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Mathematical Models for use in Insect Pest Control

Published online by Cambridge University Press:  31 May 2012

Kenneth E. F. Watt*
Affiliation:
Statistical Research and Services,Research Branch, Ottawa, Canada
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Copyright © Entomological Society of Canada 1961

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