Maximum Likelihood Estimation of Fitness Components in Experimental Evolution
Published 2019 View Full Article
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Title
Maximum Likelihood Estimation of Fitness Components in Experimental Evolution
Authors
Keywords
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Journal
GENETICS
Volume 211, Issue 3, Pages 1005-1017
Publisher
Genetics Society of America
Online
2019-01-25
DOI
10.1534/genetics.118.301893
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