Improving Academic Performance and Career Mobility Through Hybrid Clustered Graph Neural Networks

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
Jisha Isaac, Vargheese Mary Amala Bai
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引用次数: 0

Abstract

The main concern of the intelligence course recommendations is to improve college students' innovation and entrepreneurship learning experience. Thus, the need for individualized effective materials in modern education increases as much as the rates of online education platforms. Moreover, this expansion usually comes with various related drawbacks, and one of them is the problem of searching for classes that meet the learners' preferences and goals. When it comes to educational data, traditional methods of data processing fail to control such a huge amount of data and might even lead to distortions. To this end, this study presents the Hybrid Clustered Graph Neural Network to provide a more accurate analysis and prediction of students' academic performance for providing course recommendations. An efficient course recommendation framework named Hybrid Clustered Graph Neural Network is proposed for the career development of engineering students. The descriptor datasets were used for this research article which contains the details of course and user requirements. The collected descriptor data are preprocessed by imputation and normalization approaches to provide the enhanced quality and relevance of the data. In the feature extraction phase, the Clustering-based Graph Convolutional Representation model is implemented to extract student's recommendations and WordPieceFormer is applied for the extraction of contextual-based social media features. The Hybrid Clustered Recurrent Neural Network model is proposed for scoring and ranking the courses according to the recommendation ranking aspects. This study examines the behavioral performance using the proposed approach, providing appropriate course suggestions to achieve career mobility objectives. The evaluations indicated the viability of the proposed model, showing an accuracy efficiency of 98% and precision of 96.6%. The following results show the benefits of the proposed approach in attaining the appropriate recommendations that meet the students' academic performance and student career needs for providing course recommendations.

通过混合聚类图神经网络提高学习成绩和职业流动性
智能课程推荐的主要关注点是提高大学生的创新创业学习体验。因此,现代教育中对个性化有效材料的需求与在线教育平台的比例一样增加。此外,这种扩展通常会带来各种相关的缺点,其中之一就是寻找符合学习者偏好和目标的课程的问题。对于教育数据,传统的数据处理方法无法控制如此庞大的数据量,甚至可能导致失真。为此,本研究提出混合聚类图神经网络,对学生的学习成绩进行更准确的分析和预测,为课程推荐提供依据。针对工科学生的职业发展,提出了一种高效的课程推荐框架——混合聚类图神经网络。本文使用了描述符数据集,其中包含课程细节和用户需求。收集到的描述符数据通过归一化和归一化方法进行预处理,以提高数据的质量和相关性。在特征提取阶段,采用基于聚类的图卷积表示模型提取学生推荐,采用WordPieceFormer提取基于上下文的社交媒体特征。提出了混合聚类递归神经网络模型,根据推荐排序方面对课程进行评分和排序。本研究运用所提出的方法检视行为表现,提供适当的课程建议,以达成职涯流动目标。评价结果表明,该模型的准确率为98%,精密度为96.6%。以下结果显示了所提出的方法在获得适当的建议方面的好处,这些建议符合学生的学习成绩和学生提供课程推荐的职业需求。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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