Title
Life-Long Disentangled Representation Learning with Cross-Domain Latent Homologies.
Abstract
Intelligent behaviour in the real-world requires the ability to acquire new knowledge from an ongoing sequence of experiences while preserving and reusing past knowledge. We propose a novel algorithm for unsupervised representation learning from piece-wise stationary visual data: Variational Autoencoder with Shared Embeddings (VASE). Based on the Minimum Description Length principle, VASE automatically detects shifts in the data distribution and allocates spare representational capacity to new knowledge, while simultaneously protecting previously learnt representations from catastrophic forgetting. Our approach encourages the learnt representations to be disentangled, which imparts a number of desirable properties: VASE can deal sensibly with ambiguous inputs, it can enhance its own representations through imagination-based exploration, and most importantly, it exhibits semantically meaningful sharing of latents between different datasets. Compared to baselines with entangled representations, our approach is able to reason beyond surface-level statistics and perform semantically meaningful cross-domain inference.
Year
Venue
Keywords
2018
ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018)
data distribution,representation learning,catastrophic forgetting,intelligent behaviour,minimum description length principle
DocType
Volume
ISSN
Conference
31
1049-5258
Citations 
PageRank 
References 
3
0.39
21
Authors
8
Name
Order
Citations
PageRank
Alessandro Achille1668.52
Tom Eccles2175.77
Loïc Matthey323910.16
Christopher Burgess42369.62
Nick Watters591.80
Alexander Lerchner625611.70
Irina Higgins724511.95
Watters, Nicholas830.39