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Question

What methodologies can be applied to processing steps in both image analysis and unstructured information processing?

a.

Clustering and supervised learning

b.

Classification and unsupervised learning

c.

Novelty detection and object recognition

d.

Grammatical analysis and clustering

Posted under Big Data Computing

Answer: (b).Classification and unsupervised learning Explanation:Both image analysis and unstructured information processing can use classification (based on supervised learning) and clustering (based on unsupervised learning) methodologies.

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Q. What methodologies can be applied to processing steps in both image analysis and unstructured information processing?

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