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GradMAP: Faster Layer Pruning with Gradient Metric and Projection Compensation

About

Large Language Models (LLMs) exhibit strong reasoning abilities, but their high computational costs limit their practical deployment. Recent studies reveal significant redundancy in LLMs layers, making layer pruning an active research topic. Layer pruning research primarily focuses on two aspects: measuring layer importance and recovering performance after pruning. Unfortunately, the present works fail to simultaneously maintain pruning performance and efficiency. In this study, we propose GradMAP, a faster layer pruning method with \textbf{Grad}ient \textbf{M}etric \textbf{A}nd \textbf{P}rojection compensation, which consists of two stages. In the first stage, we introduce a novel metric based on gradient magnitudes, enabling a global assessment of layer importance. Note that, it requires only a single backward propagation step per pruning decision, substantially enhancing pruning efficiency. In the second stage, we first analyze the layers with the largest mean shift resulting from pruning, and then incorporate a simple yet effective projection compensation matrix to correct this drift in one step. In this way, the degradation of model performance caused by layer pruning is effectively alleviated. Extensive experiments show that GradMAP outperforms previous layer pruning methods in both pruning speed (achieving an average $4\times$ speedup) and performance.

Hao Liu, Guangyan Li, Wensheng Zhang, Yongqiang Tang• 2026

Related benchmarks

TaskDatasetResultRank
Language ModelingWikiText2
Perplexity14.55
1875
ClassificationZero-shot Evaluation Suite (BoolQ, PIQA, HellaSwag, WinoGrande, ARC-e, ARC-c, OBQA)
Average Accuracy (Zero-Shot Suite)64.39
59
Zero-shot Common Sense ReasoningCommonsense Reasoning Benchmarks (BoolQ, PIQA, HellaSwag, WinoGrande, ARC-e, ARC-c, OBQA) zero-shot
Avg Accuracy48.92
20
ClassificationC3, CMNLI, CHID, BoolQ, WSC, HeSW, PIQA, CoQA, Race-M, Race-H, MMLU, CMMLU
C349.7
20
ClassificationClassification Benchmarks (test)
C336.16
5
Reasoning and Generative TasksMMLU, CMMLU, GSM8k, XSum, and StrategyQA (test)
MMLU Accuracy30.77
4
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