Cost-Sensitive Structured SVM for Multi-category Domain Adaptation
ICPR(2014)
摘要
Domain adaptation addresses the problem of accuracy drop that a classifier may suffer when the training data (source domain) and the testing data (target domain) are drawn from different distributions. In this work, we focus on domain adaptation for structured SVM (SSVM). We propose a cost-sensitive domain adaptation method for SSVM, namely COSS-SSVM. In particular, during the re-training of an adapted classifier based on target and source data, the idea that we explore consists in introducing a non-zero cost even for correctly classified source domain samples. Eventually, we aim to learn a more target-oriented classifier by not rewarding (zero loss) properly classified source-domain training samples. We assess the effectiveness of COSS-SSVM on multi-category object recognition.
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关键词
cost-sensitive structured svm,coss-ssvm,source domain,multicategory domain adaptation,target domain,target-oriented classifier,object recognition,testing data,source-domain training samples,nonzero cost,support vector machines,training data
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