Design of an online education student learning status evaluation model based on dual-improved neural networks

Yingying Lou, Fan Li
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Abstract

With the continuous development of network technology, online education has become an important form of education. However, in the online education model, it is difficult for educators to effectively evaluate students' learning status, and using a learning status evaluation model can effectively solve this problem. The main goal of this model is to comprehensively evaluate students' learning behavior, progress, and outcomes, in order to understand their learning status, provide effective teaching feedback to teachers, help students improve learning methods, and improve learning efficiency. The current automatic evaluation model for student learning status has certain limitations in terms of applicability and accuracy. A student learning state evaluation model based on Multi task Cascaded Convolutional Networks (MTCNN) is proposed to address the effectiveness of online education student learning state evaluation. Use the facial image acquisition function to extract students' facial features, process each feature through label classification, and then analyze the students' attention and learning emotions. Finally, analyze the effectiveness of the research method application. The results showed that the train_loss value of the learning state evaluation model proposed in the study can be reduced to about 0.1; the train_acc value can reach more than 95 %, and the overall volatility is small; the overall evaluation accuracy of facial expressions can reach 74.71 %, which is significantly better than cpc, VGG19 and other evaluation methods; compared with the comprehensive evaluation results and multi-modal analysis methods, only two evaluations at the critical value are different. The experimental results show that the online education students’ learning status evaluation model designed by the research has a high accuracy rate and has a certain application potential in the field of online education.

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基于双改进神经网络的在线教育学生学习状态评价模型设计
随着网络技术的不断发展,在线教育已成为一种重要的教育形式。然而,在网络教育模式下,教育者很难对学生的学习状况进行有效评价,而使用学习状况评价模型可以有效解决这一问题。该模型的主要目标是全面评价学生的学习行为、学习进度和学习成果,从而了解学生的学习状况,为教师提供有效的教学反馈,帮助学生改进学习方法,提高学习效率。目前的学生学习状态自动评价模型在适用性和准确性方面存在一定的局限性。针对在线教育学生学习状态评价的有效性问题,提出了一种基于多任务级联卷积网络(MTCNN)的学生学习状态评价模型。利用人脸图像采集功能提取学生的面部特征,通过标签分类对每个特征进行处理,进而分析学生的注意力和学习情绪。最后,分析研究方法的应用效果。结果表明,本研究提出的学习状态评价模型的train_loss值可以降到0.1左右;train_acc值可以达到95 %以上,整体波动性小;面部表情的整体评价准确率可以达到74.71 %,明显优于cpc、VGG19等评价方法;与综合评价结果和多模态分析方法相比,只有临界值处的两个评价结果存在差异。实验结果表明,该研究设计的在线教育学生学习状态评价模型具有较高的准确率,在在线教育领域具有一定的应用潜力。
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