Online Heterogeneous Transfer Metric Learning

Online Heterogeneous Transfer Metric Learning

Yong Luo, Tongliang Liu, Yonggang Wen, Dacheng Tao

Proceedings of the Twenty-Seventh International Joint Conference on Artificial Intelligence
Main track. Pages 2525-2531. https://doi.org/10.24963/ijcai.2018/350

Distance metric learning (DML) has been demonstrated to be successful and essential in diverse applications. Transfer metric learning (TML) can help DML in the target domain with limited label information by utilizing information from some related source domains. The heterogeneous TML (HTML), where the feature representations vary from the source to the target domain, is general and challenging. However, current HTML approaches are usually conducted in a batch manner and cannot handle sequential data. This motivates the proposed online HTML (OHTML) method. In particular, the distance metric in the source domain is pre-trained using some existing DML algorithms. To enable knowledge transfer, we assume there are large amounts of unlabeled corresponding data that have representations in both the source and target domains. By enforcing the distances (between these unlabeled samples) in the target domain to agree with those in the source domain under the manifold regularization theme, we learn an improved target metric. We formulate the problem in the online setting so that the optimization is efficient and the model can be adapted to new coming data. Experiments in diverse applications demonstrate both effectiveness and efficiency of the proposed method.
Keywords:
Machine Learning: Online Learning
Machine Learning: Transfer, Adaptation, Multi-task Learning