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Main Authors: Dai, Ruiting, Tan, Yuqiao, Mo, Lisi, He, Tao, Qin, Ke, Liang, Shuang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.04693
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author Dai, Ruiting
Tan, Yuqiao
Mo, Lisi
He, Tao
Qin, Ke
Liang, Shuang
author_facet Dai, Ruiting
Tan, Yuqiao
Mo, Lisi
He, Tao
Qin, Ke
Liang, Shuang
contents Recently, prompt learning has garnered considerable attention for its success in various Vision-Language (VL) tasks. However, existing prompt-based models are primarily focused on studying prompt generation and prompt strategies with complete modality settings, which does not accurately reflect real-world scenarios where partial modality information may be missing. In this paper, we present the first comprehensive investigation into prompt learning behavior when modalities are incomplete, revealing the high sensitivity of prompt-based models to missing modalities. To this end, we propose a novel Multi-step Adaptive Prompt Learning (MuAP) framework, aiming to generate multimodal prompts and perform multi-step prompt tuning, which adaptively learns knowledge by iteratively aligning modalities. Specifically, we generate multimodal prompts for each modality and devise prompt strategies to integrate them into the Transformer model. Subsequently, we sequentially perform prompt tuning from single-stage and alignment-stage, allowing each modality-prompt to be autonomously and adaptively learned, thereby mitigating the imbalance issue caused by only textual prompts that are learnable in previous works. Extensive experiments demonstrate the effectiveness of our MuAP and this model achieves significant improvements compared to the state-of-the-art on all benchmark datasets
format Preprint
id arxiv_https___arxiv_org_abs_2409_04693
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MuAP: Multi-step Adaptive Prompt Learning for Vision-Language Model with Missing Modality
Dai, Ruiting
Tan, Yuqiao
Mo, Lisi
He, Tao
Qin, Ke
Liang, Shuang
Artificial Intelligence
Recently, prompt learning has garnered considerable attention for its success in various Vision-Language (VL) tasks. However, existing prompt-based models are primarily focused on studying prompt generation and prompt strategies with complete modality settings, which does not accurately reflect real-world scenarios where partial modality information may be missing. In this paper, we present the first comprehensive investigation into prompt learning behavior when modalities are incomplete, revealing the high sensitivity of prompt-based models to missing modalities. To this end, we propose a novel Multi-step Adaptive Prompt Learning (MuAP) framework, aiming to generate multimodal prompts and perform multi-step prompt tuning, which adaptively learns knowledge by iteratively aligning modalities. Specifically, we generate multimodal prompts for each modality and devise prompt strategies to integrate them into the Transformer model. Subsequently, we sequentially perform prompt tuning from single-stage and alignment-stage, allowing each modality-prompt to be autonomously and adaptively learned, thereby mitigating the imbalance issue caused by only textual prompts that are learnable in previous works. Extensive experiments demonstrate the effectiveness of our MuAP and this model achieves significant improvements compared to the state-of-the-art on all benchmark datasets
title MuAP: Multi-step Adaptive Prompt Learning for Vision-Language Model with Missing Modality
topic Artificial Intelligence
url https://arxiv.org/abs/2409.04693