Ghosted Layers recovers pruned LLM performance via an unconstrained closed-form linear operator for boundary activation alignment, outperforming prior constrained training-free baselines.
Fluctuation-based adaptive structured pruning for large language models
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Ghosted Layers: Unconstrained Activation Alignment for Recovering Layer-Pruned LLMs
Ghosted Layers recovers pruned LLM performance via an unconstrained closed-form linear operator for boundary activation alignment, outperforming prior constrained training-free baselines.