
TL;DR
The SP theory of intelligence proposes a unified, brain-inspired model that uses information compression and multiple alignment to enhance understanding and processing across AI, cognition, and computing.
Contribution
It introduces the SP machine, a novel model that integrates concepts of information compression, multiple alignment, and probabilistic reasoning for diverse AI applications.
Findings
The SP system effectively models language parsing and production.
It demonstrates capabilities in pattern recognition and reasoning.
The theory unifies multiple AI and cognitive functions through information compression.
Abstract
This article is an overview of the "SP theory of intelligence". The theory aims to simplify and integrate concepts across artificial intelligence, mainstream computing and human perception and cognition, with information compression as a unifying theme. It is conceived as a brain-like system that receives 'New' information and stores some or all of it in compressed form as 'Old' information. It is realised in the form of a computer model -- a first version of the SP machine. The concept of "multiple alignment" is a powerful central idea. Using heuristic techniques, the system builds multiple alignments that are 'good' in terms of information compression. For each multiple alignment, probabilities may be calculated. These provide the basis for calculating the probabilities of inferences. The system learns new structures from partial matches between patterns. Using heuristic techniques,…
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