AI RESEARCH

Mechanistically Interpreting Compression in Vision-Language Models

arXiv CS.AI

ArXi:2603.25035v1 Announce Type: new Compressed vision-language models (VLMs) are widely used to reduce memory and compute costs, making them a suitable choice for real-world deployment. However, compressing these models raises concerns about whether internal computations and safety behaviors are preserved. In this work, we use causal circuit analysis and crosscoder-based feature comparisons to examine how pruning and quantization fundamentally change the internals across representative VLMs.