PDF4PRO ⚡AMP

Modern search engine that looking for books and documents around the web

Example: biology

Learning Transferable Features with Deep Adaptation Networks

Learning Transferable Features with Deep Adaptation NetworksMingsheng Long Cao Wang I. Jordan School of Software, TNList Lab for Info. Sci. & Tech., Institute for Data Science, Tsinghua University, China Department of Electrical Engineering and Computer Science, University of California, Berkeley, CA, USAA bstractRecent studies reveal that a deep neural networkcan learn Transferable Features which generalizewell to novel tasks for domain Adaptation . How-ever, as deep Features eventually transition fromgeneral to specific along the network, the featuretransferability drops significantly in higher layerswith increasing domain discrepancy. Hence, it isimportant to formally reduce the dataset bias andenhance the transferability in task-specific this paper, we propose a new Deep AdaptationNetwork (DAN) architecture, which generalizesdeep convolutional neural network to the domainadaptation scenario.

Although deep features are salient for discrimination, en-larged dataset bias may deteriorate domain adaptation per-formance, ... discrepancy is to find an abstract feature representation through which the source and target domains are simi …

Tags:

  Feature, Representation, Stainles

Information

Domain:

Source:

Link to this page:

Please notify us if you found a problem with this document:

Spam in document Broken preview Other abuse

Transcription of Learning Transferable Features with Deep Adaptation Networks

Related search queries