The key question in transfer learning (TL) research is how to make model induction transferable across different domains. Common methods so far require source and target domains to have a shared/homogeneous feature space, or the projection of features from heterogeneous domains onto a shared space. This paper proposes a novel framework, which does not require a shared feature space but instead uses a parallel corpus to calibrate domain-specific kernels into a unified kernel, to leverage graph-based label propagation in cross-domain settings, and to optimize semi-supervised learning based on labeled and unlabeled data in both source and target domains. Our experiments on benchmark datasets show advantageous performance of the proposed method...
A novel cross-domain neural-kernel networks architecture for semi-supervised domain adaption problem...
Domain adaptation solves a learning problem in a target domain by utilizing the training data in a d...
Transfer learning transfers knowledge across domains to improve the learning performance. Since feat...
Cross-domain learning methods have shown promising results by leveraging labeled patterns from the a...
Cross-domain learning methods have shown promising results by leveraging labeled patterns from the a...
Learning an appropriate feature representation across source and target domains is one of the most e...
When a task of a certain domain doesn't have enough labels and good features, traditional supe...
When labeled examples are limited and difficult to obtain, transfer learning employs knowledge from ...
When labeled examples are limited and difficult to obtain, transfer learning employs knowledge from ...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
A crucial issue in machine learning is how to learn appropriate representations for data. Recently, ...
This paper introduces a novel cross-domain neural-kernel networks architecture for semi-supervised d...
This paper introduces a novel cross-domain neural-kernel networks architecture for semi-supervised d...
A novel cross-domain neural-kernel networks architecture for semi-supervised domain adaption problem...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
A novel cross-domain neural-kernel networks architecture for semi-supervised domain adaption problem...
Domain adaptation solves a learning problem in a target domain by utilizing the training data in a d...
Transfer learning transfers knowledge across domains to improve the learning performance. Since feat...
Cross-domain learning methods have shown promising results by leveraging labeled patterns from the a...
Cross-domain learning methods have shown promising results by leveraging labeled patterns from the a...
Learning an appropriate feature representation across source and target domains is one of the most e...
When a task of a certain domain doesn't have enough labels and good features, traditional supe...
When labeled examples are limited and difficult to obtain, transfer learning employs knowledge from ...
When labeled examples are limited and difficult to obtain, transfer learning employs knowledge from ...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
A crucial issue in machine learning is how to learn appropriate representations for data. Recently, ...
This paper introduces a novel cross-domain neural-kernel networks architecture for semi-supervised d...
This paper introduces a novel cross-domain neural-kernel networks architecture for semi-supervised d...
A novel cross-domain neural-kernel networks architecture for semi-supervised domain adaption problem...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
A novel cross-domain neural-kernel networks architecture for semi-supervised domain adaption problem...
Domain adaptation solves a learning problem in a target domain by utilizing the training data in a d...
Transfer learning transfers knowledge across domains to improve the learning performance. Since feat...