Empowerment for Continuous Agent-Environment Systems
Tobias Jung, Daniel Polani, Peter Stone

TL;DR
This paper extends the concept of empowerment to continuous state spaces with unknown dynamics, using Monte Carlo methods and Gaussian process regression, enabling intrinsic motivation and exploration in complex control tasks.
Contribution
It introduces a novel approach to compute empowerment in continuous, unknown environments by combining Monte Carlo approximation and Gaussian process-based model learning.
Findings
Empowerment can be effectively approximated in continuous spaces.
The method facilitates intrinsic motivation and exploration in control tasks.
Empowerment dynamics reveal salient states and influence in environments.
Abstract
This paper develops generalizations of empowerment to continuous states. Empowerment is a recently introduced information-theoretic quantity motivated by hypotheses about the efficiency of the sensorimotor loop in biological organisms, but also from considerations stemming from curiosity-driven learning. Empowemerment measures, for agent-environment systems with stochastic transitions, how much influence an agent has on its environment, but only that influence that can be sensed by the agent sensors. It is an information-theoretic generalization of joint controllability (influence on environment) and observability (measurement by sensors) of the environment by the agent, both controllability and observability being usually defined in control theory as the dimensionality of the control/observation spaces. Earlier work has shown that empowerment has various interesting and relevant…
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Taxonomy
TopicsNeural dynamics and brain function · Gene Regulatory Network Analysis · Ecosystem dynamics and resilience
