General Mathematics


Fuzzy Uncertainty Assessment in RBF Neural Networks Using Neutrosophic Sets for Multiclass Classification

Authors: Adrian Rubio-Solis, George Panoutsos

In this paper we introduce a fuzzy uncertainty assessment methodology based on Neutrosophic Sets (NS). This is achieved via the implementation of a Radial Basis Function Neural-Network (RBF-NN) for multiclass classification that is functionally equivalent to a class of Fuzzy Logic Systems (FLS).

Comments: 8 Pages.

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Submission history

[v1] 2017-01-03 10:31:36

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