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Question

What are the two main goals of the learning from data process?

a.

Verification of the user's hypothesis and description of patterns

b.

Discovery of new patterns and verification of data accuracy

c.

Prediction of the future and description of the past

d.

Classification and clustering of data

Posted under Big Data Computing

Answer: (a).Verification of the user's hypothesis and description of patterns Explanation:The two main goals of the learning from data process are the verification of the user's hypothesis and the discovery of new patterns, which can further be divided into prediction and description.

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Q. What are the two main goals of the learning from data process?

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