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Modularized and Attention-Based Recurrent Convolutional Neural Network for Automatic Academic Paper Aspect Scoring

机译:基于模块化和基于注意力的循环卷积神经网络,用于自动学术论文方面评分

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Thousands of academic papers are submitted at top venues each year. Manual audits are time-consuming and laborious. And the result may be influenced by human factors. This paper investigates a modularized and attention-based recurrent convolutional network model to represent academic paper and predict aspect scores. This model treats input text as module-document hierarchies, uses attention pooling CNN and LSTM to represent text, and outputs prediction with a linear layer. Empirical results on PeerRead data show that this model give the best performance among the baseline models.
机译:每年在顶级场所都会提交数千篇学术论文。手动审核既费时又费力。结果可能会受到人为因素的影响。本文研究了一种模块化的,基于注意力的循环卷积网络模型,以代表学术论文并预测方面得分。该模型将输入文本视为模块文档层次结构,使用注意池CNN和LSTM表示文本,并输出带有线性层的预测。在PeerRead数据上的经验结果表明,该模型在基线模型中可提供最佳性能。

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