AI RESEARCH

Measuring Cross-Modal Synergy: A Benchmark for VLM Explainability

arXiv CS.AI

ArXi:2605.22168v1 Announce Type: new Vision-Language Models (VLMs) map complex visual inputs to semantic spaces, but interpreting the cross-modal reasoning of VLMs currently relies on post-hoc explainers evaluated via unimodal perturbation metrics. We expose a limitation in this paradigm: because multimodal datasets contain language priors and modality biases, VLMs frequently exhibit cross-modal redundancy, allowing them to answer visual queries using text alone.