AI RESEARCH

Expressivity-Efficiency Tradeoffs for Hybrid Sequence Models

arXiv CS.LG

ArXi:2603.08859v1 Announce Type: new Hybrid sequence models--combining Transformer and state-space model layers--seek to gain the expressive versatility of attention as well as the computational efficiency of state-space model layers. Despite burgeoning interest in hybrid models, we lack a basic understanding of the settings where--and underlying mechanisms through which--they offer benefits over their constituent models. In this paper, we study this question, focusing on a broad family of core synthetic tasks.