English

Analyzing Modular Approaches for Visual Question Decomposition

Computer Vision and Pattern Recognition 2023-11-14 v1 Computation and Language

Abstract

Modular neural networks without additional training have recently been shown to surpass end-to-end neural networks on challenging vision-language tasks. The latest such methods simultaneously introduce LLM-based code generation to build programs and a number of skill-specific, task-oriented modules to execute them. In this paper, we focus on ViperGPT and ask where its additional performance comes from and how much is due to the (state-of-art, end-to-end) BLIP-2 model it subsumes vs. additional symbolic components. To do so, we conduct a controlled study (comparing end-to-end, modular, and prompting-based methods across several VQA benchmarks). We find that ViperGPT's reported gains over BLIP-2 can be attributed to its selection of task-specific modules, and when we run ViperGPT using a more task-agnostic selection of modules, these gains go away. Additionally, ViperGPT retains much of its performance if we make prominent alterations to its selection of modules: e.g. removing or retaining only BLIP-2. Finally, we compare ViperGPT against a prompting-based decomposition strategy and find that, on some benchmarks, modular approaches significantly benefit by representing subtasks with natural language, instead of code.

Keywords

Cite

@article{arxiv.2311.06411,
  title  = {Analyzing Modular Approaches for Visual Question Decomposition},
  author = {Apoorv Khandelwal and Ellie Pavlick and Chen Sun},
  journal= {arXiv preprint arXiv:2311.06411},
  year   = {2023}
}

Comments

Published at EMNLP 2023 (Main Conference). Source code: https://github.com/brown-palm/visual-question-decomposition

R2 v1 2026-06-28T13:17:50.320Z