Scalable and Explainable Learner-Video Interaction Prediction using Multimodal Large Language Models
Dominik Glandorf, Fares Fawzi, Tanja K\"aser

TL;DR
This paper introduces a scalable, interpretable model using multimodal large language models to predict and analyze student interactions with educational videos, aiding instructional design and theory validation.
Contribution
It presents a novel pipeline leveraging MLLMs and GPT-5 for predicting and interpreting fine-grained video interaction behaviors at scale.
Findings
Classifiers reliably predict interaction peaks from video content.
Models generalize across different academic fields.
Predictions encode interpretable, theory-relevant instructional concepts.
Abstract
Learners' use of video controls in educational videos provides implicit signals of cognitive processing and instructional design quality, yet the lack of scalable and explainable predictive models limits instructors' ability to anticipate such behavior before deployment. We propose a scalable, interpretable pipeline for predicting population-level watching, pausing, skipping, and rewinding behavior as proxies for cognitive load from video content alone. Our approach leverages multimodal large language models (MLLMs) to compute embeddings of short video segments and trains a neural classifier to identify temporally fine-grained interaction peaks. Drawing from multimedia learning theory on instructional design for optimal cognitive load, we code features of the video segments using GPT-5 and employ them as a basis for interpreting model predictions via concept activation vectors. We…
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