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research article

Distribution-Matching Embedding for Visual Domain Adaptation

Baktashmotlagh, Mahsa
•
Harandi, Mehrtash
•
Salzmann, Mathieu
2016
Journal Of Machine Learning Research

Domain-invariant representations are key to addressing the domain shift problem where the training and test examples follow different distributions. Existing techniques that have attempted to match the distributions of the source and target domains typically compare these distributions in the original feature space. This space, however, may not be directly suitable for such a comparison, since some of the features may have been distorted by the domain shift, or may be domain specific. In this paper, we introduce a Distribution-Matching Embedding approach: An unsupervised domain adaptation method that overcomes this issue by mapping the data to a latent space where the distance between the empirical distributions of the source and target examples is minimized. In other words, we seek to extract the information that is invariant across the source and target data. In particular, we study two different distances to compare the source and target distributions: the Maximum Mean Discrepancy and the Hellinger distance. Furthermore, we show that our approach allows us to learn either a linear embedding, or a nonlinear one. We demonstrate the benefits of our approach on the tasks of visual object recognition, text categorization, and WiFi localization.

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Type
research article
Web of Science ID

WOS:000391547000001

Author(s)
Baktashmotlagh, Mahsa
Harandi, Mehrtash
Salzmann, Mathieu
Date Issued

2016

Published in
Journal Of Machine Learning Research
Volume

17

Start page

108

Subjects

Domain Adaptation

•

Maximum Mean Discrepancy

•

Hellinger Distance

•

Distribution Matching

•

Domain Invariant Representations

•

ml-ai

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CVLAB  
Available on Infoscience
February 17, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/134442
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