\u3cp\u3eDomain adaptation is the supervised learning setting in which the training and test data are sampled from different distributions: training data is sampled from a source domain, whilst test data is sampled from a target domain. This paper proposes and studies an approach, called feature-level domain adaptation (flda), that models the dependence between the two domains by means of a feature-level transfer model that is trained to describe the transfer from source to target domain. Subsequently, we train a domain-adapted classifier by minimizing the expected loss under the resulting transfer model. For linear classifiers and a large family of loss functions and transfer models, this expected loss can be computed or approximated analy...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
Domain adaptation deals with training models using large scale labeled data from a specific source d...
An insufficient number or lack of training samples is a bottleneck in traditional machine learning a...
Discriminative learning methods for classification perform well when training and test data are draw...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Domain adaptation techniques in transfer learning try to reduce the amount of training data required...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
\u3cp\u3eDomain adaptation has become a prominent problem setting in machine learning and related fi...
Recently, remarkable progress has been made in learning transferable representation across domains. ...
Domain adaptation solves a learning problem in a target domain by utilizing the training data in a d...
Recently, remarkable progress has been made in learning transferable representation across domains. ...
Conventional machine learning needs sufficient labeled data to achieve satisfactory generalization p...
Domain adaptation generalizes a learning model across source domain and target domain that follow di...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
Domain adaptation deals with training models using large scale labeled data from a specific source d...
An insufficient number or lack of training samples is a bottleneck in traditional machine learning a...
Discriminative learning methods for classification perform well when training and test data are draw...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Domain adaptation techniques in transfer learning try to reduce the amount of training data required...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
\u3cp\u3eDomain adaptation has become a prominent problem setting in machine learning and related fi...
Recently, remarkable progress has been made in learning transferable representation across domains. ...
Domain adaptation solves a learning problem in a target domain by utilizing the training data in a d...
Recently, remarkable progress has been made in learning transferable representation across domains. ...
Conventional machine learning needs sufficient labeled data to achieve satisfactory generalization p...
Domain adaptation generalizes a learning model across source domain and target domain that follow di...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
Domain adaptation deals with training models using large scale labeled data from a specific source d...
An insufficient number or lack of training samples is a bottleneck in traditional machine learning a...