Gu Yulan
School of Foreign Languages, Sichuan University of Arts and Science, Dazhou, Sichuan, China.
Front Psychol. 2023 Feb 20;14:1081502. doi: 10.3389/fpsyg.2023.1081502. eCollection 2023.
Investigating second language acquisition (SLA) a complex dynamic systems theory (CDST) involves much intuition, and operationalizing the dynamic constructs is hard in research terms. In the present study, we contend that the commonly used quantitative data analysis methods such as correlational works or structural equation modeling fail to examine variables as part of a system or network. They are mostly based on linear rather than non-linear associations. Considering the major challenges of dynamic systems research in SLA, we recommend that innovative analytical models such as retrodictive qualitative modeling (RQM) be used more. RQM manages to reverse the usual direction of research by actually beginning from the end. More especially from certain outcomes and then moves backward to find why specific elements of the system led to one outcome rather than the others. The analytical procedures of RQM will be elaborated on and also exemplified in the SLA research, more specifically for investigating language learners' affective variables. The limited body of research using RQM in the SLA domain is also reviewed followed by some conclusive remarks and suggestions for further research into the variables of interest.
研究第二语言习得(SLA)时,复杂动态系统理论(CDST)涉及很多直觉,并且从研究角度来看,将动态结构操作化很困难。在本研究中,我们认为,常用的定量数据分析方法,如相关性研究或结构方程建模,无法将变量作为系统或网络的一部分来考察。它们大多基于线性而非非线性关联。考虑到SLA中动态系统研究的主要挑战,我们建议更多地使用创新分析模型,如回溯性定性建模(RQM)。RQM设法通过实际上从终点开始来扭转通常的研究方向。更具体地说,从某些结果出发,然后向后推进,以找出系统的特定元素为何导致一种结果而非其他结果的原因。RQM的分析程序将在SLA研究中详细阐述并举例说明,更具体地用于研究语言学习者的情感变量。还将回顾在SLA领域使用RQM的有限研究,并给出一些结论性评论以及对感兴趣变量进行进一步研究的建议。