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DOSE: Data Selection for Multi-Modal LLMs via Off-the-Shelf Models

About

High-quality and diverse multimodal data are essential for improving vision-language models (VLMs), yet existing datasets often contain noisy, redundant, and poorly aligned samples. To address these problems, data filtering is commonly used to enhance the efficiency and performance of multimodal learning, but it introduces extra computational cost because filtering models are usually trained on the same data they are meant to screen. To reduce this cost, we study DOSE, which explores whether off-the-shelf pretrained models that have never seen the target data can be used to select training samples for larger and stronger multimodal models without any task-specific training. Even without fine-tuning, these models can effectively assess text quality and image-text alignment to guide data selection. Based on this, we build a joint quality-alignment distribution and apply adaptive weighted sampling to select informative samples while maintaining long-tail diversity. This approach enhances data diversity, enabling models trained on DOSE-filtered data to match or surpass those trained on the full dataset on standard VQA and math benchmarks. Extensive experiments demonstrate its effectiveness, efficiency, and scalability.

Biao Wu, Yiwu Zhong, Meng Fang, Ling Chen• 2026

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringVizWiz
Accuracy46.5
1820
Text-based Visual Question AnsweringTextVQA
Accuracy54.4
962
Visual Question AnsweringVQA v2
Accuracy77.3
333
Scientific Question AnsweringScienceQA image
Accuracy67.2
259
Multimodal EvaluationMME
Total Score1.46e+3
67
Multimodal ReasoningMMBench
MMBench Accuracy (en)62.5
61
Multimodal Instruction FollowingLLaVA-Bench In-the-Wild
Score65.8
35
General Multimodal IntelligenceMultiple datasets Average
Relative Score96
12
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