Deep_Variational_Information_Bottleneck
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Tensorflow implementation of deep variational information bottleneck
Deep Variational Information Bottleneck
This repository provides the implementation of Deep Variational Information Bottleneck. The main idea of DVIB is to impose a bottleneck (here in the dimensionality) through which only necessary information for the reconstruction of $X$ can pass. I tried to implement this in the simplest from so that Information Bottleneck can be easily leveraged as a regularizer or metric for other projects.
Requirements
- $X$ is the input,
- $Y$ is the label,
- We look for a latent variable $Z$ that maximizes the mutual information $I(Z;Y)$, meanwhile, it has to minimize $I(Z;X)$.
- For more detials and theoritical proofs please check https://arxiv.org/abs/1612.00410
How to run
python VIBV4.py