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Question

Two classes are said to be inseparable when?

a.

there may exist straight lines that doesn’t touch each other

b.

there may exist straight lines that can touch each other

c.

there is only one straight line that separates them

d.

all of the mentioned

Posted under Neural Networks

Answer: (c).there is only one straight line that separates them

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Q. Two classes are said to be inseparable when?

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