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A text summarization method based on fuzzy rules and applicable to automated assessment

机译:一种基于模糊规则的文本汇总方法,适用于自动评估

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In the last two decades, the text summarization task has gained much importance because of the large amount of online data, and its potential to extract useful information and knowledge in a way that could be easily handled by humans and used for a myriad of purposes, including expert systems for text assessment. This paper presents an automatic process for text assessment that relies on fuzzy rules on a variety of extracted features to find the most important information in the assessed texts. The automatically produced summaries of these texts are compared with reference summaries created by domain experts. Differently from other proposals in the literature, our method summarizes text by investigating correlated features to reduce dimensionality, and consequently the number of fuzzy rules used for text summarization. Thus, the proposed approach for text summarization with a relatively small number of fuzzy rules can benefit development and use of future expert systems able to automatically assess writing. The proposed summarization method has been trained and tested in experiments using a dataset of Brazilian Portuguese texts provided by students in response to tasks assigned to them in a Virtual Learning Environment (VLE). The proposed approach was compared with other methods including a naive baseline, Score, Model and Sentence, using ROUGE measures. The results show that the proposal provides better f-measure (with 95% CI) than aforementioned methods. (C) 2018 Elsevier Ltd. All right reserved
机译:在过去的二十年里,文本摘要任务变得非常重要,这是因为大量的在线数据以及其以人类易于处理并用于多种目的的方式提取有用的信息和知识的潜力,包括用于文本评估的专家系统。本文提出了一种文本评估自动过程,该过程依赖于对各种提取特征的模糊规则,以在评估文本中找到最重要的信息。将这些文本的自动生成的摘要与领域专家创建的参考摘要进行比较。与文献中的其他建议不同,我们的方法通过研究相关特征以减少维数来总结文本,从而减少了用于文本摘要的模糊规则的数量。因此,所提出的具有相对较少数量的模糊规则的文本摘要方法可以有益于开发和使用能够自动评估写作的未来专家系统。拟议的汇总方法已使用由学生提供的巴西葡萄牙语文本数据集在虚拟学习环境(VLE)中分配给他们的任务进行了实验训练和测试。使用ROUGE测度,将该提议的方法与其他方法进行比较,包括幼稚的基线,得分,模型和句子。结果表明,与上述方法相比,该建议提供了更好的f测度(CI值为95%)。 (C)2018 Elsevier Ltd.保留所有权利

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