AI RESEARCH
Causal Concept Graphs in LLM Latent Space for Stepwise Reasoning
arXiv CS.AI
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ArXi:2603.10377v1 Announce Type: cross Sparse autoencoders can localize where concepts live in language models, but not how they interact during multi-step reasoning. We propose Causal Concept Graphs (CCG): a directed acyclic graph over sparse, interpretable latent features, where edges capture learned causal dependencies between concepts. We combine task-conditioned sparse autoencoders for concept discovery with DAGMA-style differentiable structure learning for graph recovery and