AI RESEARCH

Predicting LLM Compression Degradation from Spectral Statistics

arXiv CS.LG

ArXi:2604.18085v1 Announce Type: new Matrix-level low-rank compression is a promising way to reduce the cost of large language models, but running compression and evaluating the resulting models on language tasks can be prohibitively expensive. Can compression-induced degradation be predicted before committing to this compute? We systematically analyze the Qwen3 and Gemma3 model families across four representative low-rank compression methods: vanilla SVD, two ASVD variants, and.