利用改进的元启发式辅助特征选择和用于推荐系统的自适应 GAN,建立基于高排名的学生成绩预测集合网络

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS
Kybernetes Pub Date : 2024-08-26 DOI:10.1108/k-03-2024-0824
S. Punitha, K. Devaki
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引用次数: 0

摘要

目的在教育环境中,预测学生成绩对于识别和支持可能需要额外帮助或资源的学生至关重要。了解和预测学生成绩对于教育工作者为学生提供有针对性的支持和指导至关重要。通过分析出勤率、学习习惯、成绩和参与度等各种因素,教师可以深入了解每个学生的学业进展情况。这些信息可以帮助他们调整教学方法,满足学生的个性化需求,确保学生获得更个性化、更有效的学习体验。通过识别学生成绩的模式和趋势,教育工作者可以及早干预,应对任何挑战,帮助学生充分发挥潜能。然而,由于人类行为和学习模式的复杂性,很难准确预测学生的表现。此外,数据的可用性和质量也会有所不同,从而影响预测的准确性。尽管存在这些障碍,但不断改进数据收集方法和开发更强大的预测模型有助于应对这些挑战,提高学生成绩预测的准确性和有效性。然而,现有模型在不同教育环境和学生群体中的可扩展性可能是一个障碍。确保模型在不同环境中的适应性和有效性,对其广泛应用和产生影响至关重要。实施基于学生成绩的学习推荐计划,预测学生的能力,并根据他们的需求推荐更好的材料,如论文、书籍、视频和超链接。设计/方法/途径因此,利用深度学习提出了一种预测学生成绩的方法。首先,从标准数据库中积累数据。接下来,收集到的数据会经过一个阶段,在这个阶段中,会使用修正红鹿算法(MRDA)仔细选择特征。之后,将选定的特征提供给深度集合网络(DEnsNet),其中利用了门控递归单元(GRU)、深度条件随机场(DCRF)和残差长短期记忆(Res-LSTM)等技术来预测学生的成绩。在这种情况下,DEnsNet 网络中的参数由 MRDA 算法进行微调。最后,DEnsNet 网络的结果将通过一种卓越的方法得出最终预测结果。随后,为推荐系统引入了自适应生成对抗网络(AGAN),并使用 MRDA 算法对这些参数进行优化选择。最后,对预测学生成绩的方法进行了数值评估,并与传统方法进行了比较,以证明所提方法的有效性。 研究结果在数据集-1 中,所开发模型的准确率分别比 HHO-DEnsNet、ROA-DEnsNet、GTO-DEnsNet 和 AOA-DEnsNet 高出 7.66%、9.91%、5.3% 和 3.53%,在数据集-2 中,分别比 HHO-DEnsNet、ROA-DEnsNet、GTO-DEnsNet 和 AOA-DEnsNet 高出 7.原创性/价值所开发的模型可在短期内推荐合适的学习材料,以提高学生的学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A high ranking-based ensemble network for student’s performance prediction using improved meta-heuristic-aided feature selection and adaptive GAN for recommender system

Purpose

Predicting student performance is crucial in educational settings to identify and support students who may need additional help or resources. Understanding and predicting student performance is essential for educators to provide targeted support and guidance to students. By analyzing various factors like attendance, study habits, grades, and participation, teachers can gain insights into each student’s academic progress. This information helps them tailor their teaching methods to meet the individual needs of students, ensuring a more personalized and effective learning experience. By identifying patterns and trends in student performance, educators can intervene early to address any challenges and help students acrhieve their full potential. However, the complexity of human behavior and learning patterns makes it difficult to accurately forecast how a student will perform. Additionally, the availability and quality of data can vary, impacting the accuracy of predictions. Despite these obstacles, continuous improvement in data collection methods and the development of more robust predictive models can help address these challenges and enhance the accuracy and effectiveness of student performance predictions. However, the scalability of the existing models to different educational settings and student populations can be a hurdle. Ensuring that the models are adaptable and effective across diverse environments is crucial for their widespread use and impact. To implement a student’s performance-based learning recommendation scheme for predicting the student’s capabilities and suggesting better materials like papers, books, videos, and hyperlinks according to their needs. It enhances the performance of higher education.

Design/methodology/approach

Thus, a predictive approach for student achievement is presented using deep learning. At the beginning, the data is accumulated from the standard database. Next, the collected data undergoes a stage where features are carefully selected using the Modified Red Deer Algorithm (MRDA). After that, the selected features are given to the Deep Ensemble Networks (DEnsNet), in which techniques such as Gated Recurrent Unit (GRU), Deep Conditional Random Field (DCRF), and Residual Long Short-Term Memory (Res-LSTM) are utilized for predicting the student performance. In this case, the parameters within the DEnsNet network are finely tuned by the MRDA algorithm. Finally, the results from the DEnsNet network are obtained using a superior method that delivers the final prediction outcome. Following that, the Adaptive Generative Adversarial Network (AGAN) is introduced for recommender systems, with these parameters optimally selected using the MRDA algorithm. Lastly, the method for predicting student performance is evaluated numerically and compared to traditional methods to demonstrate the effectiveness of the proposed approach.

Findings

The accuracy of the developed model is 7.66%, 9.91%, 5.3%, and 3.53% more than HHO-DEnsNet, ROA-DEnsNet, GTO-DEnsNet, and AOA-DEnsNet for dataset-1, and 7.18%, 7.54%, 5.43% and 3% enhanced than HHO-DEnsNet, ROA-DEnsNet, GTO-DEnsNet, and AOA-DEnsNet for dataset-2.

Originality/value

The developed model recommends the appropriate learning materials within a short period to improve student’s learning ability.

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来源期刊
Kybernetes
Kybernetes 工程技术-计算机:控制论
CiteScore
4.90
自引率
16.00%
发文量
237
审稿时长
4.3 months
期刊介绍: Kybernetes is the official journal of the UNESCO recognized World Organisation of Systems and Cybernetics (WOSC), and The Cybernetics Society. The journal is an important forum for the exchange of knowledge and information among all those who are interested in cybernetics and systems thinking. It is devoted to improvement in the understanding of human, social, organizational, technological and sustainable aspects of society and their interdependencies. It encourages consideration of a range of theories, methodologies and approaches, and their transdisciplinary links. The spirit of the journal comes from Norbert Wiener''s understanding of cybernetics as "The Human Use of Human Beings." Hence, Kybernetes strives for examination and analysis, based on a systemic frame of reference, of burning issues of ecosystems, society, organizations, businesses and human behavior.
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