Author
Abstract
The integration of Artificial Intelligence (AI) into the pedagogical framework of Open and Distance Learning (ODL) represents a transformative shift in how educational institutions manage assessment at scale. ODL environments are characterized by geographical separation between instructors and learners, often involving massive cohorts that make timely, personalized feedback a significant logistical challenge. Automated Essay Scoring (AES) systems, or AI essay graders, utilize Natural Language Processing (NLP) and machine learning algorithms to evaluate student writing, offering the promise of immediate feedback and reduced administrative burden. However, the "interrogation" of this potential requires a balanced examination of technical efficacy, pedagogical validity, and ethical implications, such as algorithmic bias and the reduction of complex human expression to quantifiable data points. This study specifically, investigates the efficacy, challenges, and transformative potential of implementing Automated Essay Scoring (AES) systems within Open and Distance Learning (ODL) frameworks. As ODL institutions face increasing enrolment and the subsequent demand for scalable assessment solutions, Artificial Intelligence (AI) offers a mechanism for providing instantaneous, standardized feedback. However, the transition from human-centric grading to algorithmic evaluation necessitates a rigorous interrogation of pedagogical integrity. Utilizing a mixed-methods approach, the study evaluates the correlation between AI-generated marks and human rater scores across diverse disciplinary contexts. Key areas of inquiry include the ability of AI to detect nuanced argumentative structures, the potential for "algorithmic bias" against non-native English speakers, and the impact of immediate feedback on student retention and motivation in asynchronous environments. Preliminary findings suggest that while AI graders significantly enhance administrative efficiency and provide valuable formative support, they struggle with high-level semantic coherence and creative synthesis. The study concludes by proposing a "Human-in-the-Loop" (HITL) model, suggesting that AI should serve as a scaffold for human expertise rather than a total replacement, ensuring that the "distance" in ODL does not result in a de-personalized educational experience.
Suggested Citation
Theodore Osagie Iyere, 2026.
"Interrogating the Potential of Using AI Essay Grader in Open and Distance Learning,"
International Journal of Research and Scientific Innovation, International Journal of Research and Scientific Innovation (IJRSI), vol. 13(13), pages 65-75, February.
Handle:
RePEc:bjc:journl:v:13:y:2026:i:13:p:65-75
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