判别式
计算机科学
人工智能
域适应
水准点(测量)
代表(政治)
一致性(知识库)
可转让性
维数(图论)
机器学习
模式识别(心理学)
领域(数学分析)
透视图(图形)
特征学习
班级(哲学)
无监督学习
学习迁移
钥匙(锁)
适应(眼睛)
语义学(计算机科学)
边距(机器学习)
缩小
计算
桥(图论)
期限(时间)
概率逻辑
数据挖掘
作者
Wenwen Qiang,Ziyin Gu,Lingyu Si,Jiangmeng Li,Changwen Zheng,Fuchun Sun,Hui Hua Xiong
标识
DOI:10.1109/tpami.2025.3649294
摘要
In this paper, we addressed the limitation of relying solely on distribution alignment and source-domain empirical risk minimization in Unsupervised Domain Adaptation (UDA). Our information-theoretic analysis showed that this standard adversarial-based framework neglects the discriminability of target-domain features, leading to suboptimal performance. To bridge this theoretical-practical gap, we defined "good representation learning" as guaranteeing both transferability and discriminability, and proved that an additional loss term targeting target-domain discriminability is necessary. Building on these insights, we proposed a novel adversarial-based UDA framework that explicitly integrates a domain alignment objective with a discriminability-enhancing constraint. Instantiated as Domain-Invariant Representation Learning with Global and Local Consistency (RLGLC), our method leverages Asymmetrically-Relaxed Wasserstein of Wasserstein Distance (AR-WWD) to address class imbalance and semantic dimension weighting, and employs a local consistency mechanism to preserve fine-grained target-domain discriminative information. Extensive experiments across multiple benchmark datasets demonstrate that RLGLC consistently surpasses state-of-the-art methods, confirming the value of our theoretical perspective and underscoring the necessity of enforcing both transferability and discriminability in adversarial-based UDA.
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