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Question

Why are linearly separable problems of interest of neural network researchers?

a.

Because they are the only class of problem that network can solve successfully

b.

Because they are the only class of problem that Perceptron can solve successfully

c.

Because they are the only mathematical functions that are continue

d.

Because they are the only mathematical functions you can draw

Answer: (b).Because they are the only class of problem that Perceptron can solve successfully

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Q. Why are linearly separable problems of interest of neural network researchers?

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