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Question

What is the method for applying Type 3 changes to the data warehouse?

a.

Overwrite the attribute value in the dimension table row with the new value

b.

Add a new dimension table row with the new value of the changed attribute

c.

Delete the dimension table row

d.

Create a new dimension table for each change

Answer: (b).Add a new dimension table row with the new value of the changed attribute Explanation:The method for applying Type 3 changes to the data warehouse is to add a new dimension table row with the new value of the changed attribute.

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Q. What is the method for applying Type 3 changes to the data warehouse?

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