Title of article :
Joint distribution adaptation via feature and model matching
Author/Authors :
Mardani, M. Faculty of IT & Computer Engineering - Urmia University of Technology, Urmia, Iran , Tahmoresnezhad, J. Faculty of IT & Computer Engineering - Urmia University of Technology, Urmia, Iran
Abstract :
It is usually supposed that the training (source domain) and test (target
domain) data follow similar distributions and feature spaces in most pattern recognition
tasks. However, in many real-world applications, particularly in visual recognition, this
hypothesis has frequently been violated. Thus, the trained classier for the source domain
performs poorly in the target domain. This problem is known as domain shift problem.
Domain adaptation and transfer learning are promising techniques towards an eective and
robust classier to tackle the shift problem. In this paper, a novel scheme is proposed for
domain adaptation, named Joint Distribution Adaptation via Feature and Model Matching
(JDAFMM), in which feature transform and model matching are jointly optimized. By
introducing regularization performed between the marginal and conditional distribution
shifts across the domains, data drift can be successfully adapted as much as possible
along with empirical risk minimization and rate of consistency maximization between
manifold and prediction functions. Extensive experiments were conducted to evaluate the
performance of the proposed model against other machine learning and domain adaptation
methods in three types of visual benchmark datasets. Our experiments illustrated that our
JDAFMM signicantly outperformed other baseline and state-of-the-art methods.
Keywords :
Pattern recognition , Domain adaptation , Transfer learning , Feature transformation , Model matching
Journal title :
Scientia Iranica(Transactions D: Computer Science and Electrical Engineering)