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Main Authors: Zhang, Xiaofeng, Zeng, Fanshuo, Quan, Yihao, Hui, Zheng, Yao, Jiawei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.09817
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author Zhang, Xiaofeng
Zeng, Fanshuo
Quan, Yihao
Hui, Zheng
Yao, Jiawei
author_facet Zhang, Xiaofeng
Zeng, Fanshuo
Quan, Yihao
Hui, Zheng
Yao, Jiawei
contents Multimodal large language models have experienced rapid growth, and numerous different models have emerged. The interpretability of LVLMs remains an under-explored area. Especially when faced with more complex tasks such as chain-of-thought reasoning, its internal mechanisms still resemble a black box that is difficult to decipher. By studying the interaction and information flow between images and text, we noticed that in models such as LLaVA1.5, image tokens that are semantically related to text are more likely to have information flow convergence in the LLM decoding layer, and these image tokens receive higher attention scores. However, those image tokens that are less relevant to the text do not have information flow convergence, and they only get very small attention scores. To efficiently utilize the image information, we propose a new image token reduction method, Simignore, which aims to improve the complex reasoning ability of LVLMs by computing the similarity between image and text embeddings and ignoring image tokens that are irrelevant and unimportant to the text. Through extensive experiments, we demonstrate the effectiveness of our method for complex reasoning tasks. The paper's source code can be accessed from \url{https://github.com/FanshuoZeng/Simignore}.
format Preprint
id arxiv_https___arxiv_org_abs_2412_09817
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Multimodal Large Language Models Complex Reason via Similarity Computation
Zhang, Xiaofeng
Zeng, Fanshuo
Quan, Yihao
Hui, Zheng
Yao, Jiawei
Computer Vision and Pattern Recognition
Computation and Language
Multimodal large language models have experienced rapid growth, and numerous different models have emerged. The interpretability of LVLMs remains an under-explored area. Especially when faced with more complex tasks such as chain-of-thought reasoning, its internal mechanisms still resemble a black box that is difficult to decipher. By studying the interaction and information flow between images and text, we noticed that in models such as LLaVA1.5, image tokens that are semantically related to text are more likely to have information flow convergence in the LLM decoding layer, and these image tokens receive higher attention scores. However, those image tokens that are less relevant to the text do not have information flow convergence, and they only get very small attention scores. To efficiently utilize the image information, we propose a new image token reduction method, Simignore, which aims to improve the complex reasoning ability of LVLMs by computing the similarity between image and text embeddings and ignoring image tokens that are irrelevant and unimportant to the text. Through extensive experiments, we demonstrate the effectiveness of our method for complex reasoning tasks. The paper's source code can be accessed from \url{https://github.com/FanshuoZeng/Simignore}.
title Enhancing Multimodal Large Language Models Complex Reason via Similarity Computation
topic Computer Vision and Pattern Recognition
Computation and Language
url https://arxiv.org/abs/2412.09817