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The Formulation of Neural Network Model

Deepshikha Sharma, Sunil Kumar Kashyap

Abstract


Mathematically, a neural network model is presented in this paper. This formulation is efficient and secure to apply to design any network model for information, data analysis, decision, prediction etc. The compact formula is defined over the set of polynomials. The finiteness & discreteness allows this formation efficient and feasibility &isomorphism provides the security. These advantages are carried this formulation. Probability is also applied to transform the result for analyzing the existed network model


Keywords


Neural Network; Probability

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Cite this Article

Deepshikha Sharma, Sunil Kumar Kashyap. The Formulation of Neural Network Model. Recent Trends in Electronics & Communication Systems. 2019; 6(2): 26–32p.




DOI: https://doi.org/10.37591/rtecs.v6i2.3288

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