NCAIMar 22, 2019

Nonmodular architectures of cognitive systems based on active inference

arXiv:1903.09542v111 citations
Originality Incremental advance
AI Analysis

This work addresses limitations in cognitive science modeling for researchers, offering an alternative to modular approaches, though it is incremental as it builds on existing active inference frameworks.

The paper tackles the problem of modeling cognitive systems with modular architectures that separate perception and action, showing that such models fail under unmodeled external forces. It proposes a nonmodular active inference architecture that demonstrates robustness to unknown inputs, with the mechanism equivalent to integral control in linear models.

In psychology and neuroscience it is common to describe cognitive systems as input/output devices where perceptual and motor functions are implemented in a purely feedforward, open-loop fashion. On this view, perception and action are often seen as encapsulated modules with limited interaction between them. While embodied and enactive approaches to cognitive science have challenged the idealisation of the brain as an input/output device, we argue that even the more recent attempts to model systems using closed-loop architectures still heavily rely on a strong separation between motor and perceptual functions. Previously, we have suggested that the mainstream notion of modularity strongly resonates with the separation principle of control theory. In this work we present a minimal model of a sensorimotor loop implementing an architecture based on the separation principle. We link this to popular formulations of perception and action in the cognitive sciences, and show its limitations when, for instance, external forces are not modelled by an agent. These forces can be seen as variables that an agent cannot directly control, i.e., a perturbation from the environment or an interference caused by other agents. As an alternative approach inspired by embodied cognitive science, we then propose a nonmodular architecture based on the active inference framework. We demonstrate the robustness of this architecture to unknown external inputs and show that the mechanism with which this is achieved in linear models is equivalent to integral control.

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