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Automatically Grading Brazilian Student Essays

机译:自动为巴西学生作文评分

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摘要

Automated Essay Scoring (AES) is the NLP task of evaluating prose text, still scarcely explored in Portuguese. In this work, we present two AES strategies: the first with a deep neural network with two recurrent layers, and the second with a large number of handcrafted features. We apply our methods to evaluate essays from the ENEM exam with respect to five writing competencies. Overall, our feature-based system performs better in the first four, while the neural networks are better in the fifth one, which is also the hardest to grade accurately. In the aggregated score, our best model achieves a Quadratic Weighted Kappa of 0.752 and a Rooted Mean Squared Error of 100.0 when compared to human judgments, with scores ranging from 0 to 1000.
机译:自动作文评分(AES)是评估散文的NLP任务,至今仍很少用葡萄牙语进行探讨。在这项工作中,我们提出了两种AES策略:一种是具有两个递归层的深度神经网络,另一种是具有大量手工制作的特征。我们运用我们的方法来评估ENEM考试中有关五种写作能力的论文。总体而言,我们的基于特征的系统在前四个中表现更好,而神经网络在第五个中表现更好,这也是最难准确评分的。在汇总分数中,与人类的判断相比,我们最好的模型实现了0.752的二次加权Kappa和100.0的均方根误差,分数从0到1000。

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