DS1 spectrogram: Generic Expert Coverage for Pruning SparseMixture-of-Experts Language Models

Generic Expert Coverage for Pruning SparseMixture-of-Experts Language Models

2607.01710

Authors

Sicheng Pan,Jiale Wang,Hai-tao Zheng,Hong-Gee Kim,Chunxia Ma

Abstract

Sparsely activated Mixture-of-Experts (MoE) language models contain substantial structured redundancy among routed experts, but pruning them without downstream calibration data remains challenging. Existing expert-pruning methods typically rely on a single aggregated importance score, which can bias the retained set toward experts favored by dominant calibration patterns.

We propose Generic TB-Coverage, a coverage-aware expert pruning method that uses only generic text corpora (WikiText2 and C4) for calibration. Instead of collapsing expert utility into one score, our method profiles per-expert utility separately on each corpus and enforces a fixed-budget coverage rule that preserves high-utility experts from each corpus before constructing the final pruning mask.

Across Qwen1.5-MoE-A2.7B and DeepSeek-MoE-16B-Base at 25%, 50%, and 75% retention budgets, our method improves average accuracy on six common zero-shot benchmarks over random pruning, REAP, and ExpertSparsity, while also reducing perplexity degradation on WikiText2 and C4. The gains are largest under aggressive pruning (25% and 50% retain), suggesting that preserving cross-corpus expert coverage is an effective generic-data prior for MoE pruning.

Our improvements hold with fixed pruning budgets and no downstream calibration data.

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