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Evaluating Interaction Content in Online Learning Using Deep Learning for Quality Classification

机译:使用深度学习评估在线学习中的互动内容进行高质量分类

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Online learning is an important bridge between students and teachers for communication and learning. Online learning interaction content (OLIC) is created during information exchange. The evaluation of OLIC in the literature has been mainly focused on the perspective of quantitative instead of qualitative. The purpose of this study is to explore a new method for the qualitative evaluation of OLIC in online learning setting. A novel deep learning model is proposed for evaluating the quality of OLIC in the education domain. A multichannel of a framework based on bidirectional long short-term memory and attention mechanism (MFLBA) is used to achieve automatic evaluation. The results show that MFLBA takes the advantage of Word2Vector for evaluating the quality of OLIC. This study provides new horizon to analyze the nature of online interaction and monitors students' online learning process.
机译:在线学习是学生和教师之间的重要桥梁,用于沟通和学习。在线学习互动内容(OLIC)是在信息交换期间创建的。在文献中对奥利克的评价主要集中在定量而不是定性的角度。本研究的目的是探讨在线学习环境中奥利克定性评估的新方法。提出了一种新的深入学习模式,用于评估教育领域的奥利克质量。基于双向短期内存和注意机制(MFLBA)的框架的多通道用于实现自动评估。结果表明,MFLBA采用Word2Vector以评估OliC质量的优势。本研究提供了新的地平线来分析在线互动的性质,并监控学生的在线学习过程。

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