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A Convolution-LSTM-Based Deep Neural Network for Cross-Domain MOOC Forum Post Classification

机译:基于卷积LSTM的深度神经网络用于跨域MOOC论坛帖子分类

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Learners in a massive open online course often express feelings, exchange ideas and seek help by posting questions in discussion forums. Due to the very high learner-to-instructor ratios, it is unrealistic to expect instructors to adequately track the forums, find all of the issues that need resolution and understand their urgency and sentiment. In this paper, considering the biases among different courses, we propose a transfer learning framework based on a convolutional neural network and a long short-term memory model, called ConvL, to automatically identify whether a post expresses confusion, determine the urgency and classify the polarity of the sentiment. First, we learn the feature representation for each word by considering the local contextual feature via the convolution operation. Second, we learn the post representation from the features extracted through the convolution operation via the LSTM model, which considers the long-term temporal semantic relationships of features. Third, we investigate the possibility of transferring parameters from a model trained on one course to another course and the subsequent fine-tuning. Experiments on three real-world MOOC courses confirm the effectiveness of our framework. This work suggests that our model can potentially significantly increase the effectiveness of monitoring MOOC forums in real time.
机译:参加大规模在线公开课程的学习者通常会通过在论坛上发布问题来表达自己的想法,交流思想并寻求帮助。由于学生与教师的比率非常高,期望教师充分跟踪论坛,找到所有需要解决的问题并理解其紧迫性和情感是不现实的。在本文中,考虑到不同课程之间的偏差,我们提出了一个基于卷积神经网络和长短期记忆模型(称为ConvL)的转移学习框架,以自动识别帖子是否表达混乱,确定紧迫性并对其分类。情绪的极性。首先,我们通过卷积运算考虑局部上下文特征,学习每个单词的特征表示。其次,我们通过LSTM模型从通过卷积运算提取的特征中学习后表示,该模型考虑了特征的长期时间语义关系。第三,我们研究了将参数从在一门课程上训练的模型转移到另一门课程以及随后进行微调的可能性。在三门真实世界的MOOC课程上进行的实验证实了我们框架的有效性。这项工作表明,我们的模型可以潜在地显着提高实时监视MOOC论坛的效率。

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