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Actual Problems of
Economics and Law

 

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DOI: 10.21202/1993-047X.06.2012.2.30-35

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Authors :
1. Nelli Shamilevna Epifanova, PhD (Economics), Associate Professor
Astrakhan State Technical University



Prediction of industrial enterprises development on the basis of neuronets construction (by example of Astrakhan region)


The article grounds the use of neuronets predicting as a tool for determining the main trends of development of the industrial enterprises of a region. The neuronets architecture is constructed, which is the basis for predicting the main medium-term indicator of industrial enterprises’ efficiency (production index) by all kinds of economic activity, and their estimation is presented.
 


Keywords :

 prediction; neuronets; network architecture; industry; development; production index


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