NCAIJul 7, 2022

Layers, Folds, and Semi-Neuronal Information Processing

arXiv:2208.06382v11 citationsh-index: 11
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of modeling biological information processing for researchers in cognitive science and biological simulation, but it is incremental as it builds on existing concepts like meta-brains and Braitenberg Vehicles without presenting new empirical results.

The paper tackles the problem of understanding how phenotypic complexity influences information processing in embodied agents, using meta-brain models to demonstrate that folding and layering in structures like the gut and neural networks can introduce functional distortions and representational drift.

What role does phenotypic complexity play in the systems-level function of an embodied agent? The organismal phenotype is a topologically complex structure that interacts with a genotype, developmental physics, and an informational environment. Using this observation as inspiration, we utilize a type of embodied agent that exhibits layered representational capacity: meta-brain models. Meta-brains are used to demonstrate how phenotypes process information and exhibit self-regulation from development to maturity. We focus on two candidate structures that potentially explain this capacity: folding and layering. As layering and folding can be observed in a host of biological contexts, they form the basis for our representational investigations. First, an innate starting point (genomic encoding) is described. The generative output of this encoding is a differentiation tree, which results in a layered phenotypic representation. Then we specify a formal meta-brain model of the gut, which exhibits folding and layering in development in addition to different degrees of representation of processed information. This organ topology is retained in maturity, with the potential for additional folding and representational drift in response to inflammation. Next, we consider topological remapping using the developmental Braitenberg Vehicle (dBV) as a toy model. During topological remapping, it is shown that folding of a layered neural network can introduce a number of distortions to the original model, some with functional implications. The paper concludes with a discussion on how the meta-brains method can assist us in the investigation of enactivism, holism, and cognitive processing in the context of biological simulation.

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