We propose a novel VQA dataset, BloomVQA, to facilitate comprehensive evaluation of large vision-language models on comprehension tasks. Unlike current benchmarks that often focus on fact-based memorization and simple reasoning tasks without theoretical grounding, we collect multiple-choice samples based on picture stories that reflect different levels of comprehension, as laid out in Bloom's Taxonomy, a classic framework for learning assessment widely adopted in education research. Our data maps to a novel hierarchical graph representation which enables automatic data augmentation and novel measures characterizing model consistency. We perform graded evaluation and reliability analysis on recent multi-modal models. In comparison to low-level tasks, we observe decreased performance on tasks requiring advanced comprehension and cognitive skills with up to 38.0\% drop in VQA accuracy. In comparison to earlier models, GPT-4V demonstrates improved accuracy over all comprehension levels and shows a tendency of bypassing visual inputs especially for higher-level tasks. Current models also show consistency patterns misaligned with human comprehension in various scenarios, demonstrating the need for improvement based on theoretically-grounded criteria.
@article{arxiv.2312.12716,
title = {BloomVQA: Assessing Hierarchical Multi-modal Comprehension},
author = {Yunye Gong and Robik Shrestha and Jared Claypoole and Michael Cogswell and Arijit Ray and Christopher Kanan and Ajay Divakaran},
journal= {arXiv preprint arXiv:2312.12716},
year = {2024}
}
Comments
Accepted by ACL Findings (2024). Dataset available at https://huggingface.co/datasets/ygong/BloomVQA