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Visual Instruction Tuning Aligns Modalities through Abstraction

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Visual instruction tuning effectively adapts a pre-trained Large Language Model (LLM) to process image information alongside text. Yet, it remains unclear how visual features are embedded into the layer-wise hierarchy of abstractions of the LLM backbone. Across a diverse set of vision-language architectures, we show that instruction tuning primarily serves as a bridge, embedding visual features directly into the intermediate semantic layers of the LLM, bypassing the early layers devoted to unimodal processing. With probing analyses and causal interventions, we show that these intermediate layers are the semantic core of vision-language processing and play a critical role in the performance on a broad set of multimodal benchmarks. In addition, by comparing the geometry of semantically equivalent visual and textual representations, we find that fine-tuning extends and strengthens the existing abstraction phase, aligning visual features with pre-existing textual ones. Finally, we confirm the functional role of this localized alignment by restricting fine-tuning to intermediate layers alone: this strategy preserves the performance of full fine-tuning on vision-centric benchmarks while reducing training time. Our results suggest that multimodal integration is a localized phenomenon driven by the repurposing of the internal abstraction engine of the LLM.

Luis Palacios, Lorenzo Basile, Diego Doimo, Alberto Cazzaniga• 2026

Related benchmarks

TaskDatasetResultRank
Object Hallucination EvaluationPOPE--
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Chart Question AnsweringChartQA--
371
Multiple-choice Question AnsweringMMLU-Pro
MMLU-Pro Overall Accuracy36.5
138
Question AnsweringScienceQA
Accuracy98.8
104
Multi-modal Question AnsweringMMMU
Accuracy55.6
91
Compositional ReasoningSugarCrepe
Overall Accuracy94.4
58
Image CaptioningFlickr30K
Normalized CIDEr (%)88.4
22
Multi-modal Question AnsweringMMStar
Accuracy68.1
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Compositional ReasoningARO--
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Image CaptioningCOCO
CIDEr Score (x100)135.7
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