| Preface | p. vii |
| About the Author | p. xvii |
| Glossary | p. xix |
| Introduction: Science Hypotheses and Science Philosophy | p. 1 |
| Some Science Background | p. 1 |
| Multiple Working Hypotheses | p. 3 |
| Bovine TB Transmission in Ferrets | p. 4 |
| Approaches to Scientific Investigations | p. 6 |
| Experimental Studies | p. 7 |
| Descriptive Studies | p. 8 |
| Confirmatory Studies | p. 8 |
| Science Hypothesis Set Evolves | p. 10 |
| Null Hypothesis Testing | p. 11 |
| Evidence and Inferences | p. 12 |
| Hardening of Portland Cement | p. 13 |
| What Does Science Try to Provide? | p. 14 |
| Remarks | p. 15 |
| Exercises | p. 17 |
| Data and Models | p. 19 |
| Data | p. 19 |
| Hardening of Portland Cement Data | p. 22 |
| Bovine TB Transmission in Ferrets | p. 23 |
| What Constitutes a "Data Set"? | p. 24 |
| Models | p. 25 |
| True Models (An Oxymoron) | p. 27 |
| The Concept of Model Parameters | p. 28 |
| Parameter Estimation | p. 29 |
| Principle of Parsimony | p. 30 |
| Tapering Effect Sizes | p. 33 |
| Case Studies | p. 33 |
| Models of Hardening of Portland Cement Data | p. 33 |
| Models of Bovine TB Transmission in Ferrets | p. 35 |
| Additional Examples of Modeling | p. 36 |
| Modeling Beak Lengths | p. 37 |
| Modeling Dose Response in Flour Beetles | p. 41 |
| Modeling Enzyme Kinetics | p. 44 |
| Data Dredging | p. 45 |
| The Effect of a Flood on European Dippers: Modeling Contrasts | p. 46 |
| Traditional Null Hypothesis Testing | p. 46 |
| Information-Theoretic Approach | p. 47 |
| Remarks | p. 48 |
| Exercises | p. 49 |
| Information Theory and Entropy | p. 51 |
| Kullback-Leibler Information | p. 52 |
| Linking Information Theory to Statistical Theory | p. 54 |
| Akaike's Information Criterion | p. 55 |
| The Bias Correction Term | p. 57 |
| Why Multiply by -2? | p. 57 |
| Parsimony is Achieved as a by-Product | p. 58 |
| Simple vs. Complex Models | p. 59 |
| AIC Scale | p. 60 |
| A Second-Order Bias Correction: AICc | p. 60 |
| Regression Analysis | p. 61 |
| Additional Important Points | p. 62 |
| Differences Among AICc Values | p. 62 |
| Nested vs. Nonnested Models | p. 63 |
| Data and Response Variable Must Remain Fixed | p. 63 |
| AICc is not a "Test" | p. 64 |
| Data Dredging Using AICc | p. 64 |
| Keep all the Model Terms | p. 64 |
| Missing Data | p. 65 |
| The "Pretending Variable" | p. 65 |
| Cement Hardening Data | p. 66 |
| Interpreting AICc Values | p. 66 |
| What if all the Models are Bad? | p. 67 |
| Prediction from the Best Model | p. 68 |
| Ranking the Models of Bovine Tuberculosis in Ferrets | p. 69 |
| Other Important Issues | p. 70 |
| Takeuchi's Information Criterion | p. 70 |
| Problems When Evaluating Too Many Candidate Models | p. 71 |
| The Parameter Count K and Parameters that Cannot be Uniquely Estimated | p. 71 |
| Cross Validation and AICc | p. 72 |
| Science Advances as the Hypothesis Set Evolves | p. 72 |
| Summary | p. 73 |
| Remarks | p. 74 |
| Exercises | p. 80 |
| Quantifying the Evidence About Science Hypotheses | p. 83 |
| [Delta subscript i] Values and Ranking | p. 84 |
| Model Likelihoods | p. 86 |
| Model Probabilities | p. 87 |
| Evidence Ratios | p. 89 |
| Hardening of Portland Cement | p. 91 |
| Bovine Tuberculosis in Ferrets | p. 93 |
| Return to Flather's Models and R[superscript 2] | p. 94 |
| The Effect of a Flood on European Dippers | p. 95 |
| More about Evidence and Inference | p. 98 |
| Summary | p. 100 |
| Remarks | p. 101 |
| Exercises | p. 103 |
| Multimodel Inference | p. 105 |
| Model Averaging | p. 106 |
| Model Averaging for Prediction | p. 107 |
| Model Averaging Parameter Estimates Across Models | p. 108 |
| Unconditional Variances | p. 110 |
| Examples Using the Cement Hardening Data | p. 112 |
| Averaging Detection Probability Parameters in Occupancy Models | p. 115 |
| Relative Importance of Predictor Variables | p. 118 |
| Rationale for Ranking the Relative Importance of Predictor Variables | p. 119 |
| An Example Using the Cement Hardening Data | p. 119 |
| Confidence Sets on Models | p. 121 |
| Summary | p. 122 |
| Remarks | p. 122 |
| Exercises | p. 124 |
| Advanced Topics | p. 125 |
| Overdispersed Count Data | p. 126 |
| Lack of Independence | p. 126 |
| Parameter Heterogeneity | p. 126 |
| Estimation of a Variance Inflation Factor | p. 127 |
| Coping with Overdispersion in Count Data | p. 127 |
| Overdispersion in Data on Elephant Seals | p. 128 |
| Model Selection Bias | p. 129 |
| Understanding the Issue | p. 129 |
| A Solution to the Problem of Model Selection Bias | p. 130 |
| Multivariate AICc | p. 133 |
| Model Redundancy | p. 133 |
| Model Selection in Random Effects Models | p. 134 |
| Use in Conflict Resolution | p. 135 |
| Analogy with the Flip of a Coin | p. 136 |
| Conflict Resolution Protocol | p. 137 |
| A Hypothetical Example: Hen Clam Experiments | p. 138 |
| Remarks | p. 140 |
| Summary | p. 141 |
| The Science Question | p. 142 |
| Collection of Relevant Data | p. 143 |
| Mathematical Models | p. 143 |
| Data Analysis | p. 144 |
| Information and Entropy | p. 144 |
| Quantitative Measures of Evidence | p. 144 |
| Inferences | p. 145 |
| Post Hoc Issues | p. 146 |
| Final Comment | p. 146 |
| Appendices | p. 147 |
| Likelihood Theory | p. 147 |
| Expected Values | p. 155 |
| Null Hypothesis Testing | p. 157 |
| Bayesian Approaches | p. 158 |
| The Bayesian Information Criterion | p. 160 |
| Common Misuses and Misinterpretations | p. 162 |
| References | p. 167 |
| Index | p. 181 |
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