The SP theory of intelligence and the representation and processing of knowledge in the brain
J Gerard Wolff

TL;DR
The paper presents the SP theory of intelligence and its neural implementation, proposing a unified model for knowledge representation and processing in the brain based on information compression and multiple alignment.
Contribution
It introduces the SP-neural model, a novel neural implementation of the SP theory, linking abstract knowledge structures to neural mechanisms and processes.
Findings
Proposes neural structures called pattern assemblies for knowledge representation.
Describes how multiple alignment facilitates recognition, reasoning, and learning.
Provides empirical evidence supporting the neural plausibility of the model.
Abstract
The "SP theory of intelligence", with its realisation in the "SP computer model", aims to simplify and integrate observations and concepts across AI-related fields, with information compression as a unifying theme. This paper describes how abstract structures and processes in the theory may be realised in terms of neurons, their interconnections, and the transmission of signals between neurons. This part of the SP theory -- "SP-neural" -- is a tentative and partial model for the representation and processing of knowledge in the brain. In the SP theory (apart from SP-neural), all kinds of knowledge are represented with "patterns", where a pattern is an array of atomic symbols in one or two dimensions. In SP-neural, the concept of a "pattern" is realised as an array of neurons called a "pattern assembly", similar to Hebb's concept of a "cell assembly" but with important differences.…
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