CLOct 7, 2025

Mixture of Neuron Experts

arXiv:2510.05781v13 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses inference efficiency for large-scale MoE models, though it is incremental as it builds on existing MoE frameworks.

The paper tackles the inefficiency of Mixture of Experts (MoE) models by showing that activated parameters are highly sparse at inference, and proposes Mixture of Neuron Experts (MoNE), which matches traditional MoE performance while activating only 50% of MoE-layer parameters.

In this work, we first explore whether the parameters activated by the MoE layer remain highly sparse at inference. We perform a sparsification study on several representative MoE models. For each expert, we rank parameters by the magnitude of their activations from the gate projection and progressively prune the activated subset. Pruning up to 60% of parameters within that subset causes only negligible task-performance degradation; substantial drops occur only after more than 90% are removed. We further decompose experts into neuron-granular MoE and visualize their activation values, finding that most neuron activations are near zero. This observation motivates us to select only high-activation neuron experts during pretraining. Based on this insight, we propose Mixture of Neuron Experts (MoNE). MoNE achieves neuron-granular expert selection by only applying a simple top-k selection within each expert, incurs negligible latency, and requires no additional routing parameters or inter-expert communication. Extensive experiments demonstrate that MoNE matches traditional MoE performance while activating only 50% of the MoE-layer parameters, and it consistently outperforms traditional MoE when compared at equal numbers of activated parameters. These results suggest that MoNE is a practical approach to improving parameter utilization and inference efficiency in MoE-like models.

Foundations

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