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arxiv:2605.30265

LoMo: Local Modality Substitution for Deeper Vision-Language Fusion

Published on May 28
· Submitted by
Zhixiong Zhang (SII)
on May 29
Authors:
,
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Abstract

Vision-language models suffer from modality sensitivity due to training data bias, but a new data curation approach called Local Modality Substitution improves cross-modal representation alignment and reasoning performance.

AI-generated summary

Vision-Language Models (VLMs) have achieved substantial progress across a wide range of understanding and reasoning tasks, driven by large-scale image-text training aimed at multimodal fusion. Ideally, replacing a textual question with its rendered-image counterpart should leave model performance essentially unaffected. In practice, however, such modality substitution induces dramatic performance degradation. We attribute this "carrier sensitivity" issue to an inherent bias in current training corpora. Across prevalent datasets such as image captioning, VQA, OCR, and web-sourced interleaved data, text and images are typically organized into distinct and asymmetric roles, with text serving as linguistic queries and images as visual references. Such data bias leads VLMs to exhibit distinct preferences for information acquisition across different modalities. Consequently, VLMs fail to align representations of semantically equivalent content across textual and visual carriers, making model reasoning fragile under modality substitution. To address this, we propose Local Modality Substitution (LoMo), a lightweight, architecture-agnostic data curation paradigm designed to provide supervision for cross-modal representational invariance between semantically equivalent text and image carriers. LoMo achieves this by reformulating single-modality prompts into seamlessly interleaved multimodal sequences. It dynamically selects target text spans and recasts them as rendered images, thereby preserving the same semantics across "text, visual, text" carriers. Extensive experiments across 13 diverse multimodal benchmarks demonstrate that LoMo significantly improves overall multimodal reasoning and yields deeper cross-modal fusion. Specifically, it delivers consistent gains across foundational models, improving over standard SFT by 2.67 points on LLaVA-OneVision-1.5-8B and 2.82 points on Qwen3.5-9B.

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LoMo is a lightweight, architecture-agnostic data curation paradigm that mitigates the cross-carrier modality gap in VLMs by recasting selected text spans into rendered images, turning standard SFT into an implicit cross-modal alignment objective without architectural changes or inference overhead.

Project Page: https://maplebb.github.io/LoMo/page/
GitHub: https://github.com/Maplebb/LoMo

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