Statistics for Corpus Linguistics by Michael Oakes
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Statistics for Corpus Linguistics
By Michael Oakes

Statistics for Corpus Linguistics

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Format: Paperback

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Statistics for Corpus Linguistics by Michael Oakes

Book Description

This book in the Edinburgh Textbooks in Empirical Linguistics series is a comprehensive introduction to the statistics currently used in corpus linguistics. Statistical techniques and corpus applications - whether oriented towards linguistics or language engineering - often go hand in glove, and corpus linguists have used an increasingly wide variety of statistics, drawing on techniques developed in a great many fields. This is the first one-volume introduction to the subject.

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Book Details

ISBN: 9780748608171
ISBN-10: 0748608176
Format: Paperback
(234mm x 156mm x 23mm)
Pages: 272
Imprint: Edinburgh University Press
Publisher: Edinburgh University Press
Publish Date: 1-Feb-1998
Country of Publication: United Kingdom

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