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A Practical Model for Educators to Predict Student Performance in K-12 Education using Machine Learning

机译:使用机器学习预测K-12教育中的学生表演的实用模型

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Predicting classifiers can be used to analyze data in K-12 education. Creating a classification model to accurately identify factors affecting student performance can be challenging. Much research has been conducted to predict student performance in higher education, but there is limited research in using data science to predict student performance in K-12 education. Predictive models are developed and examined in this review to analyze a K-12 education dataset. Three classifiers are used to develop these predictive models, including linear regression, decision tree, and Naive Bayes techniques. The Naive Bayes techniques showed the highest accuracy when predicting SAT Math scores for high school students. The results from this review of current research and the models presented in this paper can be used by stakeholders of K-12 education to make predictions of student performance and be able to implement intervention strategies for students in a timely manner.
机译:预测分类器可用于分析K-12教育中的数据。创建分类模型以准确识别影响学生表现的因素可能是具有挑战性的。已经进行了许多研究以预测高等教育的学生表现,但研究了利用数据科学的研究有限,以预测K-12教育的学生表现。在本次审查中开发并检查了预测模型,以分析K-12教育数据集。三个分类器用于开发这些预测模型,包括线性回归,决策树和天真贝叶斯技术。天真的贝叶斯技术在预测高中学生的SAT数学分数时表现出最高的准确性。本文提出了对当前研究的综述和本文提出的模型的结果可以由K-12教育的利益相关者使用,以便能够及时为学生实施干预策略。

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