评估源文本复杂性对 L2 学习者口译成绩的影响:基于依存关系的方法

Xinlei Jiang, Yue Jiang, Xiaopeng Zhang
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引用次数: 0

摘要

基于英汉口译语料库的数据,我们研究了源文本复杂度(使用新开发的基于依存关系的指数和传统指数)与后天学习者口译成绩(使用复杂度、准确度和流利度)之间的关系。最佳子集回归和泊松回归模型的结果表明,基于依存关系的指数(包括平均依存距离、最大依存距离、依存方向和根距离)在 L2 学习者口译成绩的各个维度上都表现出了有效性。与传统指数得出的参差不齐的结果相比,基于依存关系的指数在这些维度上的一致效果揭示了认知加工的工作原理。这些研究结果初步证明了源文本的依存性指数对 L2 学习者口译表现的影响,有助于在 L2 口译教学法中将任务难度可操作化。此外,这些发现还为理解二语转换提供了基于产品的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing effects of source text complexity on L2 learners’ interpreting performance: a dependency-based approach
Based on data from the English-Chinese interpretation corpus, we examined the relationship of source text complexity, captured using newly-developed dependency-based and traditional indices, to L2 learners’ interpreting performance captured using complexity, accuracy, and fluency. Best subsets regression and Poisson regression models yielded that the effectiveness of dependency-based indices including mean dependency distance, maximum dependency distance, dependency direction, and root distance, has been demonstrated across various dimensions of L2 learners’ performance. In contrast to the mixed results obtained from traditional indices, the consistent effect of dependency-based indices in these dimensions sheds light on the workings of cognitive processing. These findings provide preliminary support for the impact of dependency-based indices of source text on L2 learners’ interpreting performance, aiding in operationalizing task difficulty in L2 interpreting pedagogy. Moreover, they constitute product-based evidence for understanding bilingual switching.
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