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2632-6779 (Print)  

2633-6898 (Online)

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The Ergodicity Issue in Studies in Second Language Learning and Teaching: The Need for Intensive Longitudinal Data Collection and Analysis

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Majid Elahi Shirvan

University of Bojnord, Bojnord, Iran

 

Abstract

This article addresses the ergodicity problem in Second Language Learning and Teaching (SLLT), emphasizing the need for methodological advancements that account for the dynamic, nonlinear nature of language development. Traditional research methods in SLLT, often based on aggregated group data, assume ergodicity—a concept that equates group-level averages with individual-level processes, a premise that fails to capture the complexity of individual learners’ trajectories. The article advocates for a shift toward intensive longitudinal data (ILD) collection and Dynamic Structural Equation Modeling (DSEM) to model the inherent non-ergodic nature of language acquisition. These methods facilitate a bottom-up generalization approach, where individual trajectories are examined for recurring dynamic patterns before testing these patterns across multiple cases to uncover shared mechanisms. By focusing on intra-individual dynamics, ILD and DSEM provide a nuanced understanding of language learning processes, revealing how emotional and cognitive factors fluctuate within individuals over time. This bottom-up approach contrasts with traditional top-down methodologies and offers a more accurate and personalized representation of language learning, enabling both the identification of common trends across individuals and the retention of individual variability. Despite challenges like sample size requirements and data complexity, the integration of ILD and DSEM is positioned as a transformative methodology for SLLT research, offering practical insights for future research.

 

Keywords

Ergodicity, second language learning and teaching, intensive longitudinal data, Dynamic structural equation modeling, bottom-up generalization