使用多元线性回归法进行期末评估(FSA)模型预测的机器学习

Fitria Rachmawati, Jejen Jaenudin, Novita Br Ginting, Panji Laksono
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引用次数: 0

摘要

科罗娜病毒(COVID-19)是导致国民议会垮台的原因。首先是期末评估(FSA),它是学生毕业的一个组成部分。上述评估过程对教师来说是一个至关重要的考虑因素,因为它使用了多个复杂的调查和评分部分。为了帮助教师为学生的学习提供合适的结果,采用了一种预测模型。使用的方法称为多元线性回归。这种多元线性回归算法的准确率约为 92%。使用该方法得出的分析结果可作为了解学生指数的指南。该指数是根据最低学分计数 (MCC) 得出的评级。因此,本研究的目标是确定学生对 FSA 预测值的理解,这将通过 MCC 权重的结果以 "等级" 的形式范围考虑在内。此外,本研究还旨在确定使用多元线性回归算法获得的模型结果在预测学生 FSA 方面的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for the Model Prediction of Final Semester Assessment (FSA) using the Multiple Linear Regression Method
Corona virus (COVID-19) is the reason behind the collapse of the National Assembly. The first is the Final Semester Assessment (FSA) , which is a component of the student's graduation. The aforementioned evaluation process is a crucial consideration for the teacher since it uses several intricate surveys and mark components. A prediction model is employed to assist teachers in providing suitable results for student learning. The method that is used is called the multiple linear regression. This multiple linear regression algorithm yields an accuracy level of approximately 92%. The analysis results using the method are used as a guide to understanding student’s index. This index is a rating that appears based on the Minimum Credit Count (MCC). Therefore, the goal of this study is to determine students' understanding of the FSA prediction value, which will be taken into consideration through the results of the MCC weights in the form of a range in the form of "Grade." Additionally, the research aims to determine the accuracy of the results from the model obtained using multiple linear regression algorithms in predicting students' FSA.
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