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$qs$ 不等式:推論におけるMixture-of-Expertsの二重ペナルティの定量化

arXiv cs.LG / 2026/3/11

Ideas & Deep AnalysisModels & Research

要点

  • Mixture-of-Experts (MoE) モデルは高い訓練効率を提供するが、推論時にはエキスパートルーティングの断片化とKVキャッシュの高帯域メモリの減少により二重のペナルティを受ける。
  • 著者らはこの構造的な不利を$qs$不等式として形式化し、スパース性と品質同等性の要素を組み合わせてMoEが密モデルに比べて劣る状況を予測する。
  • DeepSeek-V3、Qwen3-235B、Grok-1、Switch-Cといった先端モデルでの評価により、再利用断片化が広範なアーキテクチャ的問題であることを示し、密モデルが長いコンテキスト長で著しく高いスループットを達成することが明らかになった。
  • 結果は、MoEの訓練時のFLOP効率が推論時の効率に直接つながらず、とくに長いコンテキストに対しては蒸留して密モデルにするほうが推論展開には適していることを示唆している。
  • 本研究は大規模推論に対するMoEの限界を浮き彫りにし、スパースモデルと密モデルのアーキテクチャ的トレードオフを評価する新たな枠組みを提供する。

Computer Science > Machine Learning

arXiv:2603.08960 (cs)
[Submitted on 9 Mar 2026]

Title:The $qs$ Inequality: Quantifying the Double Penalty of Mixture-of-Experts at Inference

View a PDF of the paper titled The $qs$ Inequality: Quantifying the Double Penalty of Mixture-of-Experts at Inference, by Vignesh Adhinarayanan and Nuwan Jayasena
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Abstract:Mixture-of-Experts (MoE) models deliver high quality at low training FLOPs, but this efficiency often vanishes at inference. We identify a double penalty that structurally disadvantages MoE architectures during decoding: first, expert routing fragments microbatches and reduces weight reuse; second, massive resident expert pools reduce high-bandwidth memory (HBM) headroom for the KV cache. This phenomenon, formalized as reuse fragmentation, pushes feed-forward networks (FFNs) into a bandwidth-bound regime, especially at long context lengths.
We introduce the $qs$ inequality, a predictive criterion that identifies when MoE is structurally disadvantaged relative to a quality-matched dense model. This criterion unifies sparsity ($s$), the fraction of parameters activated per token, and the quality-equivalence factor ($q$), the size multiplier required for a dense model to match MoE performance. Our evaluation across frontier models including DeepSeek-V3, Qwen3-235B, Grok-1, and Switch-C demonstrates that this fragmentation is a general architectural phenomenon. For DeepSeek-V3 at 128k context, this results in a 4.5x throughput advantage for a quality-matched dense baseline. Crucially, massive architectures like Switch-C can become infeasible on cluster sizes where a quality-matched dense model remains viable.
Our results suggest that training-time FLOP efficiency is an incomplete proxy for inference-time performance in long-context serving. They also indicate that MoE may be best viewed as a training-time optimization, with distillation into dense models as a possible path toward inference-efficient deployment.
Comments:
Subjects: Machine Learning (cs.LG); Hardware Architecture (cs.AR); Distributed, Parallel, and Cluster Computing (cs.DC); Performance (cs.PF)
MSC classes: 68T07, 68M20
ACM classes: I.2.6; C.4; C.1.2
Cite as: arXiv:2603.08960 [cs.LG]
  (or arXiv:2603.08960v1 [cs.LG] for this version)
  https://doi.org/10.48550/arXiv.2603.08960
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arXiv-issued DOI via DataCite

Submission history

From: Vignesh Adhinarayanan [view email]
[v1] Mon, 9 Mar 2026 21:48:04 UTC (43 KB)
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