AI RESEARCH

An Exploration of Mamba for Speech Self-Supervised Models

arXiv CS.CL

ArXi:2506.12606v2 Announce Type: replace While Mamba has nstrated strong performance in language modeling, its potential as a speech self-supervised learning (SSL) model remains underexplored, with prior studies limited to isolated tasks. To address this, we explore Mamba-based HuBERT models as alternatives to Transformer-based SSL architectures. Leveraging the linear-time Selective State Space, these models enable fine-tuning on long-context ASR with significantly lower compute. Moreover, they show superior performance when fine-tuned for streaming