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Question

How does the opinion-mining engine in sentic computing classify affective information?

a.

Only in a dimensional format

b.

Only in a categorical way

c.

Both in a categorical way and in a dimensional format

d.

Neither in a categorical way nor in a dimensional format

Posted under Big Data Computing

Answer: (c).Both in a categorical way and in a dimensional format Explanation:The opinion-mining engine in sentic computing classifies affective information both in a categorical way (according to a wider number of emotion categories) and in a dimensional format.

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Q. How does the opinion-mining engine in sentic computing classify affective information?

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