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Improving Student Forum Responsiveness: Detecting Duplicate Questions in Educational Forums

机译:提高学生论坛响应能力:检测教育论坛中的重复问题

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Student forums are important for student engagement and learning in university courses but require high staff resources to moderate and answer questions. In introductory courses, the content can remain almost unchanged each year, so the questions asked in the course forums do not see a lot of variety over different iterations, which provides an opportunity for automation. This paper compiles a dataset of forum threads and meta-information of the participants from the Web Design and Development course at the Australian National University for the purposes of duplicate question detection in educational forums. A state of the art neural network model is trained on the dataset to measure its usefulness. An accuracy of 91.8% is achieved, which is on par with what is achieved on other datasets with similar features. A high performing neural network for this dataset could potentially be used to create a live system that detects and reuses answers for duplicate questions on course forums.
机译:学生论坛对于学生的参与和学习在大学课程中非常重要,但需要高级员工资源来缓和和回答问题。在介绍性课程中,内容每年都会保持几乎不变,因此课程论坛中提出的问题在不同的迭代中没有看到许多各种各样的迭代,这为自动化提供了机会。本文从澳大利亚国立大学的网络设计和开发课程中编制了论坛线程和参与者的Meta-Information的数据集,了解教育论坛的重复问题检测。最先进的神经网络模型在数据集上培训以测量其有用性。实现了91.8%的准确性,这与其他数据集在具有相似特征的其他数据集的内容的情况下。用于此数据集的高性能神经网络可能用于创建一个在课程论坛上检测和重复答案的实时系统,以便在课程论坛上进行重复的问题。

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