AI RESEARCH

Effective Distillation to Hybrid xLSTM Architectures

arXiv CS.LG

ArXi:2603.15590v1 Announce Type: new There have been numerous attempts to distill quadratic attention-based large language models (LLMs) into sub-quadratic linearized architectures. However, despite extensive research, such distilled models often fail to match the performance of their teacher LLMs on various downstream tasks. We set out the goal of lossless distillation, which we define in terms of tolerance-corrected Win-and-Tie rates between student and teacher on sets of tasks. To this end, we