Authors
Lixin Duan, Ivor W Tsang, Dong Xu
Publication date
2012/1/23
Journal
IEEE transactions on pattern analysis and machine intelligence
Volume
34
Issue
3
Pages
465-479
Publisher
IEEE
Description
Cross-domain learning methods have shown promising results by leveraging labeled patterns from the auxiliary domain to learn a robust classifier for the target domain which has only a limited number of labeled samples. To cope with the considerable change between feature distributions of different domains, we propose a new cross-domain kernel learning framework into which many existing kernel methods can be readily incorporated. Our framework, referred to as Domain Transfer Multiple Kernel Learning (DTMKL), simultaneously learns a kernel function and a robust classifier by minimizing both the structural risk functional and the distribution mismatch between the labeled and unlabeled samples from the auxiliary and target domains. Under the DTMKL framework, we also propose two novel methods by using SVM and prelearned classifiers, respectively. Comprehensive experiments on three domain …
Total citations
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Scholar articles
L Duan, IW Tsang, D Xu - IEEE transactions on pattern analysis and machine …, 2012