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Computational Methods in Biomedical Research (Biostatistics Series 24)

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Published by Chapman & Hall/CRC .
Written in English

Subjects:

  • Applications of Computing,
  • Biology, Life Sciences,
  • Mathematics,
  • Science/Mathematics,
  • Mathematics / Statistics,
  • Biostatistics,
  • Pharmacology,
  • Probability & Statistics - General

Book details:

Edition Notes

ContributionsRavindra Khattree (Editor), Dayanand Naik (Editor)
The Physical Object
FormatHardcover
Number of Pages432
ID Numbers
Open LibraryOL12313742M
ISBN 101584885777
ISBN 109781584885771

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