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Sentence-Level Readability Assessment for L2 Chinese Learning

机译:L2中文学习的句子级可读性评估

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Automatic assessment of sentence readability level can support educators in selecting sentence examples suitable for different learning levels to complement teaching materials. Although there exists extensive research on document-level and passage-level Chinese readability assessment, the sentence-level evaluation remains little explored. We bridge the gap by providing a research framework and a large corpus of nearly 40,000 sentences with ten-level readability annotation. We design experiments to analyze the influence of 88 linguistic features on sentence complexity and results suggest that the linguistic features can significantly improve the predictive performance with the highest of 70.78% distance-1 adjacent accuracy. Model comparison also confirms that our proposed set of features can reduce the bias in prediction without adding variances. We hope that our corpus, feature sets, and experimental validation can provide educators and linguists with more language resources, enlightenment, and automatic tools for future related research.
机译:句子可读性级别的自动评估可以支持教育者在选择适合不同学习级别的句子示例中,以补充教材。虽然对文件级和段落级别的读者评估存在广泛的研究,但句子级评估仍然很少探索。我们通过提供研究框架和一个近40,000个句子的大型语料库来弥合差距,具有十级可读性注释。我们设计实验来分析88个语言特征对句子复杂性的影响,结果表明语言特征可以显着提高预测性能,最高距离-1相邻精度为70.78%。模型比较还证实我们提出的一组功能可以减少预测的偏差而不增加差异。我们希望我们的语料库,功能集和实验验证能够为教育者和语言学家提供更多语言资源,启蒙和自动工具,以便将来的相关研究。

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