English

Modeling motor control in continuous-time Active Inference: a survey

Neurons and Cognition 2024-02-27 v1

Abstract

The way the brain selects and controls actions is still widely debated. Mainstream approaches based on Optimal Control focus on stimulus-response mappings that optimize cost functions. Ideomotor theory and cybernetics propose a different perspective: they suggest that actions are selected and controlled by activating action effects and by continuously matching internal predictions with sensations. Active Inference offers a modern formulation of these ideas, in terms of inferential mechanisms and prediction-error-based control, which can be linked to neural mechanisms of living organisms. This article provides a technical illustration of Active Inference models in continuous time and a brief survey of Active Inference models that solve four kinds of control problems; namely, the control of goal-directed reaching movements, active sensing, the resolution of multisensory conflict during movement and the integration of decision-making and motor control. Crucially, in Active Inference, all these different facets of motor control emerge from the same optimization process - namely, the minimization of Free Energy - and do not require designing separate cost functions. Therefore, Active Inference provides a unitary perspective on various aspects of motor control that can inform both the study of biological control mechanisms and the design of artificial and robotic systems.

Keywords

Cite

@article{arxiv.2310.05144,
  title  = {Modeling motor control in continuous-time Active Inference: a survey},
  author = {Matteo Priorelli and Federico Maggiore and Antonella Maselli and Francesco Donnarumma and Domenico Maisto and Francesco Mannella and Ivilin Peev Stoianov and Giovanni Pezzulo},
  journal= {arXiv preprint arXiv:2310.05144},
  year   = {2024}
}
R2 v1 2026-06-28T12:43:52.187Z