Big data and the SP theory of intelligence
J. Gerard Wolff

TL;DR
The paper discusses how the SP theory of intelligence and its SP machine implementation can address big data challenges through unified knowledge representation, unsupervised learning, data compression, and efficient processing.
Contribution
It introduces the application of the SP system to big data management, emphasizing its potential for universal knowledge processing and handling data variety, velocity, and veracity.
Findings
Potential for data compression reducing storage needs
Supports unsupervised learning and pattern recognition
Facilitates analysis of streaming data and error management
Abstract
This article is about how the "SP theory of intelligence" and its realisation in the "SP machine" may, with advantage, be applied to the management and analysis of big data. The SP system -- introduced in the article and fully described elsewhere -- may help to overcome the problem of variety in big data: it has potential as "a universal framework for the representation and processing of diverse kinds of knowledge" (UFK), helping to reduce the diversity of formalisms and formats for knowledge and the different ways in which they are processed. It has strengths in the unsupervised learning or discovery of structure in data, in pattern recognition, in the parsing and production of natural language, in several kinds of reasoning, and more. It lends itself to the analysis of streaming data, helping to overcome the problem of velocity in big data. Central in the workings of the system is…
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