by Keijo Ruohonen
Publisher: Tampere University of Technology 2011
Number of pages: 97
Table of contents: Fundamental sampling distributions and data descriptions; One- and two-sample estimation; Tests of hypotheses; X2-tests; Maximum likelihood estimation; Multiple linear regression; Nonparametric statistics; Stochastic simulation.
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