Literature DB >> 18541503

Representation of nonlinear random transformations by non-gaussian stochastic neural networks.

Claudio Turchetti1, Paolo Crippa, Massimiliano Pirani, Giorgio Biagetti.   

Abstract

The learning capability of neural networks is equivalent to modeling physical events that occur in the real environment. Several early works have demonstrated that neural networks belonging to some classes are universal approximators of input-output deterministic functions. Recent works extend the ability of neural networks in approximating random functions using a class of networks named stochastic neural networks (SNN). In the language of system theory, the approximation of both deterministic and stochastic functions falls within the identification of nonlinear no-memory systems. However, all the results presented so far are restricted to the case of Gaussian stochastic processes (SPs) only, or to linear transformations that guarantee this property. This paper aims at investigating the ability of stochastic neural networks to approximate nonlinear input-output random transformations, thus widening the range of applicability of these networks to nonlinear systems with memory. In particular, this study shows that networks belonging to a class named non-Gaussian stochastic approximate identity neural networks (SAINNs) are capable of approximating the solutions of large classes of nonlinear random ordinary differential transformations. The effectiveness of this approach is demonstrated and discussed by some application examples.

Mesh:

Year:  2008        PMID: 18541503     DOI: 10.1109/TNN.2007.2000055

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw        ISSN: 1045-9227


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