Transforming Pedagogical Processes with Artificial Intelligence: Implications for Learner Engagement and Classroom Dynamics
Neha Goyal *
Amity Institute of Behavioural and Allied Sciences, Amity University, Noida, Uttar Pradesh, India.
*Author to whom correspondence should be addressed.
Abstract
Artificial intelligence (AI) technologies are increasingly integrated into educational settings, with claims of enhanced student engagement and improved classroom management. However, the empirical evidence supporting these claims requires systematic synthesis. This systematic review examines the impact of AI integration on student engagement (behavioral, emotional, cognitive, and social dimensions) and classroom management outcomes in K-12 and higher education settings. Following PRISMA 2020 guidelines, a comprehensive literature search was conducted across multiple databases. Inclusion criteria comprised peer-reviewed empirical studies published between 2015-2026 examining AI interventions in academic settings with measurable student engagement or classroom management outcomes. Studies were screened independently, and data were extracted systematically. Risk of bias was assessed using study-specific criteria. From 776 identified records, 147 unique studies remained after deduplication. Following title/abstract screening and full-text review, 30 studies met inclusion criteria, encompassing 3,847+ participants across diverse educational contexts. AI technologies included intelligent tutoring systems (n=6), gamification platforms (n=4), facial recognition systems (n=3), conversational AI/chatbots (n=8), adaptive learning systems (n=5), and multimodal AI systems (n=4). Student engagement outcomes showed predominantly positive effects; behavioral engagement increased by 10-50% across studies, emotional engagement improved significantly with AI-mediated instruction, and cognitive engagement enhanced through personalized learning pathways. Classroom management benefits included reduced teacher workload, improved real-time monitoring capabilities, and enhanced behavioral interventions. AI integration demonstrates promising potential for enhancing student engagement and supporting classroom management across educational levels. The evidence suggests that personalized, adaptive AI systems with real-time feedback mechanisms are most effective. However, significant methodological heterogeneity, ethical concerns regarding data privacy and algorithmic bias,and implementation challenges limit generalizability. Future research should prioritize rigorous experimental designs, long-term outcome assessment, and equity considerations in AI deployment.
Keywords: Artificial intelligence, student engagement, classroom management, educational technology, intelligent tutoring systems, personalized learning, systematic review, PRISMA