Domain adaptation improves a target task by knowledge transfer from a source domain with rich annotations. It is not uncommon that “source-domain engineering” becomes a cumbersome process in domain adaptation: the high-quality source domains highly related to the target domain are hardly available. Thus, weakly-supervised domain adaptation has been introduced to address this difficulty, where we can tolerate the source domain with noises in labels, features, or both. As such, for a particular target task, we simply collect the source domain with coarse labeling or corrupted data. In this paper, we try to address two entangled challenges of weaklysupervised domain adaptation: sample noises of the source domain and distribution shift across d...
Deep neural networks have achieved great success in learning representations on a given dataset. How...
The performance of a machine learning model trained on labeled data of a (source) domain degrades se...
In recent years, deep neural networks (DNNs) have brought great advances to various computer vision ...
Unsupervised domain adaptation is a machine learning-oriented application that aims to transfer know...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
Domain adaptation (DA) transfers knowledge between domains by adapting them. The most well-known DA ...
Recently, domain adaptation based on deep models has been a promising way to deal with the domains w...
Recent work in domain adaptation bridges different domains by adversarially learning a domain-invari...
In many practical applications data used for training a machine learning model and the deployment da...
In Machine Learning, a good model is one that generalizes from training data and makes accurate pred...
\u3cp\u3eDomain adaptation is the supervised learning setting in which the training and test data ar...
Domain adaptation investigates the problem of cross-domain knowledge transfer where the labeled sour...
Abstract Unsupervised domain adaptation (UDA) aims at learning a classifier for an unlabeled target...
Deep neural networks have achieved great success in learning representations on a given dataset. How...
The performance of a machine learning model trained on labeled data of a (source) domain degrades se...
In recent years, deep neural networks (DNNs) have brought great advances to various computer vision ...
Unsupervised domain adaptation is a machine learning-oriented application that aims to transfer know...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
Domain adaptation (DA) transfers knowledge between domains by adapting them. The most well-known DA ...
Recently, domain adaptation based on deep models has been a promising way to deal with the domains w...
Recent work in domain adaptation bridges different domains by adversarially learning a domain-invari...
In many practical applications data used for training a machine learning model and the deployment da...
In Machine Learning, a good model is one that generalizes from training data and makes accurate pred...
\u3cp\u3eDomain adaptation is the supervised learning setting in which the training and test data ar...
Domain adaptation investigates the problem of cross-domain knowledge transfer where the labeled sour...
Abstract Unsupervised domain adaptation (UDA) aims at learning a classifier for an unlabeled target...
Deep neural networks have achieved great success in learning representations on a given dataset. How...
The performance of a machine learning model trained on labeled data of a (source) domain degrades se...
In recent years, deep neural networks (DNNs) have brought great advances to various computer vision ...