Mukhin Vadym, Zavgorodnii Valerii, Liskin Viacheslav, Syrota Sergiy, Czupryna-Nowak Aleksandra, Rusyn Bohdan, Banasik Arkadiusz, Woloszyn Jacek, Kempa Wojciech
Department of System Design, National Technical University of Ukraine "Igor Sikorsky Kyiv Polytechnic Institute", Kiev, Ukraine.
Department of Information Technologies, National Transport University, Kiev, Ukraine.
Sci Rep. 2025 May 7;15(1):15904. doi: 10.1038/s41598-025-00897-4.
This work is aimed at developing intelligent systems capable of automatically classifying types of educational materials. This will allow students to find the resources they need faster, and it will make it easier for teachers to manage content in educational platforms. The solution of the problem of recognition of information objects using fuzzy output systems and neural networks is considered. This approach combines the advantages of neural machine learning with the flexibility and efficiency of fuzzy logic, making these systems effective tools for solving problems related to fuzzy or uncertain data. An information model of a neural network for classifying information objects in e-learning systems has been developed. Experimental testing of the proposed approach was carried out on a data set, which consists of information objects from real e-learning systems, namely such as manuals, lectures, syllabuses, and textbooks. Design an adaptive mechanism that utilizes fuzzy neural networks to personalize content recommendations for students based on their learning progress and preferences, thereby enhancing the effectiveness of e-learning systems. Improve the efficiency of classification algorithms by fine-tuning neural network parameters and fuzzy logic rules, ensuring high accuracy and computational efficiency when processing large-scale educational datasets. The results of experimental studies have shown that a neural network built based on fuzzy logic is able to classify various information objects efficiently and correctly in e-learning systems. It is shown that the integration of neural networks based on fuzzy logic into e-learning systems to improve the processes of classification of information objects makes it possible to increase the efficiency of educational resources management, ensuring accuracy and flexibility in processing various data.
这项工作旨在开发能够自动对教育材料类型进行分类的智能系统。这将使学生能够更快地找到他们需要的资源,并使教师在教育平台上管理内容更加容易。考虑了使用模糊输出系统和神经网络解决信息对象识别问题的方法。这种方法将神经机器学习的优势与模糊逻辑的灵活性和效率相结合,使这些系统成为解决与模糊或不确定数据相关问题的有效工具。已经开发了一种用于在电子学习系统中对信息对象进行分类的神经网络信息模型。在所提出的方法的实验测试是在一个数据集上进行的,该数据集由来自真实电子学习系统的信息对象组成,即手册、讲座、教学大纲和教科书等。设计一种自适应机制,利用模糊神经网络根据学生的学习进度和偏好为学生个性化内容推荐,从而提高电子学习系统的有效性。通过微调神经网络参数和模糊逻辑规则来提高分类算法的效率,确保在处理大规模教育数据集时具有高精度和计算效率。实验研究结果表明,基于模糊逻辑构建的神经网络能够在电子学习系统中高效且正确地对各种信息对象进行分类。结果表明,将基于模糊逻辑的神经网络集成到电子学习系统中以改进信息对象分类过程,可以提高教育资源管理的效率,确保在处理各种数据时的准确性和灵活性。