探究社区框架中与语言无关的自动编码方法研究

Yuta Taniguchi, S. Konomi, Yoshiko Goda
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引用次数: 3

摘要

本研究特别讨论了多语言语境下查询社区(CoI)框架的自动编码方法。在大学里,外国学生是不容忽视的,学习系统也需要在多语言环境下工作。然而,尽管CoI框架被广泛用于评估学生生成的文本,但现有的工作都没有解决CoI框架缺乏语言不可知和自动编码算法的问题。在这项研究中,我们研究了一种用于自动编码的数据驱动文本标记算法的性能。使用现实世界的数据集,我们比较了语言独立的标记器和语言依赖的标记器的预测性能。我们的实验表明,数据驱动的标记器与其竞争对手相当,并且使用该标记器的分类算法可以实现对许多CoI指标的高预测性能。我们相信我们的实验结果是有益的,可以为未来的研究提供一个基线。
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EXAMINING LANGUAGE-AGNOSTIC METHODS OF AUTOMATIC CODING IN THE COMMUNITY OF INQUIRY FRAMEWORK
This study discusses the automatic coding methods of the Community of Inquiry (CoI) framework for multilingual contexts, in particular. In universities, foreign students cannot be overlooked, and learning systems are also required to work in multilingual situations. However, none of the existing work has addressed the lack of language-agnostic and automatic coding algorithms for the CoI framework, even though the framework is widely used to assess student-generated texts. In this study, we investigate the performance of a data-driven text tokenization algorithm for automatic coding. Using a real-world dataset, we compare the prediction performance of the language-independent tokenizer with a language-dependent tokenizer. Our experiments show the data-driven tokenizer to be comparable to its competitor, and a classification algorithm with this tokenizer could achieve high prediction performance for many CoI indicators. We believe that our experimental results are informative and could provide a baseline for future research.
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