We propose a distributionally robust learning (DRL) method for unsupervised domain adaptation (UDA) that scales to modern computer vision benchmarks. DRL can be naturally formulated as a competitive two-player game between a predictor and an adversary that is allowed to corrupt the labels, subject to certain constraints, and reduces to incorporating a density ratio between the source and target domains (under the standard log loss). This formulation motivates the use of two neural networks that are jointly trained - a discriminative network between the source and target domains for density-ratio estimation, in addition to the standard classification network. The use of a density ratio in DRL prevents the model from being overconfident on ta...
Given labeled instances on a source domain and unlabeled ones on a target domain, unsupervised domai...
Unsupervised domain adaptation is a machine learning-oriented application that aims to transfer know...
We propose a simple yet effective method for unsupervised domain adaptation. When training and test ...
We propose a distributionally robust learning (DRL) method for unsupervised domain adaptation (UDA) ...
Unsupervised Domain Adaptation (UDA) methods aim to transfer knowledge from a labeled source domain ...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Domain adaptation generalizes a learning model across source domain and target domain that follow di...
Artificial intelligent and machine learning technologies have already achieved significant success i...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Unsupervised domain adaptation (DA) enables a classifier trained on data from one domain to be appli...
As acquiring manual labels on data could be costly, unsupervised domain adaptation (UDA), which tran...
We propose a generic distributed learning framework for robust statistical learn-ing on big contamin...
Aligning and balancing the marginal and conditional feature distributions are two critical procedure...
Real world uses of deep learning require predictable model behavior under distribution shifts. Model...
We develop an algorithm to improve the performance of a pre-trained model under concept shift withou...
Given labeled instances on a source domain and unlabeled ones on a target domain, unsupervised domai...
Unsupervised domain adaptation is a machine learning-oriented application that aims to transfer know...
We propose a simple yet effective method for unsupervised domain adaptation. When training and test ...
We propose a distributionally robust learning (DRL) method for unsupervised domain adaptation (UDA) ...
Unsupervised Domain Adaptation (UDA) methods aim to transfer knowledge from a labeled source domain ...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Domain adaptation generalizes a learning model across source domain and target domain that follow di...
Artificial intelligent and machine learning technologies have already achieved significant success i...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Unsupervised domain adaptation (DA) enables a classifier trained on data from one domain to be appli...
As acquiring manual labels on data could be costly, unsupervised domain adaptation (UDA), which tran...
We propose a generic distributed learning framework for robust statistical learn-ing on big contamin...
Aligning and balancing the marginal and conditional feature distributions are two critical procedure...
Real world uses of deep learning require predictable model behavior under distribution shifts. Model...
We develop an algorithm to improve the performance of a pre-trained model under concept shift withou...
Given labeled instances on a source domain and unlabeled ones on a target domain, unsupervised domai...
Unsupervised domain adaptation is a machine learning-oriented application that aims to transfer know...
We propose a simple yet effective method for unsupervised domain adaptation. When training and test ...