This repository contains the official code for the NeurIPS 2019 paper "Symmetry-Based Disentangled Representation Learning requires Interaction with Environments" by Hugo Caselles-Dupré, Michael Garcia-Ortiz and David Filliat.
Symmetry-Based Disentangled Representation Learning requires Interaction with Environments
Hugo Caselles-Dupré ¹ ², Michael Garcia-Ortiz ² and David Filliat ¹
¹ Flowers Laboratory (ENSTA Paris& INRIA
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² Softbank Robotics Europe![]()
https://arxiv.org/abs/1904.00243Abstract: Finding a generally accepted formal definition of a disentangled representation in the context of an agent behaving in an environment is an important challenge towards the construction of data-efficient autonomous agents. Higgins et al. recently proposed Symmetry-Based Disentangled Representation Learning, a definition based on a characterization of symmetries in the environment using group theory. We build on their work and make observations, theoretical and empirical, that lead us to argue that Symmetry-Based Disentangled Representation Learning cannot only be based on fixed data samples. Agents should interact with the environment to discover its symmetries.
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Open Colab Notebook to reproduce paper's experiments.
All material related to our paper is available via the following links:
| Link | Description |
|---|---|
| Link ArXiv | Paper PDF. |
| Link Project Page | Project page. |
| Link Video | Summary video. |
| Link Colab | Colab to reproduce experiments. |
| Link Github | Source code. |
| Link Slides | Presentation slides. |
| Link Poster | Poster. |


