Title
Active domain adaptation with noisy labels for multimedia analysis
Abstract
Supervised learning methods require sufficient labeled examples to learn a good model for classification or regression. However, available labeled data are insufficient in many applications. Active learning (AL) and domain adaptation (DA) are two strategies to minimize the required amount of labeled data for model training. AL requires the domain expert to label a small number of highly informative examples to facilitate classification, while DA involves tuning the source domain knowledge for classification on the target domain. In this paper, we demonstrate how AL can efficiently minimize the required amount of labeled data for DA. Since the source and target domains usually have different distributions, it is possible that the domain expert may not have sufficient knowledge to answer each query correctly. We exploit our active DA framework to handle incorrect labels provided by domain experts. Experiments with multimedia data demonstrate the efficiency of our proposed framework for active DA with noisy labels.
Year
DOI
Venue
2016
10.1007/s11280-015-0343-3
World Wide Web
Keywords
Field
DocType
Active learning,Domain adaptation,Noisy labels,Multimedia analysis
Small number,Data mining,Subject-matter expert,Domain adaptation,Computer science,Artificial intelligence,Labeled data,Active learning,Domain knowledge,Supervised learning,Exploit,Multimedia,Machine learning
Journal
Volume
Issue
ISSN
19
2
1386-145X
Citations 
PageRank 
References 
4
0.38
42
Authors
6
Name
Order
Citations
PageRank
Gaowen Liu136311.87
Yan Yan269131.13
Ramanathan Subramanian346122.16
Jingkuan Song4197077.76
Guoyu Lu5166.62
Nicu Sebe67013403.03