Liu Jingdan, Bao Xujie, Chen Liji
School of General Education, Hunan University of Information Technology, Changsha, 410000, Hunan, China.
School of Distance Education, Universiti Sains Malaysia (USM), 11800, Penang, Malaysia.
Sci Rep. 2025 Jul 15;15(1):25542. doi: 10.1038/s41598-025-09844-9.
Artificial intelligence (AI) is transforming educational technology by enabling personalized, adaptive, and data-driven learning experiences. Machine learning algorithms analyze student performance to tailor content delivery, while natural language processing facilitates interactive learning through voice assistants and essay evaluation. This article presents the potential of criteria importance through the inter-criteria correlation (ICCR) method, which is used to determine objective weights under theoretical concepts of standard deviation and coefficient correlation techniques. Furthermore, another approach using the tool for order preference by similarity to the ideal solution (TOPSIS) method is discussed to investigate the ranking of preferences under various criteria and experts' opinions within the system of the q-rung orthopair fuzzy framework. To reveal the validation and superiority, a numerical example is discussed to evaluate an effective AI approach to improve English language and psychology pedagogy under different criteria. Furthermore, a comprehensive comparative study is conducted to assess the compatibility of the proposed optimization techniques in the CRITIC-TOPSIS method with existing optimization approaches. Finally, the findings and contributions, along with future directions, are discussed in the conclusion. Additionally, we can apply the discussed decision-making methodologies to resolve complex real-life applications, such as renewable energy, medical diagnosis, multi-robotic systems, social selections, and computational and environmental sciences.
人工智能(AI)正在通过实现个性化、适应性和数据驱动的学习体验来改变教育技术。机器学习算法分析学生的表现以定制内容交付,而自然语言处理则通过语音助手和作文评估促进交互式学习。本文介绍了通过准则间相关性(ICCR)方法确定准则重要性的潜力,该方法用于在标准差和系数相关技术的理论概念下确定客观权重。此外,还讨论了另一种使用与理想解相似性排序法(TOPSIS)的方法,以研究q阶正交对模糊框架系统内各种准则和专家意见下的偏好排序。为了揭示其有效性和优越性,通过一个数值例子来评估一种有效的人工智能方法在不同准则下对提高英语语言和心理学教学法的作用。此外,还进行了一项全面的比较研究,以评估CRITIC-TOPSIS方法中所提出的优化技术与现有优化方法的兼容性。最后,在结论部分讨论了研究结果、贡献以及未来方向。此外,我们可以应用所讨论的决策方法来解决复杂的现实生活应用问题,如可再生能源、医学诊断、多机器人系统、社会选择以及计算和环境科学等。