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The Factors Affecting Acceptance of E-Learning: A Machine Learning Algorithm Approach

机译:影响电子学习接受的因素:一种机器学习算法方法

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The Covid-19 epidemic is affecting all areas of life, including the training activities of universities around the world. Therefore, the online learning method is an effective method in the present time and is used by many universities. However, not all training institutions have sufficient conditions, resources, and experience to carry out online learning, especially in under-resourced developing countries. Therefore, the construction of traditional courses (face to face), e-learning, or blended learning in limited conditions that still meet the needs of students is a problem faced by many universities today. To solve this problem, we propose a method of evaluating the influence of these factors on the e-learning system. From there, it is a matter of clarifying the importance and prioritizing construction investment for each factor based on the K-means clustering algorithm, using the data of students who have been participating in the system. At the same time, we propose a model to support students to choose one of the learning methods, such as traditional, e-learning or blended learning, which is suitable for their skills and abilities. The data classification method with the algorithms multilayer perceptron (MP), random forest (RF), K-nearest neighbor (KNN), support vector machine (SVM) and na?ve bayes (NB) is applied to find the model fit. The experiment was conducted on 679 data samples collected from 303 students studying at the Academy of Journalism and Communication (AJC), Vietnam. With our proposed method, the results are obtained from experimentation for the different effects of infrastructure, teachers, and courses, also as features of these factors. At the same time, the accuracy of the prediction results which help students to choose an appropriate learning method is up to 81.52%.
机译:Covid-19流行病影响了所有生命领域,包括世界各地大学的培训活动。因此,在线学习方法是本时间的有效方法,并由许多大学使用。但是,并非所有培训机构都有足够的条件,资源和经验,以便在线学习,特别是在资源不足的发展中国家。因此,在有限的条件下,建设传统课程(面对面),电子学习或混合学习,仍然满足学生的需求是许多大学今天面临的问题。为了解决这个问题,我们提出了一种评估这些因素对电子学习系统的影响的方法。从那里,利用一直参与系统的学生数据,澄清基于K-means聚类算法的每个因素的重要性和优先顺序施工投资。与此同时,我们提出了一种模型来支持学生选择其中一种学习方法,例如传统,电子学习或混合学习,这适合他们的技能和能力。应用了算法多层Perceptron(MP),随机森林(RF),K最近邻(KNN),支持向量机(SVM)和NAΔVES(NB)的数据分类方法以找到模型配合。在越南新闻和沟通学院学习的303名学生收集的679个数据样本上进行了实验。通过我们提出的方法,结果是从基础设施,教师和课程的不同效果的实验获得的,也是这些因素的特征。同时,预测结果的准确性,帮助学生选择适当的学习方法高达81.52%。

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