Active inference is a unifying theory for perception and action resting upon the idea that the brain maintains an internal model of the world by minimizing free energy. From a behavioral perspective, active inference agents can be seen as self-evidencing beings that act to fulfill their optimistic predictions, namely preferred outcomes or goals. In contrast, reinforcement learning requires human-designed rewards to accomplish any desired outcome. Although active inference could provide a more natural self-supervised objective for control, its applicability has been limited because of the shortcomings in scaling the approach to complex environments. In this work, we propose a contrastive objective for active inference that strongly reduces t...
Active inference is a probabilistic framework for modelling the behaviour of biological and artifici...
The first comprehensive treatment of active inference, an integrative perspective on brain, cognitio...
Adaptive agents must act in intrinsically uncertain environments with complex latent structure. Here...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
Intelligent agents must pursue their goals in complex environments with partial information and ofte...
Active inference is a first principle account of how autonomous agents operate in dynamic, nonstatio...
Active inference offers a first principle account of sentient behavior, from which special and impor...
Active inference is a process theory of the brain that states that all living organisms infer action...
Active inference is a process theory of the brain that states that all living organisms infer action...
Active inference offers a first principle account of sentient behavior, from which special and impor...
Active inference is an ambitious theory that treats perception, inference, and action selection of a...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
In reinforcement learning (RL), agents often operate in partially observed and uncertain environment...
Active inference is a probabilistic framework for modelling the behaviour of biological and artifici...
The first comprehensive treatment of active inference, an integrative perspective on brain, cognitio...
Adaptive agents must act in intrinsically uncertain environments with complex latent structure. Here...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
Intelligent agents must pursue their goals in complex environments with partial information and ofte...
Active inference is a first principle account of how autonomous agents operate in dynamic, nonstatio...
Active inference offers a first principle account of sentient behavior, from which special and impor...
Active inference is a process theory of the brain that states that all living organisms infer action...
Active inference is a process theory of the brain that states that all living organisms infer action...
Active inference offers a first principle account of sentient behavior, from which special and impor...
Active inference is an ambitious theory that treats perception, inference, and action selection of a...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
In reinforcement learning (RL), agents often operate in partially observed and uncertain environment...
Active inference is a probabilistic framework for modelling the behaviour of biological and artifici...
The first comprehensive treatment of active inference, an integrative perspective on brain, cognitio...
Adaptive agents must act in intrinsically uncertain environments with complex latent structure. Here...