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Question

Why is excluding and discarding all flags and textual data from dimension tables not a good option?

a.

It simplifies the data structure.

b.

It reduces the size of the fact table.

c.

Valuable information may be lost.

d.

It improves query performance.

Answer: (c).Valuable information may be lost. Explanation:Excluding and discarding all flags and textual data is not a good option because valuable information may be lost.

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Q. Why is excluding and discarding all flags and textual data from dimension tables not a good option?

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