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社区首页 >专栏 >favae Sequence Disentanglement using Information Bottleneck

favae Sequence Disentanglement using Information Bottleneck

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发布2019-04-28 14:07:20
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发布2019-04-28 14:07:20
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文章被收录于专栏:CreateAMindCreateAMind

FAVAE: Sequence Disentanglement using Information Bottleneck Principle

FAVAE: Sequence Disentanglement using Information Bottleneck Principle

https://github.com/favae/favae_ijcai2019 效果非常棒

https://arxiv.org/pdf/1902.08341.pdf

Abstract

We propose the factorized action variational au- toencoder (FAVAE), a state-of-the-art generative model for learning disentangled and interpretable representations from sequential data via the infor- mation bottleneck without supervision. The pur- pose of disentangled representation learning is to obtain interpretable and transferable representa- tions from data. We focused on the disentangled representation of sequential data since there is a wide range of potential applications if disentangle- ment representation is extended to sequential data such as video, speech, and stock market. Sequential data are characterized by dynamic and static fac- tors: dynamic factors are time dependent, and static factors are independent of time. Previous models disentangle static and dynamic factors by explic- itly modeling the priors of latent variables to distin- guish between these factors. However, these mod- els cannot disentangle representations between dy- namic factors, such as disentangling ”picking up” and ”throwing” in robotic tasks. FAVAE can dis- entangle multiple dynamic factors. Since it does not require modeling priors, it can disentangle ”be- tween” dynamic factors. We conducted experi- ments to show that FAVAE can extract disentangled dynamic factors

https://arxiv.org/pdf/1902.08341.pdf

Thus, disentangled representation learning for sequential data opens the door to new areas of research.

srnn的区别

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