IMPROVE A LEARNER: A SURVEY OF TRANSFER LEARNING
No Thumbnail Available
Date
2018-05-01
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
جامعة الوادي university of eloued
Abstract
Transfer learning is a subclass of machine learning, which uses training data (source), drawn
from a diverse domain than that of the testing data (target). The real world is messy and
contains an infinite range of novel eventualities. Transfer learning across different feature
spaces is usually a tougher problem than Transfer Learning within the common feature space.
This survey paper defines transfer learning to feature representation that maps the target
domain to the source domains exploiting a set of meticulously manufactured features and
applications to transfer learning. This paper systematically examines a feature based transfer
techniques and reviews some current analysis on the topic of negative transfer
Description
artical
Keywords
Data mining, survey, Transfer learning, Traditional machine learning
Citation
A. S. Bais .IMPROVE A LEARNER: A SURVEY OF TRANSFER LEARNING. Journal of Fundamental and sciences. vol.10, no 2. May 2018. Faculty of exact sciences. university of el oued. [visited in 04/03/2018]. available from [http://www.jfas.info]