Title of article :
An application of neural networks to fractal function interpolation
Author/Authors :
Vasily M. Severyanov، نويسنده , , V.M، نويسنده ,
Pages :
3
From page :
255
To page :
257
Abstract :
When processing experimental information (for instance, some spectrometric data), often we have to deal with ragged shapes more suited to be approximated by fractal structures rather than by ordinary differentiable functions. Given a set of data points {xi,f(xi))|i = 0,1,…,N}, x0 < x1 < … < xN, it is possible to construct a so-calle Hyperbolic Iterated Function System F = {R2;f1,f2,…,fN}, where fi is a shear transformation, whose attractor is the graph of the fractal interpolation function interpolating the data. Do not only iterated function systems describe fractals, but they also permit to build the synaptic weight matrix of an asymmetric binary neural network realizing the dynamics of the iterated function system. So we can use such neural networks to build fractal sets and fractal interpolation functions.
Keywords :
Fractals , NEURAL NETWORKS , Interpolation
Journal title :
Astroparticle Physics
Record number :
2001256
Link To Document :
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