Study on Information Compression via the Matching and Unification of Patterns: An Approach towards Mathematical Foundations

Wolff, J. Gerard (2021) Study on Information Compression via the Matching and Unification of Patterns: An Approach towards Mathematical Foundations. In: New Ideas Concerning Science and Technology Vol. 13. B P International, pp. 132-169. ISBN 978-93-91312-02-2

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Abstract

This paper describes a novel perspective on the foundations of mathematics: how mathematics may be seen to be largely about “information compression (IC) via the matching and unification of patterns” (ICMUP). That is itself a novel approach to IC, couched in terms of nonmathematical primitives, as is necessary in any investigation of the foundations of mathematics. This new perspective on the foundations of mathematics reflects the facts that mathematics is almost exclusively the product of human brains, and has been developed, as an aid to human thinking, mathematics is likely to be consonant with much evidence for the importance of IC in human learning, perception, and cognition. This perspective on the foundations of mathematics has grown out of a long-term programme of research developing the SP Theory of Intelligence and its realization in the SP Computer Model, a system in which a generalised version of ICMUP—the powerful concept of SP-multiple-alignment—plays a central role. The most comprehensive account of the SP System is in the book Unifying Computing and Cognition , which includes a detailed description of the SP Computer Model with many examples of what the model can do. This paper shows with an example how mathematics, without any special provision, may achieve compression of information. Then, it describes examples showing how variants of ICMUP may be seen in widely used structures and operations in mathematics. Examples are also given to show how several aspects of the mathematics-related disciplines of logic and computing may be understood as ICMUP. Also discussed is the intimate relation between IC and concepts of probability, with arguments that there are advantages in approaching AI, cognitive science, and concepts of probability via ICMUP. Also discussed is how the close relation between IC and concepts of probability relates to the established view that some parts of mathematics are intrinsically probabilistic, and how that latter view may be reconciled with the all-or-nothing, “exact,” forms of calculation or inference that are familiar in mathematics and logic. There are many potential benefits and applications of the mathematics-as-IC perspective.

Item Type: Book Section
Subjects: STM Repository > Multidisciplinary
Depositing User: Managing Editor
Date Deposited: 28 Oct 2023 07:02
Last Modified: 28 Oct 2023 07:02
URI: http://classical.goforpromo.com/id/eprint/4381

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