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Andreea Dutulescu; Stefan Ruseti; Mihai Dascalu; Danielle McNamara – International Educational Data Mining Society, 2025
The assessment of student responses to learning-strategy prompts, such as self-explanation, summarization, and paraphrasing, is essential for evaluating cognitive engagement and comprehension. However, manual scoring is resource-intensive, limiting its scalability in educational settings. This study investigates the use of Large Language Models…
Descriptors: Scoring, Computational Linguistics, Computer Software, Artificial Intelligence
Victor-Alexandru Padurean; Tung Phung; Nachiket Kotalwar; Michael Liut; Juho Leinonen; Paul Denny; Adish Singla – International Educational Data Mining Society, 2025
The growing need for automated and personalized feedback in programming education has led to recent interest in leveraging generative AI for feedback generation. However, current approaches tend to rely on prompt engineering techniques in which predefined prompts guide the AI to generate feedback. This can result in rigid and constrained responses…
Descriptors: Automation, Student Writing Models, Feedback (Response), Programming
Khue Van Tran; Mai Thi Truc Le – Journal of Learning for Development, 2025
While engaging with feedback is of significance for learning, current studies have highlighted students' lack of engagement with feedback. This study aimed at identifying predictors of university students' feedback use in a blended learning environment based on the extension of the Planned Behaviour Theory. Data were collected via a questionnaire…
Descriptors: English (Second Language), Second Language Learning, Student Attitudes, Predictor Variables
Peter Wood; Dave Putwain; Pedro Freitas Fernandes – British Educational Research Journal, 2025
School children experience a range of normative transitions throughout their compulsory education, with the transition from primary to secondary school seen as the most intensive and challenging. While this transition is well researched, the focus of such work has been labelled disparate and lacking in terms of its focus on the pupils' experiences…
Descriptors: Peer Influence, Student Adjustment, Elementary Education, Secondary Education
Colleen Kalynych; Elisa Zenni; Janice Hanson – Journal of Faculty Development, 2025
The authors developed an email-based faculty development course regarding evaluation and feedback utilizing spaced education to address participation barriers in health professions faculty development. Through a qualitative program evaluation, post-program evaluation narratives were analyzed inductively using conventional content analysis.…
Descriptors: Faculty Development, Electronic Mail, Feedback (Response), Program Evaluation
Xin Wen; Fangfang Liu – Language, Culture and Curriculum, 2025
Second language learning is an emotion-intensive process in which learners experience a wide range of both positive and negative emotions. However, despite the significantly growing number of Chinese as a second language (CSL) learners, their emotional experiences are frequently overlooked. This study employs Q methodology to explore the emotional…
Descriptors: Second Language Learning, Chinese, Psychological Patterns, Emotional Response
Yuang Chen; Yongbi Zhi; Ali Derakhshan – European Journal of Education, 2025
This intervention study strived to uncover the significance of Artificial Intelligence (AI) in L2 classrooms by exploring its impact on English language learners' achievement emotions and willingness to communicate (WTC). The study also examined the interrelationship between English learners' achievement emotions and their WTC in AI-powered…
Descriptors: Technology Integration, Artificial Intelligence, Second Language Instruction, Second Language Learning
Elisa Cavicchiolo; Sara Manganelli; Fabio Lucidi; Fabio Alivernini – Journal of Psychoeducational Assessment, 2025
Current literature on students' emotional well-being often relies on global measures, making it difficult to identify affective states specifically experienced within the school context. This study, based on a population (N = 297993) of 10th grade students, analyzed differences in emotions at school across academic achievement, socioeconomic…
Descriptors: Well Being, Grade 10, Emotional Response, Academic Achievement
Wen Liu – Language Teaching Research Quarterly, 2025
Written corrective feedback is a hot topic in the field of L2 writing and second language acquisition. Citespace, one of the bibliometric analysis software, was used to investigate the number of publications, productive authors, influential journals and institutions, major themes, and research trends of written corrective feedback in L2 writing…
Descriptors: Second Language Instruction, Writing Instruction, Second Language Learning, Language Acquisition
Erica O. Lee; Robin P. Ennis; Lauren E. Anson; Jennifer Kilgo; Lois M. Christensen; Kelly Hill; Despina Stavrinos – Journal of Emotional and Behavioral Disorders, 2025
Students with emotional dysregulation are not equipped with the ability to manage their own behavior. This often leads to major disruptions in the general education setting, interfering with the student's learning and the learning of others. This study examined the effects of a mindfulness-based intervention on the presence of disruptive behavior…
Descriptors: Students with Disabilities, Emotional Response, Self Control, Behavior Problems
Aaron Y. Liu; Yaxian Xue; Qianyu Zhu; Qian Zhang – Psychology in the Schools, 2025
ABSTRACT Childhood maltreatment increases the risk of peer victimization in middle school students, yet the specific link between them remains unclear. This study used latent profile analysis (LPA) to identify maltreatment subtypes and examined how coping strategies moderated their relationship with different types of peer victimization, comparing…
Descriptors: Child Abuse, Victims, Peer Relationship, Middle School Students
Li Ping; Huang Xishan; Cui Xiaoyu; Luo Ruonan – Psychology in the Schools, 2025
Since the onset of the 21st century, the concept of nostalgia has evolved from individualized, emotionally driven private customization into a universal, societal, and national public phenomenon and cultural landscape, thereby constituting a form of "nostalgic culture" with widespread significance. Nostalgia refers to "a sentimental…
Descriptors: Memory, Emotional Response, Time, Middle School Students
Rene Brauer; Jarrod Ormiston; Simon Beausaert – Review of Educational Research, 2025
While society's demand for creativity is echoed across the world, teachers in higher education often struggle to support students' development of creative competencies. This transdisciplinary systematic literature review of 58 peer-reviewed empirical studies provides a comprehensive overview of creativity-fostering teacher behaviors identified…
Descriptors: Teacher Behavior, Creativity, College Faculty, College Instruction
Kamila Misiejuk; Jarle Bastesen; Tatiana Ershova – Innovations in Education and Teaching International, 2025
In this study, we explore the effects of self-reported or suspected generative artificial intelligence (GenAI) use in essay writing on peer assessment and revision patterns among a group of early student adopters. The data were collected from a higher education course, where students engaged in a group peer assessment activity, and analysed using…
Descriptors: Artificial Intelligence, Essays, Writing (Composition), Peer Evaluation
Mickie De Wet; Margarita Oja Da Silva; René Bohnsack – Innovations in Education and Teaching International, 2025
This study explores the use of large language models (LLMs) to generate feedback on essay-type assignments in Higher Education. Drawing on a seminal feedback framework, it examines the pedagogical and psychological effectiveness of LLM-generated feedback across three cohorts of MBA, MSc, and undergraduate students. Methods included linguistic…
Descriptors: Higher Education, College Students, Artificial Intelligence, Writing Evaluation

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