Consciousness is entailed by compositional learning of new causal structures in deep predictive processing systems
V.A. Aksyuk

TL;DR
This paper proposes an extension to predictive processing models that incorporates online, single-example compositional learning, linking it to access consciousness and explaining various perceptual phenomena.
Contribution
It introduces a novel hierarchical binding mechanism for rapid structure learning within predictive processing systems, connecting consciousness with learning processes.
Findings
Explains contrast and masking effects in perception
Models postdictive perceptual integration
Unifies multiple theories of consciousness
Abstract
Machine learning algorithms have achieved superhuman performance in specific complex domains. However, learning online from few examples and compositional learning for efficient generalization across domains remain elusive. In humans, such learning includes specific declarative memory formation and is closely associated with consciousness. Predictive processing has been advanced as a principled Bayesian framework for understanding the cortex as implementing deep generative models for both sensory perception and action control. However, predictive processing offers little direct insight into fast compositional learning or of the separation between conscious and unconscious contents. Here, propose that access consciousness arises as a consequence of a particular learning mechanism operating within a predictive processing system. We extend predictive processing by adding online,…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Cognitive Science and Education Research
