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Question

What is the proportion between the parts of knowledge tokens that influences a KO's fitness?

a.

The number of assertions it can excrete.

b.

The source of the knowledge token.

c.

The size and complexity of the knowledge token.

d.

The number of assertions it can consume versus excrete.

Posted under Big Data Computing

Answer: (d).The number of assertions it can consume versus excrete. Explanation:The fitness of a KO depends on the proportion between the parts of knowledge tokens it can consume versus excrete.

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Q. What is the proportion between the parts of knowledge tokens that influences a KO's fitness?

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