Modern statistics, methods and applications by American Mathematical Society Short Course on Modern Statistics: Methods and Applications (1980 San Antonio, Tex.)

Cover of: Modern statistics, methods and applications | American Mathematical Society Short Course on Modern Statistics: Methods and Applications (1980 San Antonio, Tex.)

Published by American Mathematical Society in Providence, R.I .

Written in English

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Subjects:

  • Mathematical statistics -- Congresses.

Edition Notes

Book details

Statement[edited by Robert V. Hogg].
SeriesProceedings of symposia in applied mathematics ;, v. 23
ContributionsHogg, Robert V., American Mathematical Society.
Classifications
LC ClassificationsQA276.A1 A45 1980
The Physical Object
Paginationvi, 110 p. :
Number of Pages110
ID Numbers
Open LibraryOL4101607M
ISBN 10082180023X
LC Control Number80016093

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