Deep learning models achieve state-of-the-art performance in many applications but often require large-scale data. Deep transfer learning studies the ability of deep learning models to transfer knowledge from source tasks to related target tasks, enabling data-efficient learning. This dissertation develops novel methodologies that tackle three different transfer learning applications for deep learning models: unsupervised domain adaptation, unsupervised fine-tuning, and source-private clustering. The key idea behind the proposed methods relies on minimizing the distributional discrepancy between the prototypes and target data with the transport framework. For each scenario, we design our algorithms to suit different data and model requireme...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Transfer learning aims to solve new learning problems by extracting and making use of the common kno...
Deep transfer learning recently has acquired significant research interest. It makes use of pre-trai...
Deep transfer learning recently has acquired significant research interest. It makes use of pre-trai...
Deep learning has achieved great success in many real-world applications, e.g., computer vision and ...
Deep learning method, convolutional neural network (CNN) outperforms conventional machine learning m...
In recent years, many applications are using various forms of deep learning models. Such methods are...
In recent years, many applications are using various forms of deep learning models. Such methods are...
Recently, domain adaptation based on deep models has been a promising way to deal with the domains w...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
Transfer learning and deep learning approaches have been utilised in several real-world applications...
Transfer learning (TL) hopes to train a model for target domain tasks by using knowledge from differ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Transfer learning aims to solve new learning problems by extracting and making use of the common kno...
Deep transfer learning recently has acquired significant research interest. It makes use of pre-trai...
Deep transfer learning recently has acquired significant research interest. It makes use of pre-trai...
Deep learning has achieved great success in many real-world applications, e.g., computer vision and ...
Deep learning method, convolutional neural network (CNN) outperforms conventional machine learning m...
In recent years, many applications are using various forms of deep learning models. Such methods are...
In recent years, many applications are using various forms of deep learning models. Such methods are...
Recently, domain adaptation based on deep models has been a promising way to deal with the domains w...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
Transfer learning and deep learning approaches have been utilised in several real-world applications...
Transfer learning (TL) hopes to train a model for target domain tasks by using knowledge from differ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Transfer learning aims to solve new learning problems by extracting and making use of the common kno...