DocumentCode :
60798
Title :
Big Data and the SP Theory of Intelligence
Author :
Wolff, James Gerard
Author_Institution :
CognitionResearch.org, Menai Bridge, UK
Volume :
2
fYear :
2014
fDate :
2014
Firstpage :
301
Lastpage :
315
Abstract :
This paper is about how the SP theory of intelligence and its realization in the SP machine may, with advantage, be applied to the management and analysis of big data. The SP system-introduced in this paper 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, 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 lossless compression of information: making big data smaller and reducing problems of storage and management. There is potential for substantial economies in the transmission of data, for big cuts in the use of energy in computing, for faster processing, and for smaller and lighter computers. The system provides a handle on the problem of veracity in big data, with potential to assist in the management of errors and uncertainties in data. It lends itself to the visualization of knowledge structures and inferential processes. A high-parallel, open-source version of the SP machine would provide a means for researchers everywhere to explore what can be done with the system and to create new versions of it.
Keywords :
Big Data; data analysis; data compression; data mining; data structures; natural language processing; unsupervised learning; Bid Data analysis; Big Data management; SP machine; SP theory of intelligence; data structure discovery; error management; high-parallel open-source version; inferential processes; knowledge structure visualization; lossless compression; natural language production; pattern recognition; streaming data analysis; unsupervised learning; Artificial intelligence; Cognitive science; Computational efficiency; Data compression; Data storage systems; Pattern recognition; Unsupervised learning; Artificial intelligence; big data; cognitive science; computational efficiency; data compression; data-centric computing; energy efficiency; pattern recognition; uncertainty; unsupervised learning;
fLanguage :
English
Journal_Title :
Access, IEEE
Publisher :
ieee
ISSN :
2169-3536
Type :
jour
DOI :
10.1109/ACCESS.2014.2315297
Filename :
6782396
Link To Document :
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