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Question

What is the difference between the use of IDF and ETF weights in literary science and related approaches in the humanities?

a.

IDF considers a terminology for each document, while ETF focuses on a universe of discourse.

b.

IDF uses a correction for observed TF, while ETF relies on raw term frequencies.

c.

IDF is suitable for document retrieval, while ETF is not relevant for retrieval.

d.

IDF focuses on the entire document collection, while ETF is document-specific.

Posted under Big Data Computing

Answer: (a).IDF considers a terminology for each document, while ETF focuses on a universe of discourse. Explanation:The difference between the use of IDF and ETF weights in literary science and related approaches in the humanities is that IDF considers a terminology for each document, while ETF focuses on a universe of discourse.

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Q. What is the difference between the use of IDF and ETF weights in literary science and related approaches in the humanities?

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