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Produktbild: Statistics for Terrified Biologists

Statistics for Terrified Biologists 2nd Edition

45,99 €

inkl. gesetzl. MwSt., Versandkostenfrei


Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

16.08.2019

Verlag

Wiley

Seitenzahl

432

Maße (L/B/H)

22,8/15,5/2 cm

Gewicht

680 g

Auflage

2. Auflage

Sprache

Englisch

ISBN

978-1-119-56367-9

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

16.08.2019

Verlag

Wiley

Seitenzahl

432

Maße (L/B/H)

22,8/15,5/2 cm

Gewicht

680 g

Auflage

2. Auflage

Sprache

Englisch

ISBN

978-1-119-56367-9

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Statistics for Terrified Biologists
  • Preface to the second edition xv

    Preface to the first edition xvii

    1 How to use this book 1

    Introduction 1

    The text of the chapters 1

    What should you do if you run into trouble? 2

    Elephants 3

    The numerical examples in the text 3

    Boxes 4

    Spare-time activities 4

    Executive summaries 5

    Why go to all that bother? 5

    The bibliography 7

    2 Introduction 9

    What are statistics? 9

    Notation 10

    Notation for calculating the mean 12

    3 Summarising variation 13

    Introduction 13

    Different summaries of variation 14

    Range 14

    Total deviation 14

    Mean deviation 15

    Variance 16

    Why n¿1? 17

    Why are the deviations squared? 18

    The standard deviation 19

    The next chapter 21

    Spare-time activities 21

    4 When are sums of squares NOT sums of squares? 23

    Introduction 23

    Calculating machines offer a quicker method of calculating the sum of squares 24

    Added squares 24

    The correction factor 24

    Avoid being confused by the term sum of squares 24

    Summary of the calculator method for calculations as far as the standard deviation 25

    Spare-time activities 26

    5 The normal distribution 27

    Introduction 27

    Frequency distributions 27

    The normal distribution 28

    What percentage is a standard deviation worth? 30

    Are the percentages always the same as these? 30

    Other similar scales in everyday life 33

    The standard deviation as an estimate of the frequency of a number occurring in a sample 33

    From percentage to probability 34

    Executive Summary 1 - The standard deviation 36

    6 The relevance of the normal distribution to biological data 39

    To recap 39

    Is our observed distribution normal? 41

    Checking for normality 42

    What can we do about a distribution that clearly is not normal? 42

    Transformation 42

    Grouping samples 47

    Doing nothing! 47

    How many samples are needed? 47

    Type 1 and Type 2 errors 48

    Calculating how many samples are needed 49

    7 Further calculations from the normal distribution 51

    Introduction 51

    Is A bigger than B? 52

    The yardstick for deciding 52

    The standard error of a difference between two means of three eggs 53

    Derivation of the standard error of a difference between two means 53

    Step 1: from variance of single data to variance of means 55

    Step 2: From variance of single data to variance of differences 57

    Step 3: The combination of Steps 1 and 2: the standard error of difference between means (s.e.d.m.) 58

    Recap of the calculation of s.e.d.m. from the variance calculated from the individual values 61

    The importance of the standard error of differences between means 61

    Summary of this chapter 62

    Executive Summary 2 - Standard error of a difference between two means 66

    Spare-time activities 67

    8 Thet-test 69

    Introduction 69

    The principle of the t-test 70

    The t-test in statistical terms 71

    Why t? 71

    Tables of the t-distribution 72

    The standard t-test 75

    The procedure 76

    The actual t-test 81

    t-test for means associated with unequal variances 81

    The s.e.d.m. when variances are unequal 82

    A worked example of the t-test for means associated with unequal variances 85

    The paired t-test 87

    Pair when possible 90

    Executive Summary 3 - The t-test 92

    Spare-time activities 94

    9 One tail or two? 95

    Introduction 95

    Why is the analysis of variance F-test one-tailed? 95

    The two-tailed F-test 96

    Howmany tails has the t-test? 98

    The final conclusion on number of tails 99

    10 Analysis of variance (ANOVA): what is it? How does it work? 101

    Introduction 101

    Sums of squares in ANOVA 102

    Some 'made-up' variation to analyse by ANOVA 102

    The sum of squares table 104

    Using ANOVA to sort out the variation in Table C 104

    Phase 1 104

    Phase 2 105

    SqADS: an important acronym 107

    Back to the sum of squares table 108

    How well does the analysis reflect the input? 109

    End phase 109

    Degrees of freedom in ANOVA 110

    The completion of the end phase 112

    The variance ratio 113

    The relationship between t and F 114

    Constraints on ANOVA 115

    Adequate size of experiment 115

    Equality of variance between treatments 117

    Testing the homogeneity of variance 117

    The element of chance: randomisation 118

    Comparison between treatment means in ANOVA 119

    The least significant difference 121

    A caveat about using the LSD 123

    Executive Summary 4 - The principle of ANOVA 124

    11 Experimental designs for analysis of variance (ANOVA) 129

    Introduction 129

    Fully randomised 130

    Data for analysis of a fully randomised experiment 131

    Prelims 132

    Phase 1 132

    Phase 2 133

    End phase 133

    Randomised blocks 135

    Data for analysis of a randomised block experiment 137

    Prelims 138

    Phase 1 139

    Phase 2 140

    End phase 141

    Incomplete blocks 142

    Latin square 145

    Data for the analysis of a Latin square 145

    Prelims 146

    Phase 1 150

    Phase 2 150

    End phase 151

    Further comments on the Latin square design 152

    Split plot 154

    Types of analysis of variance 154

    One- and two-way analysis of variance 155

    Fixed-, random-, and mixed-effects analysis of variance 156

    Executive Summary 5 - Analysis of a one-way randomised block experiment 158

    Spare-time activities 159

    12 Introduction to factorial experiments 163

    What is a factorial experiment? 163

    Interaction: what does it mean biologically? 165

    If there is no interaction 167

    What if there IS interaction? 167

    How about a biological example? 168

    Measuring any interaction between factors is often the main/only purpose of an experiment 170

    How does a factorial experiment change the form of the analysis of variance? 171

    Degrees of freedom for interactions 171

    The similarity between the residual in Phase 2 and the interaction in Phase 3 172

    Sums of squares for interactions 172

    13 2-Factor factorial experiments 175

    Introduction 175

    An example of a 2-factor experiment 175

    Analysis of the 2-factor experiment 176

    Prelims 176

    Phase 1 177

    Phase 2 177

    End phase (of Phase 2) 178

    Phase 3 179

    End phase (of Phase 3) 183

    Two important things to remember about factorials before tackling the next chapter 185

    Analysis of factorial experiments with unequal replication 185

    Executive Summary 6 - Analysis of a 2-factor randomised block experiment 188

    Spare-time activity 190

    14 Factorial experiments with more than two factors - leave this out if you wish! 191

    Introduction 191

    Different 'orders' of interaction 191

    Example of a 4-factor experiment 192

    Prelims 194

    Phase 1 196

    Phase 2 196

    Phase 3 197

    To the end phase 205

    Spare-time activity 214

    15 Factorial experiments with split plots 217

    Introduction 217

    Deriving the split plot design from the randomised block design 218

    Degrees of freedom in a split plot analysis 221

    Main plots 221

    Sub-plots 222

    Numerical example of a split plot experiment and its analysis 224

    Calculating the sums of squares 225

    End phase 229

    Comparison of split plot and randomised block experiments 229

    Uses of split plot designs 233

    Spare-time activity 235

    16 The t-test in the analysis of variance 237

    Introduction 237

    Brief recap of relevant earlier sections of this book 238

    Least significant difference test 239

    Multiple range tests 240

    Operating the multiple range test 242

    Testing differences between means 246

    My rules for testing differences between means 246

    Presentation of the results of tests of differences between means 247

    The results of the experiments analysed by analysis of variance in Chapters 11-15 249

    Fully randomised design (p. 131) 250

    Randomised block experiment (p. 137) 251

    Latin square design (p. 146) 253

    2-Factor experiment (p. 176) 255

    4-Factor experiment (p. 195) 257

    Split plot experiment (p. 224) 259

    Some final advice 261

    Spare-time activities 261

    17 Linear regression and correlation 263

    Introduction 263

    Cause and effect 264

    Other traps waiting for you to fall into 264

    Extrapolating beyond the range of your data 264

    Is a straight line appropriate? 265

    The distribution of variability 268

    Regression 268

    Independent and dependent variables 272

    The regression coefficient (b) 272

    Calculating the regression coefficient (b) 275

    The regression equation 281

    A worked example on some real data 282

    The data 282

    Calculating the regression coefficient (b), i.e. the slope of the regression line 282

    Calculating the intercept (a) 284

    Drawing the regression line 285

    Testing the significance of the slope (b) of the regression 286

    How well do the points fit the line? The coefficient of determination (r2) 290

    Correlation 291

    Derivation of the correlation coefficient (r) 291

    An example of correlation 292

    Is there a correlation line? 293

    Extensions of regression analysis 296

    Nonlinear regression 297

    Multiple linear regression 298

    Multiple nonlinear regression 300

    Executive Summary - Linear regression 301

    Spare time activities 303

    18 Analysis of covariance (ANCOVA) 305

    Introduction 305

    A worked example of ANCOVA 307

    Data: cholesterol levels of subjects given different diets 307

    Data: ages of subjects in experiment 308

    Regression of cholesterol level on age 309

    The structure of the ANCOVA table 312

    Total sum of squares 313

    Residual sum of squares 314

    Corrected means 316

    Test for significant difference between means 316

    Executive Summary 8 - Analysis of covariance (ANCOVA) 319

    Spare-time activity 320

    19 Chi-square tests 323

    Introduction 323

    When not and where not to use ¿ 2 324

    The problem of low frequencies 325

    Yates' correction for continuity 325

    The ¿ 2 test for goodness of fit 326

    The case of more than two classes 328

    ¿ 2 with heterogeneity 331

    Heterogeneity ¿ 2 Analysis with 'Covariance' 333

    Association (or contingency) ¿ 2 335

    2 × 2 contingency table 336

    Fisher's exact test for a 2 × 2 table 338

    Larger contingency tables 340

    Interpretation of contingency tables 341

    Spare-time activities 343

    20 Nonparametric methods (what are they?) 345

    Disclaimer 345

    Introduction 346

    Advantages and disadvantages of parametric and nonparametric methods 347

    Where nonparametric methods score 347

    Where parametric methods score 349

    Some ways data are organised for nonparametric tests 349

    The sign test 350

    The Kruskal-Wallis analysis of ranks 350

    Kendall's rank correlation coefficient 352

    The main nonparametric methods that are available 353

    Analysis of two replicated treatments as in the t-test (Chapter 8) 353

    Analysis of more than two replicated treatments as in the analysis of variance (Chapter 11) 354

    Correlation of two variables (Chapter 17) 354

    Appendix A How many replicates? 355

    Appendix B Statistical tables 365

    Appendix C Solutions to spare-time activities 373

    Appendix D Bibliography 393

    Index 397