Manifold Criterion Guided Transfer Learning via Intermediate Domain Generation
Lei Zhang, Shanshan Wang, Guang-Bin Huang, Wangmeng Zuo, Jian Yang,, David Zhang

TL;DR
This paper introduces a novel transfer learning approach called MCTL that uses a manifold criterion to generate intermediate domains, effectively reducing local and global discrepancies for improved domain adaptation performance.
Contribution
The paper proposes the manifold criterion (MC) for validating distribution matching and guides intermediate domain generation, enhancing transfer learning by considering local data structure.
Findings
MCTL outperforms state-of-the-art methods on benchmark visual transfer tasks.
The manifold criterion effectively guides domain generation and discrepancy reduction.
The simplified MCTL-S performs well under perfect domain generation assumptions.
Abstract
In many practical transfer learning scenarios, the feature distribution is different across the source and target domains (i.e. non-i.i.d.). Maximum mean discrepancy (MMD), as a domain discrepancy metric, has achieved promising performance in unsupervised domain adaptation (DA). We argue that MMD-based DA methods ignore the data locality structure, which, to some extent, would cause the negative transfer effect. The locality plays an important role in minimizing the nonlinear local domain discrepancy underlying the marginal distributions. For better exploiting the domain locality, a novel local generative discrepancy metric (LGDM) based intermediate domain generation learning called Manifold Criterion guided Transfer Learning (MCTL) is proposed in this paper. The merits of the proposed MCTL are four-fold: 1) the concept of manifold criterion (MC) is first proposed as a measure…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Cancer-related molecular mechanisms research · Multimodal Machine Learning Applications
