Title
Recursive Disentanglement Network
Abstract
Disentangled feature representation is essential for data-efficient learning. The feature space of deep models is inherently compositional. Existing $\beta$-VAE-based methods, which only apply disentanglement regularization to the resulting embedding space of deep models, cannot effectively regularize such compositional feature space, resulting in unsatisfactory disentangled results. In this paper, we formulate the compositional disentanglement learning problem from an information-theoretic perspective and propose a recursive disentanglement network (RecurD) that propagates regulatory inductive bias recursively across the compositional feature space during disentangled representation learning. Experimental studies demonstrate that RecurD outperforms $\beta$-VAE and several of its state-of-the-art variants on disentangled representation learning and enables more data-efficient downstream machine learning tasks.
Year
Venue
Keywords
2022
International Conference on Learning Representations (ICLR)
disentanglement,representation learning,compositional
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
10
Name
Order
Citations
PageRank
Yixuan Chen101.01
Yubin Shi200.34
S. Li311320.19
Yujiang Wang4124.60
Mingzhi Dong582.13
Yingying Zhao6405.91
Robert P. Dick73130180.88
Lv Qin8111691.95
Fan Yang900.34
Li Shang10131189.75