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Question

Why is parameter smoothing used in analytics based on textual data?

a.

To increase word sequence probabilities

b.

To eliminate the need for large corpora

c.

To reduce the number of possible multiwords

d.

To address context-based challenges

Posted under Big Data Computing

Answer: (a).To increase word sequence probabilities Explanation:Parameter smoothing is used in analytics based on textual data to increase word sequence probabilities.

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Q. Why is parameter smoothing used in analytics based on textual data?

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