Concepedia

Publication | Closed Access

Large margin transductive transfer learning

135

Citations

36

References

2009

Year

Brian Quanz, Jun Huan

Unknown Venue

Abstract

Recently there has been increasing interest in the problem of transfer learning, in which the typical assumption that training and testing data are drawn from identical distributions is relaxed. We specifically address the problem of transductive transfer learning in which we have access to labeled training data and unlabeled testing data potentially drawn from different, yet related distributions, and the goal is to leverage the labeled training data to learn a classifier to correctly predict data from the testing distribution.

References

YearCitations

Page 1