Learning to Drop Out: An Adversarial Approach to Training Sequence VAEs
- URL: http://arxiv.org/abs/2209.12590v1
- Date: Mon, 26 Sep 2022 11:21:19 GMT
- Title: Learning to Drop Out: An Adversarial Approach to Training Sequence VAEs
- Authors: {\DJ}or{\dj}e Miladinovi\'c, Kumar Shridhar, Kushal Jain, Max B.
Paulus, Joachim M. Buhmann, Carl Allen
- Abstract summary: Applying variational autoencoders (VAEs) to sequential data offers a method for controlled sequence generation, manipulation, and structured representation learning.
We show theoretically that this removes pointwise mutual information provided by the decoder input, which is compensated for by utilizing the latent space.
Compared to uniform dropout on standard text benchmark datasets, our targeted approach increases both sequence performance and the information captured in the latent space.
- Score: 16.968490007064872
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In principle, applying variational autoencoders (VAEs) to sequential data
offers a method for controlled sequence generation, manipulation, and
structured representation learning. However, training sequence VAEs is
challenging: autoregressive decoders can often explain the data without
utilizing the latent space, known as posterior collapse. To mitigate this,
state-of-the-art models weaken the powerful decoder by applying uniformly
random dropout to the decoder input. We show theoretically that this removes
pointwise mutual information provided by the decoder input, which is
compensated for by utilizing the latent space. We then propose an adversarial
training strategy to achieve information-based stochastic dropout. Compared to
uniform dropout on standard text benchmark datasets, our targeted approach
increases both sequence modeling performance and the information captured in
the latent space.
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