© 2018 IEEE. The rapid growing number of marketing campaigns demands an efficient learning model to identify prospective customers to target. Transfer learning is widely considered as a major way to improve the learning performance by using the generated knowledge from previous learning tasks. Most recent studies focused on transferring knowledge from source domains to target domains which may result in knowledge missing. To avoid this, we proposed a multiple source based transfer learning framework to do it reversely. The data in target domains is transferred into source domains by normalizing them into the same distributions and then improving the learning task in target domains by its generated knowledge in source domains. The proposed m...
In a reinforcement learning setting, the goal of transfer learn-ing is to improve performance on a t...
Conventional learning algorithm assumes that the training data and test data share a common distribu...
Machine learning algorithms usually require a huge amount of training examples to learn a new model ...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
© 2020 Elsevier Inc. Transfer learning addresses the problem of how to leverage acquired knowledge f...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
Transfer learning has beneted many real-world applications where labeled data are abundant in source...
Transfer learning aims for high accuracy by applying knowledge of source domains for which data coll...
This paper presents a detailed discussion of problem formulation and data representation issues in t...
Part 1: Keynote PresentationsInternational audienceIn machine learning and data mining, we often enc...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Traditional machine learning makes a basic assumption: the training and test data should be under th...
We address the problem of learning classifiers for several related tasks that may differ in their jo...
Supervised machine learning needs high quality, densely sampled and labelled training data. Transfer...
Artificial intelligent and machine learning technologies have already achieved significant success i...
In a reinforcement learning setting, the goal of transfer learn-ing is to improve performance on a t...
Conventional learning algorithm assumes that the training data and test data share a common distribu...
Machine learning algorithms usually require a huge amount of training examples to learn a new model ...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
© 2020 Elsevier Inc. Transfer learning addresses the problem of how to leverage acquired knowledge f...
The transfer learning and domain adaptation problems originate from a distribution mismatch between ...
Transfer learning has beneted many real-world applications where labeled data are abundant in source...
Transfer learning aims for high accuracy by applying knowledge of source domains for which data coll...
This paper presents a detailed discussion of problem formulation and data representation issues in t...
Part 1: Keynote PresentationsInternational audienceIn machine learning and data mining, we often enc...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Traditional machine learning makes a basic assumption: the training and test data should be under th...
We address the problem of learning classifiers for several related tasks that may differ in their jo...
Supervised machine learning needs high quality, densely sampled and labelled training data. Transfer...
Artificial intelligent and machine learning technologies have already achieved significant success i...
In a reinforcement learning setting, the goal of transfer learn-ing is to improve performance on a t...
Conventional learning algorithm assumes that the training data and test data share a common distribu...
Machine learning algorithms usually require a huge amount of training examples to learn a new model ...