AiM: Taking Answers in Mind to Correct Chinese Cloze Tests in Educational Applications

Yusen Zhang, Zhongli Li, Qingyu Zhou, Ziyi Liu, Chao Li, Mina W. Ma, Yunbo Cao, Hongzhi Liu
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引用次数: 1

Abstract

To automatically correct handwritten assignments, the traditional approach is to use an OCR model to recognize characters and compare them to answers. The OCR model easily gets confused on recognizing handwritten Chinese characters, and the textual information of the answers is missing during the model inference. However, teachers always have these answers in mind to review and correct assignments. In this paper, we focus on the Chinese cloze tests correction and propose a multimodal approach(named AiM). The encoded representations of answers interact with the visual information of students’ handwriting. Instead of predicting ‘right’ or ‘wrong’, we perform the sequence labeling on the answer text to infer which answer character differs from the handwritten content in a fine-grained way. We take samples of OCR datasets as the positive samples for this task, and develop a negative sample augmentation method to scale up the training data. Experimental results show that AiM outperforms OCR-based methods by a large margin. Extensive studies demonstrate the effectiveness of our multimodal approach.
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目的:在教育应用中牢记填空题的答案
为了自动纠正手写作业,传统的方法是使用OCR模型识别字符并将其与答案进行比较。OCR模型在识别手写体汉字时容易出现混淆,并且在模型推理过程中缺少答案的文本信息。然而,老师们总是把这些答案记在心里,以便复习和批改作业。本文以汉语完形填空题为研究对象,提出了一种多模态填空修正方法。答案的编码表示与学生手写的视觉信息相互作用。我们不是预测“对”或“错”,而是对答案文本执行序列标记,以细粒度的方式推断哪个答案字符与手写内容不同。我们将OCR数据集的样本作为该任务的正样本,并开发了一种负样本扩增方法来扩展训练数据。实验结果表明,AiM的性能明显优于基于ocr的方法。广泛的研究证明了我们的多模式方法的有效性。
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