Cognitive Status Analysis for Recognizing and Managing Students' Learning Behaviors

Jingyao Zhang
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引用次数: 0

Abstract

Online learning environments have become increasingly popular due to their flexibility and convenience, but they also present new challenges, such as maintaining student motivation and engagement. To address these challenges, it is crucial to understand and predict students’ learning behaviors. This study explores the recognition and management of students’ learning behaviors through cognitive status analysis. By conducting a thorough analysis of students’ cognitive status and applying advanced deep learning models and algorithms, this study demonstrates the effectiveness of recognizing and managing students’ learning behaviors. The proposed model combines convolutional neural networks and long short-term memory networks with attention mechanisms, which incorporate cognitive status evaluation features and use them as filters for text information. The model’s focus on text sentences with distinctive features in cognitive status evaluation leads to more effective recognition and management of students’ learning behaviors. Additionally, by integrating Most Informative Propositions and Semantic Propositional Value into the deep learning model, this study achieved excellent results in cognitive status evaluation recognition tasks. Further experiments show that by mixing different features and using advanced algorithms, the final model achieves high classification accuracy and F1 scores on multiple types of learning behaviors. Continuous assessment of students’ cognitive status and learning behaviors can lead to the development of effective learning strategies and intervention measures, which can enhance students’ mastery of knowledge and overall performance.
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学生学习行为识别与管理的认知状态分析
在线学习环境由于其灵活性和便利性而越来越受欢迎,但也带来了新的挑战,例如保持学生的积极性和参与度。为了应对这些挑战,了解和预测学生的学习行为至关重要。本研究通过认知状态分析探讨学生学习行为的识别与管理。通过对学生的认知状态进行深入分析,并应用先进的深度学习模型和算法,本研究证明了识别和管理学生学习行为的有效性。所提出的模型将卷积神经网络和长短期记忆网络与注意力机制相结合,后者结合了认知状态评估特征,并将其用作文本信息的过滤器。该模型在认知状态评估中关注具有鲜明特征的文本句子,从而更有效地识别和管理学生的学习行为。此外,通过将大多数信息命题和语义命题值集成到深度学习模型中,本研究在认知状态评估识别任务中取得了良好的效果。进一步的实验表明,通过混合不同的特征并使用先进的算法,最终模型在多种类型的学习行为上实现了较高的分类精度和F1分数。持续评估学生的认知状态和学习行为可以制定有效的学习策略和干预措施,从而提高学生对知识的掌握和整体表现。
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来源期刊
自引率
0.00%
发文量
352
审稿时长
12 weeks
期刊介绍: This interdisciplinary journal focuses on the exchange of relevant trends and research results and presents practical experiences gained while developing and testing elements of technology enhanced learning. It bridges the gap between pure academic research journals and more practical publications. So it covers the full range from research, application development to experience reports and product descriptions. Fields of interest include, but are not limited to: -Software / Distributed Systems -Knowledge Management -Semantic Web -MashUp Technologies -Platforms and Content Authoring -New Learning Models and Applications -Pedagogical and Psychological Issues -Trust / Security -Internet Applications -Networked Tools -Mobile / wireless -Electronics -Visualisation -Bio- / Neuroinformatics -Language /Speech -Collaboration Tools / Collaborative Networks
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