Title
DACH: Domain Adaptation Without Domain Information
Abstract
Domain adaptation is becoming increasingly important for learning systems in recent years, especially with the growing diversification of data domains in real-world applications, such as the genetic data from various sequencing platforms and video feeds from multiple surveillance cameras. Traditional domain adaptation approaches target to design transformations for each individual domain so that the twisted data from different domains follow an almost identical distribution. In many applications, however, the data from diversified domains are simply dumped to an archive even without clear domain labels. In this article, we discuss the possibility of learning domain adaptations even when the data does not contain domain labels. Our solution is based on our new model, named domain adaption using cross-domain homomorphism (DACH in short), to identify intrinsic homomorphism hidden in mixed data from all domains. DACH is generally compatible with existing deep learning frameworks, enabling the generation of nonlinear features from the original data domains. Our theoretical analysis not only shows the universality of the homomorphism, but also proves the convergence of DACH for significant homomorphism structures over the data domains is preserved. Empirical studies on real-world data sets validate the effectiveness of DACH on merging multiple data domains for joint machine learning tasks and the scalability of our algorithm to domain dimensionality.
Year
DOI
Venue
2020
10.1109/TNNLS.2019.2962817
IEEE Transactions on Neural Networks and Learning Systems
Keywords
DocType
Volume
Algorithms,Data Interpretation, Statistical,Deep Learning,Image Interpretation, Computer-Assisted,Machine Learning,Neural Networks, Computer
Journal
31
Issue
ISSN
Citations 
12
2162-237X
1
PageRank 
References 
Authors
0.36
15
5
Name
Order
Citations
PageRank
Ruichu Cai124137.07
Jiahao Li210.36
Zhenjie Zhang3128861.63
Xiaoyan Yang4895.79
Zhifeng Hao565378.36