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Question

How does data mining differ from traditional analysis in terms of data usage from the data warehouse?

a.

Data mining uses summary data, while traditional analysis uses detailed data

b.

Both use detailed data at the lowest level of granularity

c.

Traditional analysis uses detailed data, while data mining deals with summary data

d.

There is no difference in data usage between data mining and traditional analysis

Answer: (a).Data mining uses summary data, while traditional analysis uses detailed data Explanation:Data mining deals with lots of detailed data, while traditional analysis often begins with summary data at a high level.

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Q. How does data mining differ from traditional analysis in terms of data usage from the data warehouse?

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