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Co-Attention Based Neural Network for Source-Dependent Essay Scoring

机译:基于共同注意的神经网络,用于源相关论文评分

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This paper presents an investigation of using a co-attention based neural network for source-dependent essay scoring. We use a co-attention mechanism to help the model learn the importance of each part of the essay more accurately. Also, this paper shows that the co-attention based neural network model provides reliable score prediction of source-dependent responses. We evaluate our model on two source-dependent response corpora. Results show that our model outperforms the baseline on both corpora. We also show that the attention of the model is similar to the expert opinions with examples.
机译:本文提出了一种使用基于共同注意的神经网络进行与来源相关的论文评分的研究。我们使用共同注意机制来帮助模型更准确地了解文章各部分的重要性。此外,本文还表明,基于共同注意的神经网络模型为依赖于源的响应提供了可靠的分数预测。我们在两个依赖于源的响应语料库上评估我们的模型。结果表明,我们的模型在两种语料上均优于基线。我们还通过示例显示了模型的关注点与专家意见相似。

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