大型模型的多任务和多模态神经调整

Hao Sun, Yu Song, Jihong Hu, Yen-Wei Chen, Lanfen Lin
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引用次数: 0

摘要

近年来,大规模多模态模型在各个领域都表现出令人印象深刻的能力。然而,让这些模型同时有效地执行多种多模态任务仍然是一个重大挑战。为了解决这个问题,我们引入了一种称为神经调谐的新型调谐方法,旨在同时处理多种多模态任务,包括推理分割、指代分割、图像字幕和文本到图像生成。神经调谐模拟了人脑中的稀疏分布式表示,即每个任务只激活特定的神经元子集。此外,我们还提出了一个新的基准--MMUD,其中每个样本都标注了多个任务标签。通过在 MMUD 基准上对预训练的大型模型进行神经调谐,我们以精简高效的方式实现了同步任务处理。所有模型、代码和数据集都将在发表后公开,以促进该领域的进一步研究和开发。
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Multitask and Multimodal Neural Tuning for Large Models
In recent years, large-scale multimodal models have demonstrated impressive capabilities across various domains. However, enabling these models to effectively perform multiple multimodal tasks simultaneously remains a significant challenge. To address this, we introduce a novel tuning method called neural tuning, designed to handle diverse multimodal tasks concurrently, including reasoning segmentation, referring segmentation, image captioning, and text-to-image generation. Neural tuning emulates sparse distributed representation in human brain, where only specific subsets of neurons are activated for each task. Additionally, we present a new benchmark, MMUD, where each sample is annotated with multiple task labels. By applying neural tuning to pretrained large models on the MMUD benchmark, we achieve simultaneous task handling in a streamlined and efficient manner. All models, code, and datasets will be publicly available after publication, facilitating further research and development in this field.
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