Title of article :
DiReT: An eective discriminative dimensionality reduction approach for multi-source transfer learning
Author/Authors :
Tahmoresnezhad, J. Faculty of IT & Computer Engineering - Urmia University of Technology, Urmia, Iran , Hashemi, S. School of Electrical and Computer Engineering - Shiraz University, Shiraz, Iran
Abstract :
Transfer learning is a well-known solution to the problem of domain shift in
which source domain (training set) and target domain (test set) are drawn from dierent
distributions. In the absence of domain shift, discriminative dimensionality reduction
approaches could classify target data with acceptable accuracy. However, distribution
dierence across source and target domains degrades the performance of dimensionality
reduction methods. In this paper, we propose a Discriminative Dimensionality Reduction
approach for multi-source Transfer learning, DiReT, in which discrimination is exploited
on transferred data. DiReT nds an embedded space, such that the distribution dierence
of the source and target domains is minimized. Moreover, DiReT employs multiple source
domains and semi-supervised target domain to transfer knowledge from multiple resources,
and it also bridges across source and target domains to nd common knowledge in an
embedded space. Empirical evidence of real and articial datasets indicates that DiReT
manages to improve substantially over dimensionality reduction approaches.
Keywords :
Multi-source transfer learning , Domain adaptation , Discriminative dimensionality reduction , Fisher discriminant analysis
Journal title :
Astroparticle Physics