基于深度学习模型的韩语句子句法复杂度评估模型的实现

Sang-su Na, Beomjin Kim
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引用次数: 0

摘要

本研究提出了一种基于句法复杂性的文本水平自动评估方法。该方法是在对大型文本的句法复杂度测量方法进行改进的基础上发展起来的。我们基于深度学习模型,特别是韩语BERT模型,实现了一个韩语句子句法复杂度评估模型。特别是,通过“国立韩国语依赖分析语料库(v.2.0)”进行微调的kcbert模型,准确率达到了0.949,取得了优异的成绩。该模型作为子因素模型,有望为建立一个综合的文本水平评价模型做出贡献。通过对文本评估模型进行因子分割,可以克服现有研究使用无法解释的深度学习模型的局限性,为更精细的教育处理提供方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Deep Learning Model-based Korean Sentence Syntactic Complexity Assessment Model
This study developed a method to assess the text level automatically regarding syntactic complexity. The new method was developed by improving the method of measuring the syntactic complexity of large-scale texts with various types. We implemented a Korean sentence syntactic complexity assessment model based on the deep learning models, especially the Korean BERT models. In particular, the KcBERT-based model, fine-tuned through the “National Institute of Korean Language Dependency-Parsed Corpus (v.2.0)”, showed excellent performance with an accuracy of 0.949. This model is expected to contribute to establishing an integrated model to assess the text level as the sub-factor model. By segmenting the text assessment model by factors, it could overcome the limitations of the existing research using unexplainable deep learning models to provide a direction for more sophisticated educational treatment.
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