Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain

The SP theory of intelligence, with its realisation in the SP computer model, aims to simplify and integrate observations and concepts across artificial intelligence, mainstream computing, mathematics, and human perception and cognition, with information compression as a unifying theme. This paper d...

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Main Author: James Gerard Wolff
Format: Article
Language:English
Published: Frontiers Media S.A. 2016-11-01
Series:Frontiers in Psychology
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fpsyg.2016.01584/full
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spelling doaj-ee0d22aede2e4946b433a21accd61c742020-11-25T00:17:40ZengFrontiers Media S.A.Frontiers in Psychology1664-10782016-11-01710.3389/fpsyg.2016.01584210140Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the BrainJames Gerard Wolff0CognitionResearch.orgThe SP theory of intelligence, with its realisation in the SP computer model, aims to simplify and integrate observations and concepts across artificial intelligence, mainstream computing, mathematics, and human perception and cognition, 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. Empirical support for the SP theory -- outlined in the paper -- provides indirect support for SP-neural.In the abstract part of the SP theory (SP-abstract), 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.Central to the processing of information in SP-abstract is information compression via the matching and unification of patterns (ICMUP) and, more specifically, information compression via the powerful concept of multiple alignment, borrowed and adapted from bioinformatics. Processes such as pattern recognition, reasoning and problem solving are achieved via the building of multiple alignments, while unsupervised learning is achieved by creating patterns from sensory information and also by creating patterns from multiple alignments in which there is a partial match between one pattern and another.It is envisaged that, in SP-neural, short-lived neural structures equivalent to multiple alignments will be created via an inter-play of excitatory and inhibitory neural signals. It is also envisaged that unsupervised learning will be achieved by the creation of pattern assemblies from sensory information and from the neural equivalents of multiple alignments, much as in the non-neural SP theory -- and significantly different from the `Hebbian' kinds of learning which are widely used in the kinds of artificial neural network that are popular in computer science.The paper discusses several associated issues, with relevant empirical evidence.http://journal.frontiersin.org/Journal/10.3389/fpsyg.2016.01584/fullcell assemblyartificial intelligenceunsupervised learningMultiple alignmentInformation compression
collection DOAJ
language English
format Article
sources DOAJ
author James Gerard Wolff
spellingShingle James Gerard Wolff
Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
Frontiers in Psychology
cell assembly
artificial intelligence
unsupervised learning
Multiple alignment
Information compression
author_facet James Gerard Wolff
author_sort James Gerard Wolff
title Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
title_short Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
title_full Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
title_fullStr Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
title_full_unstemmed Information Compression, Multiple Alignment, and the Representation and Processing of Knowledge in the Brain
title_sort information compression, multiple alignment, and the representation and processing of knowledge in the brain
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2016-11-01
description The SP theory of intelligence, with its realisation in the SP computer model, aims to simplify and integrate observations and concepts across artificial intelligence, mainstream computing, mathematics, and human perception and cognition, 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. Empirical support for the SP theory -- outlined in the paper -- provides indirect support for SP-neural.In the abstract part of the SP theory (SP-abstract), 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.Central to the processing of information in SP-abstract is information compression via the matching and unification of patterns (ICMUP) and, more specifically, information compression via the powerful concept of multiple alignment, borrowed and adapted from bioinformatics. Processes such as pattern recognition, reasoning and problem solving are achieved via the building of multiple alignments, while unsupervised learning is achieved by creating patterns from sensory information and also by creating patterns from multiple alignments in which there is a partial match between one pattern and another.It is envisaged that, in SP-neural, short-lived neural structures equivalent to multiple alignments will be created via an inter-play of excitatory and inhibitory neural signals. It is also envisaged that unsupervised learning will be achieved by the creation of pattern assemblies from sensory information and from the neural equivalents of multiple alignments, much as in the non-neural SP theory -- and significantly different from the `Hebbian' kinds of learning which are widely used in the kinds of artificial neural network that are popular in computer science.The paper discusses several associated issues, with relevant empirical evidence.
topic cell assembly
artificial intelligence
unsupervised learning
Multiple alignment
Information compression
url http://journal.frontiersin.org/Journal/10.3389/fpsyg.2016.01584/full
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