A mathematical framework for learning and adaption: (generalized) random systems with complete connections
TL;DR: It is shown that the theory of (generalized) random systems with complete connections may serve as a mathematical framework for learning and adaption.
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Abstract: The aim of this paper is to show that the theory of (generalized) random systems with complete connection may serve as a mathematical framework for learning and adaption. Chapter 1 is of an introductory nature and gives a general description of the problems with which one is faced. In Chapter 2 the mathematical model and some results about it are explained. Chapter 3 deals with special learning and adaption models
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General competitive analysis
Kenneth J. Arrow,Frank Hahn +1 more
- 01 Jan 1971
TL;DR: General competitive analysis, General competitive analysis as mentioned in this paper, General Competitive Analysis (GCA), general competitive analysis (GCA), GCA, GCA(GCA), GCA
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