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Progressive Teaching Improvement For Small Scale Learning: A Case Study in China

机译:小规模学习的渐进教学改进 - 以中国为例

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Learning data feedback and analysis have been widely investigated in all aspects of education, especially for large scale remote learning scenario like Massive Open Online Courses (MOOCs) data analysis. On-site teaching and learning still remains the mainstream form for most teachers and students, and learning data analysis for such small scale scenario is rarely studied. In this work, we first develop a novel user interface to progressively collect students’ feedback after each class of a course with WeChat mini program inspired by the evaluation mechanism of most popular shopping website. Collected data are then visualized to teachers and pre-processed. We also propose a novel artificial neural network model to conduct a progressive study performance prediction. These prediction results are reported to teachers for next-class and further teaching improvement. Experimental results show that the proposed neural network model outperforms other state-of-the-art machine learning methods and reaches a precision value of 74.05% on a 3-class classifying task at the end of the term.
机译:学习数据反馈和分析已被广泛调查教育的各个方面,特别是对于大规模的远程学习场景,如大规模开放的在线课程(MOOCS)数据分析。现场教学和学习仍然是大多数教师和学生的主流形式,并且很少研究对这种小型情景的学习数据分析。在这项工作中,我们首先制定一个新颖的用户界面,逐步收集学生的反馈,以便通过最受欢迎的购物网站评估机制的灵感启发的微信迷你计划。然后将收集的数据可视化为教师并预处理。我们还提出了一种新颖的人工神经网络模型来进行逐步研究性能预测。这些预测结果向教师报告了下一级别和进一步的教学改进。实验结果表明,建议的神经网络模型优于其他最先进的机器学习方法,并在术语结束时的3级分类任务上达到74.05%的精确值。

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