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Bodo Winter (2019). Statistics for linguists: an introduction using R. New York & London: Routledge. pp. xvi + 310.
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Bodo Winter (2019). Statistics for linguists: an introduction using R. New York & London: Routledge. pp. xvi + 310.
Published online by Cambridge University Press: 10 December 2020
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- Copyright © The Author(s), 2020. Published by Cambridge University Press
Footnotes
Bodo Winter and Gillian Gallagher provided very detailed comments on previous versions of this review, for which I am very thankful. Donna Erickson and Seunghun Lee also helped me with the preparation of this final version. Any remaining errors are my responsibility.
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