Abstract :
In this paper, we propose a transductive transfer learning framework, referred
to as Transfer Maximum Margin Criterion (T-MMC). This framework is suitable to transfer
the knowledge acquired in one domain, the source domain, to another domain, the target
domain, where no labeled examples are available in the target domain. We introduce
an eective feature weighting approach, which proceeds to reduce the domain dierence
between the source and target domains. Moreover, we exploit maximum margin criterion
to well discriminate various classes in the reduced domains. We simultaneously transfer
knowledge from the source domain to target domain and also discriminate various classes
in the reduced domains. Comprehensive experiments on the synthetic and real datasets
demonstrate that T-MMC outperforms existing transfer learning methods.