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Main Authors: Becerra, Alvaro, Gomez, Diego, Cobos, Ruth
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.04729
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author Becerra, Alvaro
Gomez, Diego
Cobos, Ruth
author_facet Becerra, Alvaro
Gomez, Diego
Cobos, Ruth
contents Providing timely and actionable feedback on oral presentation slides is challenging in higher education, particularly in large classes where teachers cannot realistically deliver detailed formative feedback before students present. This paper introduces AISSA (AI-based Student Slides Analysis tool), a web-based system that combines large language models (LLMs) and Learning Analytics dashboards to support scalable, rubric-based feedback on presentation slides. AISSA allows students to upload their slide decks prior to an oral presentation and automatically receive quantitative scores and qualitative feedback based on teacher-defined evaluation rubrics. The system analyzes both slide-level features and slide content, generates structured feedback through an LLM (ChatGPT 5.2), and presents the results through interactive dashboards for students and teachers. We tested AISSA on a pilot deployment with 46 undergraduate students in a real academic setting. The results indicate that AISSA is technically reliable, economically feasible, and perceived by students as useful for iterative slide improvement. These findings suggest that combining LLM-based analysis with Learning Analytics dashboards is a promising approach for supporting formative feedback on presentation slides at scale.
format Preprint
id arxiv_https___arxiv_org_abs_2605_04729
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AISSA: Implementation and Deployment of an AI-based Student Slides Analysis tool for Academic Presentations
Becerra, Alvaro
Gomez, Diego
Cobos, Ruth
Human-Computer Interaction
Artificial Intelligence
Software Engineering
Providing timely and actionable feedback on oral presentation slides is challenging in higher education, particularly in large classes where teachers cannot realistically deliver detailed formative feedback before students present. This paper introduces AISSA (AI-based Student Slides Analysis tool), a web-based system that combines large language models (LLMs) and Learning Analytics dashboards to support scalable, rubric-based feedback on presentation slides. AISSA allows students to upload their slide decks prior to an oral presentation and automatically receive quantitative scores and qualitative feedback based on teacher-defined evaluation rubrics. The system analyzes both slide-level features and slide content, generates structured feedback through an LLM (ChatGPT 5.2), and presents the results through interactive dashboards for students and teachers. We tested AISSA on a pilot deployment with 46 undergraduate students in a real academic setting. The results indicate that AISSA is technically reliable, economically feasible, and perceived by students as useful for iterative slide improvement. These findings suggest that combining LLM-based analysis with Learning Analytics dashboards is a promising approach for supporting formative feedback on presentation slides at scale.
title AISSA: Implementation and Deployment of an AI-based Student Slides Analysis tool for Academic Presentations
topic Human-Computer Interaction
Artificial Intelligence
Software Engineering
url https://arxiv.org/abs/2605.04729