Multi-source domain adaptation (MSDA) learns to predict the labels in target domain data, under the setting that data from multiple source domains are labelled and data from the target domain are unlabelled. Most methods for this task focus on learning invariant representations across domains. However, their success relies heavily on the assumption that the label distribution remains consistent across domains, which may not hold in general real-world problems. In this paper, we propose a new and more flexible assumption, termed \textit{latent covariate shift}, where a latent content variable $\mathbf{z}_c$ and a latent style variable $\mathbf{z}_s$ are introduced in the generative process, with the marginal distribution of $\mathbf{z}_c$ ch...
We propose to learn an invariant causal predictor that is robust to distributional shifts, in the su...
Multi-Source Domain Adaptation (MSDA) focuses on transferring the knowledge from multiple source dom...
Domain generalization aims to apply knowledge gained from multiple labeled source domains to unseen ...
© 2016 by the author(s). Domain adaptation arises in supervised learning when the training (source d...
A key problem in domain adaptation is determining what to transfer across different domains. We prop...
This paper is concerned with the problem of domain adaptation with multiple sources from a causal po...
Domain adaptation (DA) arises as an important problem in statistical machine learning when the sourc...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Despite development in many areas of machine learning in recent decades, still, changing data source...
The aim of domain adaptation algorithms is to establish a learner, trained on labeled data from a so...
We consider a case of covariate shift where prior causal inference or expert knowledge has identifie...
Recent empirical studies on domain generalization (DG) have shown that DG algorithms that perform we...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
We propose to learn an invariant causal predictor that is robust to distributional shifts, in the su...
Multi-Source Domain Adaptation (MSDA) focuses on transferring the knowledge from multiple source dom...
Domain generalization aims to apply knowledge gained from multiple labeled source domains to unseen ...
© 2016 by the author(s). Domain adaptation arises in supervised learning when the training (source d...
A key problem in domain adaptation is determining what to transfer across different domains. We prop...
This paper is concerned with the problem of domain adaptation with multiple sources from a causal po...
Domain adaptation (DA) arises as an important problem in statistical machine learning when the sourc...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Current methods for covariate-shift adaptation use unlabelled data to compute importance weights or ...
Despite development in many areas of machine learning in recent decades, still, changing data source...
The aim of domain adaptation algorithms is to establish a learner, trained on labeled data from a so...
We consider a case of covariate shift where prior causal inference or expert knowledge has identifie...
Recent empirical studies on domain generalization (DG) have shown that DG algorithms that perform we...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
We propose to learn an invariant causal predictor that is robust to distributional shifts, in the su...
Multi-Source Domain Adaptation (MSDA) focuses on transferring the knowledge from multiple source dom...
Domain generalization aims to apply knowledge gained from multiple labeled source domains to unseen ...