Classification of Students' Academic Performance Using Neural Network and C4.5 Model

Sulika Sulika, Ririen Kusumawati, Yunifa Miftachul Arif
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Abstract

ducation involves deliberately creating an environment and learning process to empower students to fully utilize their academic and non-academic potential. It encompasses fostering spiritual qualities, religious understanding, self-discipline, cognitive abilities, and skills necessary for personal, societal, national, and state development. Madrasah Aliyah, in particular, emphasizes preparing participants for higher studies in areas of their interest, thereby showcasing their academic prowess. The evaluation of educational models like Neural Networks is crucial for ensuring their effectiveness in problem-solving. This involves testing and assessing the performance of the Neural Network model to ensure its accuracy and reliability. Similarly, the C4.5 method, based on condition data mining, is utilized to measure classification performance by assessing accuracy, precision, and recall. Research findings indicate that the neural network algorithm is more adept at accurately classifying students' academic abilities compared to the C4.5 algorithm. With an accuracy of 92.6% for the neural network algorithm and 80.6% for the C4.5 algorithm, it is evident that the former is more precise in determining the classification of students' academic abilities. This highlights the suitability of the neural network approach for classifying academic abilities in Madrasah Aliyah. Furthermore, the insights gained from this classification process can be extrapolated to benefit other madrasas.
利用神经网络和 C4.5 模型对学生的学习成绩进行分类
教育包括有意识地创造一种环境和学习过程,使学生能够充分发挥其学术和非学术潜能。它包括培养个人、社会、民族和国家发展所需的精神品质、宗教理解、自律、认知能力和技能。尤其是 "阿利亚学校"(Madrasah Aliyah),强调为学员在其感兴趣的领域进行更高层次的学习做好准备,从而展示他们的学术实力。对神经网络等教育模型的评估对于确保其解决问题的有效性至关重要。这包括测试和评估神经网络模型的性能,以确保其准确性和可靠性。同样,基于条件数据挖掘的 C4.5 方法通过评估准确度、精确度和召回率来衡量分类性能。研究结果表明,与 C4.5 算法相比,神经网络算法更善于对学生的学习能力进行准确分类。神经网络算法的准确率为 92.6%,C4.5 算法的准确率为 80.6%。这凸显了神经网络方法适用于对 "阿利亚学校 "学生的学习能力进行分类。此外,从这一分类过程中获得的启示还可以推广到其他伊斯兰学校。
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