Capability-Guided Compression: Toward Interpretability-Aware Budget Allocation for Large Language Models
arXiv cs.LG / 3/18/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper identifies capability-blind compression as a fundamental limitation in allocating compression budgets without considering the functional roles of model components.
- It introduces Capability-Guided Compression (CGC), using Sparse Autoencoder-derived capability density maps to allocate differential budgets across transformer components based on a formally defined capability density metric.
- The authors prove that components with higher capability density have lower structural redundancy and reach their phase transition points at lower compression ratios, enabling a pre-compression mechanism for component-level phase transition prediction.
- Experiments on GPT-2 Medium show capability density is orthogonal to Wanda importance scores, indicating a novel compression signal, and they report a negative result on PPL-based compression comparisons while highlighting the need for suitable test beds.
Related Articles

Astral to Join OpenAI
Dev.to

PearlOS. We gave swarm intelligence a local desktop environment and code control to self-evolve. Has been pretty incredible to see so far. Open source and free if you want your own.
Reddit r/LocalLLaMA

Why Data is Important for LLM
Dev.to

The Inference Market Is Consolidating. Agent Payments Are Still Nobody's Problem.
Dev.to

YouTube's Deepfake Shield for Politicians Changes Evidence Forever
Dev.to