Statistics with JMP : hypothesis tests, ANOVA, and regression

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Statistics with JMP : hypothesis tests, ANOVA, and regression

Peter Goos, David Meintrup

Wiley, 2016

  • : cloth

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Includes index

内容説明・目次

内容説明

Statistics with JMP: Hypothesis Tests, ANOVA and Regression Peter Goos, University of Leuven and University of Antwerp, Belgium David Meintrup, University of Applied Sciences Ingolstadt, Germany A first course on basic statistical methodology using JMP This book provides a first course on parameter estimation (point estimates and confidence interval estimates), hypothesis testing, ANOVA and simple linear regression. The authors approach combines mathematical depth with numerous examples and demonstrations using the JMP software. Key features: Provides a comprehensive and rigorous presentation of introductory statistics that has been extensively classroom tested. Pays attention to the usual parametric hypothesis tests as well as to non-parametric tests (including the calculation of exact p-values). Discusses the power of various statistical tests, along with examples in JMP to enable in-sight into this difficult topic. Promotes the use of graphs and confidence intervals in addition to p-values. Course materials and tutorials for teaching are available on the book's companion website. Masters and advanced students in applied statistics, industrial engineering, business engineering, civil engineering and bio-science engineering will find this book beneficial. It also provides a useful resource for teachers of statistics particularly in the area of engineering.

目次

Dedication iii Preface xiii Acknowledgements xvii Part One Estimators and tests 1 1 Estimating population parameters 3 2 Interval estimators 37 3 Hypothesis tests 71 Part Two One population 103 4 Hypothesis tests for a population mean, proportion or variance 105 5 Two hypothesis tests for the median of a population 149 6 Hypothesis tests for the distribution of a population 175 Part Three Two populations 7 Independent versus paired samples 213 8 Hypothesis tests for means, proportions and variances of two independent samples 219 9 A nonparametric hypothesis test for the medians of two independent samples 263 10 Hypothesis tests for the population mean of two paired samples 285 11 Two nonparametric hypothesis tests for paired samples 305 Part Four More than two populations 325 12 Hypothesis tests for more than two population means: one-way analysis of variance 327 13 Nonparametric alternatives to an analysis of variance 375 14 Hypothesis tests for more than two population variances 401 Part Five More useful tests and procedures 417 15 Design of experiments and data collection 419 16 Testing equivalence 427 17 Estimation and testing of correlation and association 445 18 An introduction to regression modeling 481 19 Simple linear regression 493 A Binomial distribution 589 B Standard normal distribution 593 C X2-distribution 595 D Student's t-distribution 597 E Wilcoxon signed-rank test 599 F Critical values for the Shapiro-Wilk test 605 G Fisher's F-distribution 607 H Wilcoxon rank-sum test 615 I Studentized range or Q-distribution 625 J Two-sided Dunnett test 629 K One-sided Dunnett test 633 L Kruskal-Wallis-Test 637 M Rank correlation test 641 Index 643

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