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Question

Why is the STAR schema considered most suitable for query processing in a data warehouse?

a.

It uses complex join paths to enhance data exploration.

b.

It increases the number of dimensions to speed up queries.

c.

It simplifies join paths, making query processing straightforward.

d.

It requires no joins between fact and dimension tables.

Answer: (c).It simplifies join paths, making query processing straightforward. Explanation:The STAR schema simplifies join paths, making query processing straightforward and efficient.

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Q. Why is the STAR schema considered most suitable for query processing in a data warehouse?

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