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  1. Science in China Series : Information Sciences
  2. Science in China Series : Information Sciences : Volume 55
  3. Science in China Series : Information Sciences : Volume 55, Issue 9, September 2012
  4. A kernel learning framework for domain adaptation learning
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Science in China Series : Information Sciences : Volume 61
Science in China Series : Information Sciences : Volume 60
Science in China Series : Information Sciences : Volume 59
Science in China Series : Information Sciences : Volume 58
Science in China Series : Information Sciences : Volume 57
Science in China Series : Information Sciences : Volume 56
Science in China Series : Information Sciences : Volume 55
Science in China Series : Information Sciences : Volume 55, Issue 12, December 2012
Science in China Series : Information Sciences : Volume 55, Issue 11, November 2012
Science in China Series : Information Sciences : Volume 55, Issue 10, October 2012
Science in China Series : Information Sciences : Volume 55, Issue 9, September 2012
Design of multiple anti-windup loops for multiple activations
MBA: A market-based approach to data allocation and dynamic migration for cloud database
Formal proof of integer adders using all-prefix-sums operation
MPtostream: an OpenMP compiler for CPU-GPU heterogeneous parallel systems
Evolution and stability of Linux kernels based on complex networks
A kernel learning framework for domain adaptation learning
A new algorithm for fast mining frequent itemsets using N-lists
Behavioural equivalences of a probabilistic pi-calculus
Maximal contractions in Boolean algebras
Dynamic image stabilization precision test system based on the Hessian matrix
Feature sensitive re-sampling of point set surfaces with Gaussian spheres
Displacement residual based DDM matching algorithm
High-speed reconstruction for ultra-low resolution faces
Reweighted minimization model for MR image reconstruction with split Bregman method
Estimating fisheye camera parameters from homography
An output delay approach to fault estimation for sampled-data systems
A provable secure fuzzy identity based signature scheme
New application methods for word-oriented cryptographic primitives
Practical security against linear cryptanalysis for SMS4-like ciphers with SP round function
Science in China Series : Information Sciences : Volume 55, Issue 8, August 2012
Science in China Series : Information Sciences : Volume 55, Issue 7, July 2012
Science in China Series : Information Sciences : Volume 55, Issue 6, June 2012
Science in China Series : Information Sciences : Volume 55, Issue 5, May 2012
Science in China Series : Information Sciences : Volume 55, Issue 4, April 2012
Science in China Series : Information Sciences : Volume 55, Issue 3, March 2012
Science in China Series : Information Sciences : Volume 55, Issue 2, February 2012
Science in China Series : Information Sciences : Volume 55, Issue 1, January 2012
Science in China Series : Information Sciences : Volume 54
Science in China Series : Information Sciences : Volume 53
Science in China Series : Information Sciences : Volume 52
Science in China Series : Information Sciences : Volume 51
Science in China Series : Information Sciences : Volume 50
Science in China Series : Information Sciences : Volume 49
Science in China Series : Information Sciences : Volume 48
Science in China Series : Information Sciences : Volume 47
Science in China Series : Information Sciences : Volume 46
Science in China Series : Information Sciences : Volume 45
Science in China Series : Information Sciences : Volume 44

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A kernel learning framework for domain adaptation learning

Content Provider Springer Nature Link
Author Tao, JianWen Chung, FuLai Wang, ShiTong
Copyright Year 2012
Abstract Domain adaptation learning (DAL) methods have shown promising results by utilizing labeled samples from the source (or auxiliary) domain(s) to learn a robust classifier for the target domain which has a few or even no labeled samples. However, there exist several key issues which need to be addressed in the state-of-theart DAL methods such as sufficient and effective distribution discrepancy metric learning, effective kernel space learning, and multiple source domains transfer learning, etc. Aiming at the mentioned-above issues, in this paper, we propose a unified kernel learning framework for domain adaptation learning and its effective extension based on multiple kernel learning (MKL) schema, regularized by the proposed new minimum distribution distance metric criterion which minimizes both the distribution mean discrepancy and the distribution scatter discrepancy between source and target domains, into which many existing kernel methods (like support vector machine (SVM), v-SVM, and least-square SVM) can be readily incorporated. Our framework, referred to as kernel learning for domain adaptation learning (KLDAL), simultaneously learns an optimal kernel space and a robust classifier by minimizing both the structural risk functional and the distribution discrepancy between different domains. Moreover, we extend the framework KLDAL to multiple kernel learning framework referred to as MKLDAL. Under the KLDAL or MKLDAL framework, we also propose three effective formulations called KLDAL-SVM or MKLDAL-SVM with respect to SVM and its variant µ-KLDALSVM or µ-MKLDALSVM with respect to v-SVM, and KLDAL-LSSVM or MKLDAL-LSSVM with respect to the least-square SVM, respectively. Comprehensive experiments on real-world data sets verify the outperformed or comparable effectiveness of the proposed frameworks.
Starting Page 1983
Ending Page 2007
Page Count 25
File Format PDF
ISSN 1674733X
Journal Science in China Series : Information Sciences
Volume Number 55
Issue Number 9
e-ISSN 18691919
Language English
Publisher SP Science China Press
Publisher Date 2012-06-21
Publisher Place Heidelberg
Access Restriction One Nation One Subscription (ONOS)
Subject Keyword domain adaptation learning support vector machine multiple kernel learning maximum mean discrepancy maximum scatter discrepancy Information Systems and Communication Service
Content Type Text
Resource Type Article
Subject Computer Science
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