E2MPL:An Enduring and Efficient Meta Prompt Learning Framework for Few-shot Unsupervised Domain Adaptation
Wanqi Yang, Haoran Wang, Lei Wang, Ge Song, Ming Yang, Yang Gao

TL;DR
The paper introduces E2MPL, a novel meta prompt learning framework utilizing CLIP for few-shot unsupervised domain adaptation, achieving faster, more stable, and more accurate adaptation across diverse tasks.
Contribution
It proposes a bilevel optimization-based meta prompt learning framework with domain-shared and task-specific prompts, enabling rapid and stable adaptation in FS-UDA.
Findings
Improves accuracy by at least 15.4% on DomainNet
Reduces adaptation time by 68.5% on average
Demonstrates more stable performance across 3600 test tasks
Abstract
Few-shot unsupervised domain adaptation (FS-UDA) leverages a limited amount of labeled data from a source domain to enable accurate classification in an unlabeled target domain. Despite recent advancements, current approaches of FS-UDA continue to confront a major challenge: models often demonstrate instability when adapted to new FS-UDA tasks and necessitate considerable time investment. To address these challenges, we put forward a novel framework called Enduring and Efficient Meta-Prompt Learning (E2MPL) for FS-UDA. Within this framework, we utilize the pre-trained CLIP model as the backbone of feature learning. Firstly, we design domain-shared prompts, consisting of virtual tokens, which primarily capture meta-knowledge from a wide range of meta-tasks to mitigate the domain gaps. Secondly, we develop a task prompt learning network that adaptively learns task-specific specific…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
MethodsContrastive Language-Image Pre-training · Balanced Selection
