SEAP: Training-free Sparse Expert Activation Pruning Unlock the Brainpower of Large Language Models
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Large Language Models have achieved remarkable success across various natural language processing tasks, yet their high computational cost during inference remains a major bottleneck. This paper introduces Sparse Expert Activation Pruning (SEAP), a training-free pruning method that selectively retains task-relevant parameters to reduce inference overhead. Inspired by the clustering patterns of hidden states and activations in LLMs, SEAP identifies task-specific expert activation patterns and prunes the model while preserving task performance and enhancing computational efficiency. Experimental results demonstrate that SEAP significantly reduces computational overhead while maintaining competitive accuracy. Notably, at 50% pruning, SEAP surpasses both WandA and FLAP by over 20%, and at 20% pruning, it incurs only a 2.2% performance drop compared to the dense model. These findings highlight SEAP's scalability and effectiveness, making it a promising approach for optimizing large-scale LLMs.
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SHAPE: Coalition-Aware Expert Pruning for Sparse Mixture-of-Experts LLMs
SHAPE applies coalition-aware Shapley values to prune experts in MoE LLMs, retaining competitive accuracy at 20-40% pruning rates on Qwen3-30B-A3B, GPT-OSS-20B, and DeepSeek-V2-Lite without retraining.
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