UNCERTAIN KNOWLEDGE REPRESENTATION BY MEANS OF TENSOR ALGEBRA


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The article discusses the possibility of representing fuzzy knowledge in complex systems by means of tensor methodology. The tensor methodology is considered as a general system theory method used to analyze complex systems. The method is the result of applying the apparatus of tensor algebra in solving problems of the general theory of systems. A fuzzy logic apparatus is used to represent fuzzy knowledge in a complex system. Using the example of building fuzzy sets on a certain domain, a method is proposed for obtaining a tensor from elements of a fuzzy set and a membership function. The results are illustrated by the description of the world of fuzzy objects of a complex system, which includes the representation of objects and the relations between them. The advantages of using tensor methodology to represent fuzzy knowledge in complex systems are noted.

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作者简介

Alexandra Volosova

RTU-MIREA, Moscow

Email: volosova@mirea.ru
Ph. D., Associate Professor

参考

  1. Петров А.Е. Тензорная методология в теории систем. М.: Радио и связь, 1985. 152 с.
  2. Мак-Коннел Дж.А. Введение в тензорный анализ: С приложениями к геометрии, механике и физике. М.: Книга по Требованию, 2013. 412 с.
  3. Минаев Ю.Н., Филимонова О.Ю. Нечеткая математика на основе тензорных моделей неопределенности. I. Тензорная переменная в системе нечетких множеств / Электронное моделирование. 2008. Т. 3, № 1. С. 43-57.
  4. Афанасьев В.Г. Общество: системность, познание и управление. М.: Политиздат, 1981. 180 с.
  5. Уэно Х., Кояма Т., Окамото Т., Мацуби Б., Исидзука М. Представление и использование знаний / пер. с япон. / под ред. Х. Уэно, М. Исидзука. М.: Мир, 1989. 220 с.
  6. Konar Amit. Artificial intelligence and soft computing: behavioral and cognitive modeling of the human brain. CRC Press LLC 2000. Р. 787.

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