Forecasting: Analyze Online and Offline Learning Mode with Machine Learning Algorithms

Farida Ardiani, Rodhiyah Mardhiyyah, Izaaz Azaam Syahalam, Nasmah Nur Amiroh
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引用次数: 0

Abstract

Since the pandemic occurred, in March 2020, learning activities have changed from an offline to an online learning mode. This is the first time, such a huge change has occurred, simultaneously in the entire hemisphere. This learning mode opens a new discourse regarding the impact on the learning mode and educational evaluation results. The author aims to compare the results of the educational evaluation of the online learning mode during the pandemic with offline learning mode, so that differences will be known, as well as can be used to predict student learning outcomes, in order to obtain an overview of the effectiveness and efficiency of a learning mode. Data collection is carried out as an initial step in data processing, based on the final results of student learning, in certain courses taken every semester starting in 2017-2022. The data consists of 6 indicators, namely CI1-CI4, grades, and letter grades. The result of this study is the prediction of a more effective learning mode used, as decision support carried out by the forecasting method, comparing the Naïve Bayes and Decision Tree algorithm in getting the best accuracy value, by analyzing the learning mode offline to online.
预测:用机器学习算法分析在线和离线学习模式
自2020年3月疫情发生以来,学习活动已从线下学习模式转变为在线学习模式。这是第一次在整个半球同时发生如此巨大的变化。这种学习模式开启了一个关于对学习模式和教育评估结果的影响的新篇章。作者旨在比较疫情期间在线学习模式和线下学习模式的教育评估结果,以便了解差异,并可用于预测学生的学习结果,从而全面了解学习模式的有效性和效率。数据收集是根据学生学习的最终结果,在2017-2022年开始的每学期的某些课程中进行数据处理的第一步。数据由6个指标组成,即CI1-CI4、等级和字母等级。本研究的结果是使用了一种更有效的预测学习模式,作为决策支持进行预测的方法,比较了朴素贝叶斯和决策树算法在获得最佳准确度值方面的优势,通过分析离线到在线的学习模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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审稿时长
8 weeks
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