Psycho-emotional dimensions of language learning: Investigating the interplay between learner digital tool efficacy, anxiety, motivation, and their engagement in technology-enhanced environments

Authors

  • Hongyang Lin Shaanxi Normal University

Keywords:

digital tool efficacy, anxiety, motivation, engagement, technology-enhanced environments
Agencies: Humanities and Social Science Project of Education Department of Shaanxi Provincial Government (Grant No. 20JK0193).

Abstract

The present study explores the psycho-emotional dimensions of language learning, focusing on the interplay between learner digital tool efficacy, anxiety, motivation, and engagement in technology-enhanced environments. Using a random sampling approach, data were collected from 409 EFL students in Chengdu, Urumqi, Beijing, and Chongqing. Statistical analyses, conducted via SPSS (version 27) and AMOS (version 24), included descriptive statistics, correlation analyses, regression, and structural equation modeling (SEM) to uncover relationships and visualize complex interactions among the variables. The findings revealed significant relationships between digital tool efficacy, anxiety, motivation, and engagement. Higher digital tool efficacy was positively correlated with motivation and engagement, while negatively correlated with anxiety. Motivation emerged as a critical mediator between digital tool efficacy and engagement, emphasizing its role in transforming digital confidence into active participation. Additionally, digital tool efficacy was identified as a strong predictor of reduced anxiety, increased motivation, and enhanced engagement. These findings highlight the importance of fostering digital tool efficacy to alleviate anxiety, enhance motivation, and boost engagement among EFL learners in technology-enhanced educational contexts.

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Author Biography

Hongyang Lin, Shaanxi Normal University

Hongyang Lin, she is a Ph.D candidate in School of International Studies, Shaanxi Normal University, she also works as a teaching assistant in School of Liberal Arts, Xi'an Technological University. Her research fields are Foreign Linguistics and Applied Linguistics, historical comparative linguistics.

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FUNDING INFORMATION:

Humanities and Social Science Project of Education Department of Shaanxi Provincial Government (Grant No. 20JK0193).

Published

2025-09-29

How to Cite

Lin, H. (2025). Psycho-emotional dimensions of language learning: Investigating the interplay between learner digital tool efficacy, anxiety, motivation, and their engagement in technology-enhanced environments. Porta Linguarum An International Journal of Foreign Language Teaching and Learning, (XIII). Retrieved from https://revistaseug.ugr.es/index.php/portalin/article/view/31987

Issue

Section

xiii Special Issue "Integrating Innovative Technologies into Technology-Assisted Language Learning (TALL) Environments: Insights, Applications, and Impacts"