情绪不是随机的:机器学习揭示了21天第二语言学习轨迹中的可预测模式

IF 10.1 1区 心理学 Q1 PSYCHOLOGY, EDUCATIONAL
Peng Wang, Lesya Ganushchak, Camille Welie, Roel van Steensel
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引用次数: 0

摘要

第二语言学习中的情绪研究主要集中在静态的、基于特征的测量上,尤其是焦虑,而忽视了语境和时间动态。本研究将情绪重新定义为突发性和情境依赖性,由学习活动和自我感知的实时互动形成。使用生态瞬间评估(EMA), 92名成人学习者报告了他们在21天内6918次学习事件中的情绪状态(焦虑、享受、无聊)、感知熟练程度和上下文特征(例如任务形式、持续时间)。我们确定了五种情绪特征,包括一种占主导地位的“常规但愉快”状态,挑战以焦虑为中心的范式。情绪变异性主要存在于个体内部(62-68%),具有较弱的时间趋势和特殊周期。时间序列机器学习(TabPFN-TS)对情绪状态(例如,焦虑R²= 0.87;无聊R²= 0.95)和感知熟练度(R²= 0.83)的预测精度很高。这些发现强调了情境中情绪动态建模的价值,并表明短期预测可能有助于确定在未来工作中可以探索及时学习者支持的时刻。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotions Are Not Random: Machine Learning Reveals Predictable Patterns in a 21-Day Second Language Learning Trajectory
Emotion research in second language learning has largely focused on static, trait-based measures, especially anxiety, while neglecting contextual and temporal dynamics. This study reconceptualizes emotions as emergent and context-dependent, shaped by real-time interactions with learning activities and self-perceptions. Using Ecological Momentary Assessment (EMA), 92 adult learners reported their emotional states (anxiety, enjoyment, boredom), perceived proficiency, and contextual features (e.g., task modality, duration) across 6,918 learning episodes over 21 days. We identified five emotional profiles, including a dominant “Routine but Pleasant” state, challenging anxiety-centred paradigms. Emotional variability was primarily intraindividual (62–68%), with weak temporal trends and idiosyncratic cycles. Time-series machine learning (TabPFN-TS) achieved high predictive accuracy for emotional states (e.g., anxiety R² = 0.87; boredom R² = 0.95) and perceived proficiency (R² = 0.83). These findings underscore the value of modelling emotional dynamics in context and suggest that short-horizon forecasting may help identify moments when timely learner support could be explored in future work.
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来源期刊
Educational Psychology Review
Educational Psychology Review PSYCHOLOGY, EDUCATIONAL-
CiteScore
15.70
自引率
3.00%
发文量
62
期刊介绍: Educational Psychology Review aims to disseminate knowledge and promote dialogue within the field of educational psychology. It serves as a platform for the publication of various types of articles, including peer-reviewed integrative reviews, special thematic issues, reflections on previous research or new research directions, interviews, and research-based advice for practitioners. The journal caters to a diverse readership, ranging from generalists in educational psychology to experts in specific areas of the discipline. The content offers a comprehensive coverage of topics and provides in-depth information to meet the needs of both specialized researchers and practitioners.
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