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Question

If a(l) gives output b(l) and a’=a(l)+m,where m is small quantity and if a’ gives ouput b(l) then?

a.

network exhibits accretive behaviour

b.

network exhibits interpolative behaviour

c.

exhibits both accretive and interpolative behaviour

d.

none of the mentioned

Posted under Neural Networks

Answer: (a).network exhibits accretive behaviour

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Q. If a(l) gives output b(l) and a’=a(l)+m,where m is small quantity and if a’ gives ouput b(l) then?

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