ExplorerComputational LinguisticsNLP
Research PaperResearchia:202606.17009

Variable-Width Transformers

Zhaofeng Wu

Abstract

Scaling model size, specifically depth and width, has driven significant progress in transformer-based language models. However, most architectures maintain a constant width across all layers, allocating a fixed parameter and computation budget evenly despite different layers potentially playing distinct computational roles. In this work, we empirically investigate nonuniform capacity allocation across network depth by proposing a $\times$-shaped > <former architecture. This design maintains wid...

Submitted: June 17, 2026Subjects: NLP; Computational Linguistics

Description / Details

Scaling model size, specifically depth and width, has driven significant progress in transformer-based language models. However, most architectures maintain a constant width across all layers, allocating a fixed parameter and computation budget evenly despite different layers potentially playing distinct computational roles. In this work, we empirically investigate nonuniform capacity allocation across network depth by proposing a ×\times-shaped > <former architecture. This design maintains wider early and late layers while narrowing the middle layers, utilizing a parameter-free residual resizing mechanism. Across decoder-only language models ranging from 200M to 2B parameters (dense) and 3B parameters (MoE), our > <former consistently outperforms parameter-matched uniform baselines on language modeling loss. By reducing the average layer width, this architecture also requires fewer overall FLOPs (22% reduction under fitted loss-matched scaling curves) and smaller KV cache memory and I/O cost (15% reduction). In analysis, we show that this bottleneck structure results in qualitatively different representations in residual streams. Overall, our results demonstrate that nonuniform width allocation can result in more resource-optimal scaling of language models.


Source: arXiv:2606.18246v1 - http://arxiv.org/abs/2606.18246v1 PDF: https://arxiv.org/pdf/2606.18246v1 Original Link: http://arxiv.org/abs/2606.18246v1

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Submission Info
Date:
Jun 17, 2026
Topic:
Computational Linguistics
Area:
NLP
Comments:
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