AI RESEARCH

Sparse Crosscoders for diffing MoEs and Dense models

arXiv CS.LG

ArXi:2603.05805v1 Announce Type: new Mixture of Experts (MoE) achieve parameter-efficient scaling through sparse expert routing, yet their internal representations remain poorly understood compared to dense models. We present a systematic comparison of MoE and dense model internals using crosscoders, a variant of sparse autoencoders, that jointly models multiple activation spaces. We train 5-layer dense and MoEs (equal active parameters) on 1B tokens across code, scientific text, and english stories.