Independently Controllable Factors
Valentin Thomas, Jules Pondard, Emmanuel Bengio, Marc Sarfati,, Philippe Beaudoin, Marie-Jean Meurs, Joelle Pineau, Doina Precup, Yoshua, Bengio

TL;DR
This paper introduces a framework where an agent interacts with its environment to discover and disentangle independently controllable factors of variation, advancing unsupervised representation learning.
Contribution
It proposes a novel objective for discovering independently controllable factors through interaction, without relying on external rewards.
Findings
Successfully disentangles controllable factors in environment
Operates without extrinsic reward signals
Demonstrates potential for unsupervised representation learning
Abstract
It has been postulated that a good representation is one that disentangles the underlying explanatory factors of variation. However, it remains an open question what kind of training framework could potentially achieve that. Whereas most previous work focuses on the static setting (e.g., with images), we postulate that some of the causal factors could be discovered if the learner is allowed to interact with its environment. The agent can experiment with different actions and observe their effects. More specifically, we hypothesize that some of these factors correspond to aspects of the environment which are independently controllable, i.e., that there exists a policy and a learnable feature for each such aspect of the environment, such that this policy can yield changes in that feature with minimal changes to other features that explain the statistical variations in the observed data.…
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Taxonomy
TopicsNeural Networks and Applications · Reinforcement Learning in Robotics · Domain Adaptation and Few-Shot Learning
