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Main Authors: Ma, Yiwei, Xu, Guohai, Sun, Xiaoshuai, Ji, Jiayi, Lou, Jie, Zhang, Debing, Ji, Rongrong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.20502
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author Ma, Yiwei
Xu, Guohai
Sun, Xiaoshuai
Ji, Jiayi
Lou, Jie
Zhang, Debing
Ji, Rongrong
author_facet Ma, Yiwei
Xu, Guohai
Sun, Xiaoshuai
Ji, Jiayi
Lou, Jie
Zhang, Debing
Ji, Rongrong
contents Visual instruction tuning (VIT) has emerged as a crucial technique for enabling multi-modal large language models (MLLMs) to follow user instructions adeptly. Yet, a significant gap persists in understanding the attributes of high-quality instruction tuning data and frameworks for its automated selection. To address this, we introduce MLLM-Selector, an automated approach that identifies valuable data for VIT by weighing necessity and diversity. Our process starts by randomly sampling a subset from the VIT data pool to fine-tune a pretrained model, thus creating a seed model with an initial ability to follow instructions. Then, leveraging the seed model, we calculate necessity scores for each sample in the VIT data pool to identify samples pivotal for enhancing model performance. Our findings underscore the importance of mixing necessity and diversity in data choice, leading to the creation of MLLM-Selector, our methodology that fuses necessity scoring with strategic sampling for superior data refinement. Empirical results indicate that within identical experimental conditions, MLLM-Selector surpasses LLaVA-1.5 in some benchmarks with less than 1% of the data and consistently exceeds performance across all validated benchmarks when using less than 50%.
format Preprint
id arxiv_https___arxiv_org_abs_2503_20502
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MLLM-Selector: Necessity and Diversity-driven High-Value Data Selection for Enhanced Visual Instruction Tuning
Ma, Yiwei
Xu, Guohai
Sun, Xiaoshuai
Ji, Jiayi
Lou, Jie
Zhang, Debing
Ji, Rongrong
Computer Vision and Pattern Recognition
Visual instruction tuning (VIT) has emerged as a crucial technique for enabling multi-modal large language models (MLLMs) to follow user instructions adeptly. Yet, a significant gap persists in understanding the attributes of high-quality instruction tuning data and frameworks for its automated selection. To address this, we introduce MLLM-Selector, an automated approach that identifies valuable data for VIT by weighing necessity and diversity. Our process starts by randomly sampling a subset from the VIT data pool to fine-tune a pretrained model, thus creating a seed model with an initial ability to follow instructions. Then, leveraging the seed model, we calculate necessity scores for each sample in the VIT data pool to identify samples pivotal for enhancing model performance. Our findings underscore the importance of mixing necessity and diversity in data choice, leading to the creation of MLLM-Selector, our methodology that fuses necessity scoring with strategic sampling for superior data refinement. Empirical results indicate that within identical experimental conditions, MLLM-Selector surpasses LLaVA-1.5 in some benchmarks with less than 1% of the data and consistently exceeds performance across all validated benchmarks when using less than 50%.
title MLLM-Selector: Necessity and Diversity-driven High-Value Data Selection for Enhanced Visual Instruction Tuning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.20502