AI RESEARCH

Tracking Equivalent Mechanistic Interpretations Across Neural Networks

arXiv CS.CL

ArXi:2603.30002v1 Announce Type: cross Mechanistic interpretability (MI) is an emerging framework for interpreting neural networks. Given a task and model, MI aims to discover a succinct algorithmic process, an interpretation, that explains the model's decision process on that task. However, MI is difficult to scale and generalize. This stems in part from two key challenges: there is no precise notion of a valid interpretation; and, generating interpretations is often an ad hoc process.