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An empirical study of the AI-driven platform in blended learning for Business English performance and student engagement

Sha Cao, Satha Phongsatha

2025Language Testing in Asia18 citationsDOIOpen Access PDF

Abstract

This study investigates the effects of Foreign Language Intelligent Teaching (FLIT)-integrated blended learning (FBL) on Business English proficiency and student engagement in a Chinese university context. Using a quasi-experimental design with 472 undergraduates, the research compares an experimental group (n = 240) exposed to AI-driven blended instruction with a control group (n = 232) taught via conventional methods. ANCOVA results indicated significantly higher post-test scores in the experimental group across reading (F(1, 466) = 26.90, p < .001, η2ₚ = .055), listening (F(1, 466) = 36.20, p < .001, η2ₚ = .072), writing (F(1, 466) = 47.70, p < .001, η2ₚ = .093), and speaking (F(1, 466) = 34.49, p < .001, η2ₚ = .069). Independent samples t-tests revealed significantly greater cognitive (t(470) = 3.73, p < .001, d = .344) and behavioral engagement (t(470) = 7.09, p < .001, d = .653) in the experimental group, while emotional engagement showed a marginal difference (Welch’s t(426) = − 1.95, p = .051, d = − .18). These findings provide robust empirical support for the pedagogical effectiveness of AI-enhanced instruction in improving Business English outcomes and learner engagement. This study explores innovative methods in language assessment and technology-enhanced language teaching by providing empirical validation of an AI-driven learning and assessment platform for Business English instruction.

Topics & Concepts

Blended learningBusiness EnglishPsychologyMathematics educationEmpirical researchPedagogyComputer scienceEducational technologyPhilosophyEpistemologyOnline Learning and AnalyticsTechnology-Enhanced Education StudiesE-Learning and COVID-19