Partial Domain Adaptation via Importance Sampling-based Shift Correction
Cheng-Jun Guo, Chuan-Xian Ren, You-Wei Luo, Xiao-Lin Xu, Hong Yan

TL;DR
This paper introduces IS$^2$C, a novel importance sampling-based method for partial domain adaptation that improves transfer learning by better characterizing latent structures and reducing overfitting, backed by theoretical guarantees and extensive experiments.
Contribution
The paper proposes a new importance sampling-based shift correction method with theoretical guarantees and an efficient distribution alignment technique for partial domain adaptation.
Findings
IS$^2$C improves generalization in PDA tasks.
The method outperforms existing approaches on benchmark datasets.
Theoretical analysis links shift correction to generalization error.
Abstract
Partial domain adaptation (PDA) is a challenging task in real-world machine learning scenarios. It aims to transfer knowledge from a labeled source domain to a related unlabeled target domain, where the support set of the source label distribution subsumes the target one. Previous PDA works managed to correct the label distribution shift by weighting samples in the source domain. However, the simple reweighing technique cannot explore the latent structure and sufficiently use the labeled data, and then models are prone to over-fitting on the source domain. In this work, we propose a novel importance sampling-based shift correction (ISC) method, where new labeled data are sampled from a built sampling domain, whose label distribution is supposed to be the same as the target domain, to characterize the latent structure and enhance the generalization ability of the model. We provide…
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