How syntactic complexity indices predict Chinese L2 writing quality: An analysis of unified dependency syntactically-annotated corpus

IF 4.2 1区 文学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Yuxin Hao , Xuelin Wang , Shuai Bin , Qihao Yang , Haitao Liu
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Abstract

Previous syntactic complexity (SC) research on L2 Chinese has overlooked a range of Chinese-specific structures and fine-grained indices. This study, utilizing a syntactically annotated Chinese L2 writing corpus, simultaneously employs both large-grained and fine-grained syntactic complexity indices to investigate the relationship between syntactic complexity and writing quality produced by English-speaking Chinese second language (ECSL) learners from macro and micro perspectives. Our findings reveal the following: (a) at a large-grained level of analysis using syntactic complexity indices, the generic syntactic complexity indice (GSC indice) number of T-units per sentence and the Chinese-specific syntactic complexity indice (CSC indice) number of Clauses per topic chain unit account for 14.5% of the total variance in writing scores among ECSL learners; (b) the syntactic diversity model alone accounts for 24.7% of the variance in Chinese writing scores among ECSL learners; (c) the stepwise regression analysis model, which integrates fine-grained SC indices extracted from the syntactically annotated corpus, explains 43.7% of the variance in Chinese writing quality. This model incorporates CSC indices such as average ratio of dependency types per 30 dependency segments, the ratio of adjuncts to sentence end, the ratio of predicate complements, the ratio of numeral adjuncts, the mean length of Topic-Comment-Unit dependency distance, as well as GSC indices like the ratio of main governors, the ratio of attributers, the ratio of coordinating adjuncts, and the ratio of sentential objects. These findings highlight the valuable insights that syntactically annotated fine-grained SC indices offer regarding the writing characteristics of ECSL learners.

句法复杂性指数如何预测中文 L2 写作质量?统一依存句法注释语料分析
以往的汉语第二语言句法复杂度(SC)研究忽视了一系列中国特有的结构和细粒度指数。本研究利用语法注释的汉语第二语言写作语料库,同时使用大粒度和细粒度的句法复杂度指数,从宏观和微观两个角度研究句法复杂度与英语汉语第二语言(ECSL)学习者写作质量之间的关系。我们的研究结果如下(a) 在使用句法复杂度指数进行大粒度分析时,通用句法复杂度指数(GSC indice)每个句子的 T-units 数量和汉语特有句法复杂度指数(CSC indice)每个主题链单元的 Clauses 数量占写作分数总差异的 14.(b) 句法多样性模型单独解释了 24.7% 的 ECSL 学习者中文写作分数差异;(c) 逐步回归分析模型整合了从句法注释语料库中提取的细粒度 SC 指数,解释了 43.7% 的中文写作质量差异。该模型纳入了CSC指数,如每30个依存段中依存类型的平均比例、句末附属词的比例、谓语补语的比例、数词附属词的比例、主题-内容-单位依存距离的平均长度,以及GSC指数,如主治词的比例、归属词的比例、协调附属词的比例和句子宾语的比例。这些研究结果凸显了语法注释的细粒度SC指数为了解ECSL学习者的写作特点所提供的宝贵见解。
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来源期刊
Assessing Writing
Assessing Writing Multiple-
CiteScore
6.00
自引率
17.90%
发文量
67
期刊介绍: Assessing Writing is a refereed international journal providing a forum for ideas, research and practice on the assessment of written language. Assessing Writing publishes articles, book reviews, conference reports, and academic exchanges concerning writing assessments of all kinds, including traditional (direct and standardised forms of) testing of writing, alternative performance assessments (such as portfolios), workplace sampling and classroom assessment. The journal focuses on all stages of the writing assessment process, including needs evaluation, assessment creation, implementation, and validation, and test development.
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