AI RESEARCH
PLOT: Progressive Localization via Optimal Transport in Neural Causal Abstraction
arXiv CS.AI
•
ArXi:2605.06979v1 Announce Type: cross Causal abstraction offers a principled framework for mechanistic interpretability, aligning a high-level causal model with the low-level computation realized by a neural network through counterfactual intervention analysis. Existing methods such as distributed alignment search (DAS) learn expressive subspace interventions, but the relevant neural site is unknown a priori, so finding a handle requires a computationally burdensome search over candidate sites. We.