A Decade Survey of Transfer Learning (2010–2020)

Shuteng Niu(Embry–Riddle Aeronautical University), Yongxin Liu(Embry–Riddle Aeronautical University), Jian Wang(Embry–Riddle Aeronautical University), Houbing Song(Embry–Riddle Aeronautical University)
IEEE Transactions on Artificial Intelligence
October 1, 2020
Cited by 633

Abstract

Transfer learning (TL) has been successfully applied to many real-world problems that traditional machine learning (ML) cannot handle, such as image processing, speech recognition, and natural language processing (NLP). Commonly, TL tends to address three main problems of traditional machine learning: (1) insufficient labeled data, (2) incompatible computation power, and (3) distribution mismatch. In general, TL can be organized into four categories: transductive learning, inductive learning, unsupervised learning, and negative learning. Furthermore, each category can be organized into four learning types: learning on instances, learning on features, learning on parameters, and learning on relations. This article presents a comprehensive survey on TL. In addition, this article presents the state of the art, current trends, applications, and open challenges.


Related Papers

No related papers found

Powered by citation graph analysis