Transfer learning aims for high accuracy by applying knowledge of source domains for which data collection is easy in order to target domains where data collection is difficult, and has attracted attention in recent years because of its significant potential to enable the application of machine learning to a wide range of real-world problems. However, since the technique is user-dependent, with data prepared as a source domain which in turn becomes a knowledge source for transfer learning, it often involves the adoption of inappropriate data. In such cases, the accuracy may be reduced due to “negative transfer.” Thus, in this paper, we propose a novel transfer learning method that utilizes the flipping output technique to provid...
Inductive learners seek meaningful features within raw input. Their purpose is to accurately categor...
The traditional machine learning paradigm of training a task-specific model on one single task has l...
Transfer learning is a common technique used in a wide variety of deep learning applications. Transf...
Transfer learning aims for high accuracy by applying knowledge of source domains for which data coll...
Transfer learning has beneted many real-world applications where labeled data are abundant in source...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
People constantly apply acquired knowledge to new learning tasks, but machines almost never do. Res...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Supervised machine learning needs high quality, densely sampled and labelled training data. Transfer...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
© 2018 IEEE. The rapid growing number of marketing campaigns demands an efficient learning model to ...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
Inductive learners seek meaningful features within raw input. Their purpose is to accurately categor...
Inductive learners seek meaningful features within raw input. Their purpose is to accurately categor...
The traditional machine learning paradigm of training a task-specific model on one single task has l...
Transfer learning is a common technique used in a wide variety of deep learning applications. Transf...
Transfer learning aims for high accuracy by applying knowledge of source domains for which data coll...
Transfer learning has beneted many real-world applications where labeled data are abundant in source...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
People constantly apply acquired knowledge to new learning tasks, but machines almost never do. Res...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Supervised machine learning needs high quality, densely sampled and labelled training data. Transfer...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
© 2018 IEEE. The rapid growing number of marketing campaigns demands an efficient learning model to ...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
Inductive learners seek meaningful features within raw input. Their purpose is to accurately categor...
Inductive learners seek meaningful features within raw input. Their purpose is to accurately categor...
The traditional machine learning paradigm of training a task-specific model on one single task has l...
Transfer learning is a common technique used in a wide variety of deep learning applications. Transf...