Kybernetika 47 no. 3, 356-369, 2011

Model of adaptation under indeterminacy

Cyril Klimeš

Abstract:

Information retrieval in information systems (IS) with large amounts of data is not only a matter of an effective IS architecture and design and technical parameters of computer technology used for operation of the IS, but also of an easy and intuitive orientation in a number of offers and information provided by the IS. Such retrievals in IS are, however, frequently carried out with indeterminate information, which requires other models of orientation in the environment of the IS.

Keywords:

fuzzy sets, information retrieval, modelling of information systems under indeterminacy, adaptive model

Classification:

93E12, 62A10

References:

  1. S. Brin and L. Page: The Anatomy of a Large-Scale Hypertextual Web Search Engine. Computer Science Department, Stanford University, Stanford 2001.   CrossRef
  2. J. Bureš, J. Procházka, C. Klimeš, B. Walek and M. Pešl: Fuzzy reasoning model for decision making under uncertainty. In: 16th Internat. Conference on Soft Computing Mendel 2010. Brno 2010.   CrossRef
  3. C. Klimeš and J. Procházka: Reasoning in software support and maintenance. In: Abstracts of Contributions to 5th Internat. Workshop on Data - Algorithm - Decision Making. DAR - UTIA 2009/3, Praha 2009.   CrossRef
  4. C. Klimeš and J. Procházka: Research paper: Using LFLC for decision making in SW support and maintenance. Research intention DAR - OASA 2/2009, Ostrava, 6 pp.   CrossRef
  5. V. Novák: Fuzzy Relation Equations with Words. Springer, Heidelberg 2004. pp. 167-185.   CrossRef
  6. V. Novák, I. Perfilieva and J. Močkoř: Mathematical Principles of Fuzzy Logic. Kluwer Academic Publishers, Boston/Dordrecht/London 1999.   CrossRef