© 1979-2012 IEEE. The goal of transfer learning is to improve the performance of target learning task by leveraging information (or transferring knowledge) from other related tasks. In this paper, we examine the problem of transfer distance metric learning (DML), which usually aims to mitigate the label information deficiency issue in the target DML. Most of the current Transfer DML (TDML) methods are not applicable to the scenario where data are drawn from heterogeneous domains. Some existing heterogeneous transfer learning (HTL) approaches can learn target distance metric by usually transforming the samples of source and target domain into a common subspace. However, these approaches lack flexibility in real-world applications, and the le...
Abstract Transfer learning has been demonstrated to be effective for many real-world applications as...
Heterogeneous Transfer Learning (HTL) algorithms leverage knowledge from a heterogeneous source doma...
Instance-correspondence (IC) data are potent resources for heterogeneous transfer learning (HeTL) du...
The goal of transfer learning is to improve the performance of target learning task by leveraging in...
Transfer learning aims to improve the performance of target learning task by leveraging information ...
Distance metric learning (DML) is critical for a wide variety of machine learning algorithms and pat...
© 2012 IEEE. Distance metric learning plays a crucial role in diverse machine learning algorithms an...
Distance metric learning plays a crucial role in diverse machine learning algorithms and application...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Supervised metric learning plays a substantial role in statistical classification. Conventional metr...
Owing to the continual growth of multimodal data (or feature spaces), we have seen a rising interest...
Supervised metric learning plays a substantial role in statistical classification. Conventional metr...
The lack of training data is a common problem in machine learning. One solution to thisproblem is to...
In many real-world problems, it is often time-consuming and expensive to collect labeled data. To al...
Abstract Transfer learning has been demonstrated to be effective for many real-world applications as...
Heterogeneous Transfer Learning (HTL) algorithms leverage knowledge from a heterogeneous source doma...
Instance-correspondence (IC) data are potent resources for heterogeneous transfer learning (HeTL) du...
The goal of transfer learning is to improve the performance of target learning task by leveraging in...
Transfer learning aims to improve the performance of target learning task by leveraging information ...
Distance metric learning (DML) is critical for a wide variety of machine learning algorithms and pat...
© 2012 IEEE. Distance metric learning plays a crucial role in diverse machine learning algorithms an...
Distance metric learning plays a crucial role in diverse machine learning algorithms and application...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Supervised metric learning plays a substantial role in statistical classification. Conventional metr...
Owing to the continual growth of multimodal data (or feature spaces), we have seen a rising interest...
Supervised metric learning plays a substantial role in statistical classification. Conventional metr...
The lack of training data is a common problem in machine learning. One solution to thisproblem is to...
In many real-world problems, it is often time-consuming and expensive to collect labeled data. To al...
Abstract Transfer learning has been demonstrated to be effective for many real-world applications as...
Heterogeneous Transfer Learning (HTL) algorithms leverage knowledge from a heterogeneous source doma...
Instance-correspondence (IC) data are potent resources for heterogeneous transfer learning (HeTL) du...