Question
a.
a(l)
b.
a(l) + e
c.
could be either a(l) or a(l) + e
d.
e
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Q. If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output in case of autoassociative feedback network?
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