Artificial neural network and chips . . .
Conclusions
HE ANN DEVELOPED HERE SHOWED GOOD
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small number of data values. The ANN
model behaved better than multiple linear
regression analysis. Predicted categories
appear to reproduce the pattern of the ex-
perimental data issued from the jury, re-
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subregions and partial overlapping of cate-
gories. Moreover, the generalization capac-
ities of the network allowed to simulate
plausible predictions for the whole set of
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1
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