed, and the classification efficiency and accuracy are improved to a certain extent. The improved model is used to predict and warn the performance in the mid-term stage to prevent The phenomenon of a large proportion of missing subjects, thereby ensuring the quality of students’ learning throughout the semester.
机译:数据挖掘在教学中的应用进入了发展阶段。在流行病中,大学和大学累积了大量的在线教学统计数据。这些数据可用于建立用于预测学生绩效的分类模型。在本文中,改进了朴素贝叶斯算法,以解决数据特征值太大时溢出问题。构建学生性能预测分类模型,并且在一定程度上提高了分类效率和准确度。改进的模型用于预测和警告中期阶段的性能,以防止大部分缺失对象的现象,从而确保学生在整个学期的学习的质量。

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