Fuzzy Modelling Methods for Semantic Information Analysis Using

Nadezhda V. Margazova, Yury V. Andreev, Sergey Y. Andreev

Abstract


In article are described the basic approaches to modeling integrating and generation of interdisciplinary knowledges processes. Semantic data structuring with fuzzy hypergraph methods are described. Introduced the concept of stability and significance factor of semantic relations. The effect on knowledge using character and information space stratification of these factors is described.

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Literaturhinweise


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