On Defining Complex Uncertainty Data Points by Type-2 Fuzzy Number: Two Specials Cases

@article{Zakaria2013OnDC,
  title={On Defining Complex Uncertainty Data Points by Type-2 Fuzzy Number: Two Specials Cases},
  author={Rozaimi Zakaria and Abd. Fatah Wahab},
  journal={International Journal of Mathematical Analysis},
  year={2013},
  volume={7},
  pages={1285-1300}
}
  • R. ZakariaA. Wahab
  • Published 2013
  • Computer Science
  • International Journal of Mathematical Analysis
In this paper, we will discuss about the defining complex uncertainty data points based on the definition of type-2 fuzzy number (T2FN) concepts. This defining process of complex uncertainty data points have two cases that are the complex uncertainty data points which defined when the complex uncertainty happened at their membership function values, and the complex uncertainty data points are defined when the complex uncertainty happened at their footprint. After the complex uncertainty data… 

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