SEApr 20

Raven: Rethinking Automated Assessment for Scratch Programs via Video-Grounded Evaluation

arXiv:2604.1782041.8h-index: 3
AI Analysis

For computing educators, Raven provides a scalable and reliable automated assessment method for open-ended, event-driven Scratch programs, reducing reliance on manual grading.

Raven introduces a video-grounded evaluation framework for Scratch programs that uses instructor-specified task-level video generation rules and LLMs to assess student submissions, outperforming prior tools in grading accuracy and robustness across 13 assignments with over 140 submissions.

Block-based programming environments such as Scratch are widely used in introductory computing education, yet scalable and reliable automated assessment remains elusive. Scratch programs are highly heterogeneous, event-driven, and visually grounded, which makes traditional assertion-based or test-based grading brittle and difficult to scale. As a result, assessment in real Scratch classrooms still relies heavily on manual inspection and delayed feedback, introducing inconsistency across instructors and limiting scalability. We present Raven, an automated assessment framework for Scratch that replaces program-specific state assertions with instructor-specified, task-level video generation rules shared across all student submissions. Raven integrates large language models with video analysis to evaluate whether a program's observed visual and interactive behaviors satisfy grading criteria, without requiring explicit test cases or predefined outputs. This design enables consistent evaluation despite substantial diversity in implementation strategies and interaction sequences. We evaluate Raven on 13 real Scratch assignments comprising over 140 student submissions with ground-truth labels from human graders. The results show that Raven significantly outperforms prior automated assessment tools in both grading accuracy and robustness across diverse programming styles. A classroom study with 30 students and 10 instructors further demonstrates strong user acceptance and practical applicability. Together, these findings highlight the effectiveness of task-level behavioral abstractions for scalable assessment of open-ended, event-driven programs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes