AI RESEARCH

SCoCCA: Multi-modal Sparse Concept Decomposition via Canonical Correlation Analysis

arXiv CS.CV

ArXi:2603.13884v1 Announce Type: new Interpreting the internal reasoning of vision-language models is essential for deploying AI in safety-critical domains. Concept-based explainability provides a human-aligned lens by representing a model's behavior through semantically meaningful components. However, existing methods are largely restricted to images and overlook the cross-modal interactions. Text-image embeddings, such as those produced by CLIP, suffer from a modality gap, where visual and textual features follow distinct distributions, limiting interpretability.