Domain adaptation algorithms focus on a setting where the training and test data are sampled from related but different distributions. Various domain adaptation methods aim to align the source and target domains in a new common domain by learning a transformation or projection. In this work, we learn a nonlinear and nonparametric projection of the source and target domains into a common domain along with a linear classifier in the new domain. Experiments on image data sets show that the proposed nonlinear approach outperforms baseline domain adaptation methods based on linear transformations
We study the problem of domain adaptation: our goal is to learn a classifier, but the data distribut...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Artificial intelligent and machine learning technologies have already achieved significant success i...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing\ud the domain shift problem where the trainin...
Abstract—We address the problem of domain adaptation for binary classification which arises when the...
In real-world applications, “what you saw ” during training is often not “what you get ” during depl...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
2015-07-23In many applications (computer vision, natural language processing, speech recognition, et...
We study the problem of domain adaptation: our goal is to learn a classifier, but the data distribut...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Artificial intelligent and machine learning technologies have already achieved significant success i...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing the domain shift problem where the training a...
Domain-invariant representations are key to addressing\ud the domain shift problem where the trainin...
Abstract—We address the problem of domain adaptation for binary classification which arises when the...
In real-world applications, “what you saw ” during training is often not “what you get ” during depl...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
A basic assumption of statistical learning theory is that train and test data are drawn from the sam...
A common assumption in machine vision is that the training and test samples are drawn from the same ...
2015-07-23In many applications (computer vision, natural language processing, speech recognition, et...
We study the problem of domain adaptation: our goal is to learn a classifier, but the data distribut...
Abstract. The supervised learning paradigm assumes in general that both training and test data are s...
Artificial intelligent and machine learning technologies have already achieved significant success i...