AINCMar 5, 2014

New Ideas for Brain Modelling

arXiv:1403.1080v4
Originality Synthesis-oriented
AI Analysis

This work addresses brain modeling for neuroscience and AI researchers, but it appears incremental as it builds on existing theories and models.

The paper tackles the problem of modeling brain networks by proposing a 'refined' neuron structure that combines neurons to create an analogue-like system with binary reliability, aiming to enable variable value representations in binary systems.

This paper describes some biologically-inspired processes that could be used to build the sort of networks that we associate with the human brain. New to this paper, a 'refined' neuron will be proposed. This is a group of neurons that by joining together can produce a more analogue system, but with the same level of control and reliability that a binary neuron would have. With this new structure, it will be possible to think of an essentially binary system in terms of a more variable set of values. The paper also shows how recent research associated with the new model, can be combined with established theories, to produce a more complete picture. The propositions are largely in line with conventional thinking, but possibly with one or two more radical suggestions. An earlier cognitive model can be filled in with more specific details, based on the new research results, where the components appear to fit together almost seamlessly. The intention of the research has been to describe plausible 'mechanical' processes that can produce the appropriate brain structures and mechanisms, but that could be used without the magical 'intelligence' part that is still not fully understood. There are also some important updates from an earlier version of this paper.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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