ArXiv TLDR

AISSA: Implementation and Deployment of an AI-based Student Slides Analysis tool for Academic Presentations

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2605.04729

Alvaro Becerra, Diego Gomez, Ruth Cobos

cs.HCcs.AIcs.SE

TLDR

AISSA is an AI-powered web tool using LLMs and analytics to provide scalable, rubric-based feedback on student presentation slides.

Key contributions

  • Introduces AISSA, a web-based tool for scalable, rubric-based feedback on presentation slides.
  • Combines LLMs (ChatGPT 5.2) with Learning Analytics dashboards for automated scoring and qualitative feedback.
  • Analyzes both slide-level features and content, providing structured feedback to students.
  • Pilot deployment showed AISSA is reliable, feasible, and useful for iterative slide improvement.

Why it matters

This paper addresses the challenge of providing timely feedback on presentation slides in large classes. AISSA offers a scalable solution by leveraging AI and analytics to automate feedback generation. This approach could significantly enhance learning outcomes and reduce teacher workload in higher education.

Original Abstract

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.

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