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Question

What is the intuition behind using intermediate concepts in domain adaptation?

a.

To confuse the classifier

b.

To improve the performance of the classifier

c.

To reduce the features used in sentiment analysis

d.

To create domain-specific classifiers

Posted under Big Data Computing

Answer: (b).To improve the performance of the classifier Explanation:The intuition behind using intermediate concepts in domain adaptation is to better guide the semantic and affective transfer among domains and improve the performance of the classifier.

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Q. What is the intuition behind using intermediate concepts in domain adaptation?

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