White Papers

Data Mining With Cellular Automata

Overview A cellular automaton is a discrete, dynamical system composed of very simple, uniformly interconnected cells. Cellular automata may be seen as an extreme form of simple, localized, distributed machines. Many researchers are familiar with cellular automata through Conway's Game of Life. Researchers have long been interested in the theoretical aspects of cellular automata. This paper explores the use of cellular automata for data mining, specifically for classification tasks. The paper demonstrates that reasonable generalization behavior can be achieved as an emergent property of these simple automata.

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Publisher
Stanford University
File Format
PDF
Date Published
Oct 1, 2008
Format
White Papers
Topics
Knowledge and Data Management, Data Mining - Analysis

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