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Question

In case of pattern by feedback nets in pattern recognition task, what is the behaviour expected?

a.

accretive

b.

interpolative

c.

can be either accretive or interpolative

d.

none of the mentioned

Answer: (a).accretive

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Q. In case of pattern by feedback nets in pattern recognition task, what is the behaviour expected?

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