Author:
Filatova O E,Bashkatova Yu V,Shakirova L S,Filatov M A
Abstract
Abstract
Work of artificial neural networks does not ensure the identification of order parameters (which are the principal diagnostic characters xi
in biomedicine). We suggest to eliminate the 1st type uncertainties (when samplings xi
statistically match for different physiological states of a human body) by introducing random setting of initial weight values wio
of xi
and subsequent multiple repetition (n≥1000) of artificial neural network settings. The xi
ranking is made according to the weight samplings wi
collected after such settings are applied.
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