TY - JOUR
T1 - Joint Learning of Multiple Latent Domains and Deep Representations for Domain Adaptation
AU - Wu, Xinxiao
AU - Chen, Jin
AU - Yu, Feiwu
AU - Yao, Mingyu
AU - Luo, Jiebo
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2021/5
Y1 - 2021/5
N2 - In domain adaptation, the automatic discovery of multiple latent source domains has succeeded by capturing the intrinsic structure underlying the source data. Different from previous works that mainly rely on shallow models for domain discovery, we propose a novel unified framework based on deep neural networks to jointly address latent domain prediction from source data and deep representation learning from both source and target data. Within this framework, an iterative algorithm is proposed to alternate between 1) utilizing a new probabilistic hierarchical clustering method to separate the source domain into latent clusters and 2) training deep neural networks by using the domain membership as the supervision to learn deep representations. The key idea behind this joint learning framework is that good representations can help to improve the prediction accuracy of latent domains and, in turn, domain prediction results can provide useful supervisory information for feature learning. During the training of the deep model, a domain prediction loss, a domain confusion loss, and a task-specific classification loss are effectively integrated to enable the learned feature to distinguish between different latent source domains, transfer between source and target domains, and become semantically meaningful among different classes. Trained in an end-to-end fashion, our framework outperforms the state-of-the-art methods for latent domain discovery, as validated by extensive experiments on both object classification and human action-recognition tasks.
AB - In domain adaptation, the automatic discovery of multiple latent source domains has succeeded by capturing the intrinsic structure underlying the source data. Different from previous works that mainly rely on shallow models for domain discovery, we propose a novel unified framework based on deep neural networks to jointly address latent domain prediction from source data and deep representation learning from both source and target data. Within this framework, an iterative algorithm is proposed to alternate between 1) utilizing a new probabilistic hierarchical clustering method to separate the source domain into latent clusters and 2) training deep neural networks by using the domain membership as the supervision to learn deep representations. The key idea behind this joint learning framework is that good representations can help to improve the prediction accuracy of latent domains and, in turn, domain prediction results can provide useful supervisory information for feature learning. During the training of the deep model, a domain prediction loss, a domain confusion loss, and a task-specific classification loss are effectively integrated to enable the learned feature to distinguish between different latent source domains, transfer between source and target domains, and become semantically meaningful among different classes. Trained in an end-to-end fashion, our framework outperforms the state-of-the-art methods for latent domain discovery, as validated by extensive experiments on both object classification and human action-recognition tasks.
KW - Deep feature learning
KW - domain adaptation
KW - latent domain discovery
KW - probabilistic hierarchical clustering
UR - http://www.scopus.com/inward/record.url?scp=85104598166&partnerID=8YFLogxK
U2 - 10.1109/TCYB.2019.2921559
DO - 10.1109/TCYB.2019.2921559
M3 - Article
C2 - 31251207
AN - SCOPUS:85104598166
SN - 2168-2267
VL - 51
SP - 2676
EP - 2687
JO - IEEE Transactions on Cybernetics
JF - IEEE Transactions on Cybernetics
IS - 5
M1 - 8745500
ER -