Deep Clustering For Domain Adaptation
Boyan Gao, Yongxin Yang, Henry Gouk, Timothy M. Hospedales
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 13:01
We address the heterogeneous domain adaptation task: adapting a classifier trained on data from one domain to operate on another domain that also has a different label space. We consider two settings that both exhibit label scarcity of some form---one where only unlabelled data is available, and another where a small volume of labelled data is available in addition to the unlabelled data. Our method is based on two specialisations of a recently proposed approach for deep clustering. It is shown that our approach noticeably outperforms other methods based on deep clustering in both the fully unsupervised and the semi-supervised settings.