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Question

What property of knowledge organisms in the evolutionary approach helps in filtering out noise?

a.

Resistance to sporadic mutagenic factors.

b.

Fixed contexts for knowledge collection.

c.

Limited migration between contexts.

d.

Lack of adjustment mechanisms.

Posted under Big Data Computing

Answer: (a).Resistance to sporadic mutagenic factors. Explanation:Resistance to sporadic mutagenic factors in knowledge organisms helps in filtering out noise by reducing the impact of disruptive factors on the filtering process.

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Q. What property of knowledge organisms in the evolutionary approach helps in filtering out noise?

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