Reference Hub5
A Classification Learning Research based on Discriminative Knowledge-Leverage Transfer

A Classification Learning Research based on Discriminative Knowledge-Leverage Transfer

Ding Xiong, Lu Yan
Copyright: © 2018 |Volume: 9 |Issue: 4 |Pages: 17
ISSN: 1941-6237|EISSN: 1941-6245|EISBN13: 9781522543558|DOI: 10.4018/IJACI.2018100104
Cite Article Cite Article

MLA

Xiong, Ding, and Lu Yan. "A Classification Learning Research based on Discriminative Knowledge-Leverage Transfer." IJACI vol.9, no.4 2018: pp.52-68. http://doi.org/10.4018/IJACI.2018100104

APA

Xiong, D. & Yan, L. (2018). A Classification Learning Research based on Discriminative Knowledge-Leverage Transfer. International Journal of Ambient Computing and Intelligence (IJACI), 9(4), 52-68. http://doi.org/10.4018/IJACI.2018100104

Chicago

Xiong, Ding, and Lu Yan. "A Classification Learning Research based on Discriminative Knowledge-Leverage Transfer," International Journal of Ambient Computing and Intelligence (IJACI) 9, no.4: 52-68. http://doi.org/10.4018/IJACI.2018100104

Export Reference

Mendeley
Favorite Full-Issue Download

Abstract

Current transfer learning models study the source data for future target inferences within a major view, the whole source data should be used to explore the shared knowledge structure. However, human resources are constrained, the source domain data is collected as a whole in the real scene. However, this is not realistic, this data is associated with the target domain. A generalized empirical risk minimization model (GERM) is proposed in this article with discriminative knowledge-leverage (KL). The empirical risk minimization (ERM) principle is extended to the transfer learning setting. The theoretical upper bound of generalized ERM (GERM) is given for the practical discriminative transfer learning. The subset of the source domain data can be automatically selected in the model, and the source domain data is associated with the target domain. It can solve with only some knowledge of the source domain being available, thus it can avoid the negative transfer effect which is caused by the whole source domain dataset in the real scene. Simulation results show that the proposed algorithm is better than the traditional transfer learning algorithm in simulation data sets and real data sets.

Request Access

You do not own this content. Please login to recommend this title to your institution's librarian or purchase it from the IGI Global bookstore.