
Model Selection and Multi-Model Inference
A Practical Information-Theoretic Approach
By:Â David R. Anderson, Kenneth P. Burnham
Hardcover | 1 January 2002 | Edition Number 2
At a Glance
520 Pages
Revised
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| Preface | p. vii |
| About the Authors | p. xxi |
| Glossary | p. xxiii |
| Introduction | p. 1 |
| Objectives of the Book | p. 1 |
| Background Material | p. 5 |
| Inference from Data, Given a Model | p. 5 |
| Likelihood and Least Squares Theory | p. 6 |
| The Critical Issue: "What Is the Best Model to Use?" | p. 13 |
| Science Inputs: Formulation of the Set of Candidate Models | p. 15 |
| Models Versus Full Reality | p. 20 |
| An Ideal Approximating Model | p. 22 |
| Model Fundamentals and Notation | p. 23 |
| Truth or Full Reality f | p. 23 |
| Approximating Models g[subscript i](x [theta]) | p. 23 |
| The Kullback-Leibler Best Model g[subscript i](x [theta subscript o]) | p. 25 |
| Estimated Models g[subscript i](x [theta]) | p. 25 |
| Generating Models | p. 26 |
| Global Model | p. 26 |
| Overview of Stochastic Models in the Biological Sciences | p. 27 |
| Inference and the Principle of Parsimony | p. 29 |
| Avoid Overfitting to Achieve a Good Model Fit | p. 29 |
| The Principle of Parsimony | p. 31 |
| Model Selection Methods | p. 35 |
| Data Dredging, Overanalysis of Data, and Spurious Effects | p. 37 |
| Overanalysis of Data | p. 38 |
| Some Trends | p. 40 |
| Model Selection Bias | p. 43 |
| Model Selection Uncertainty | p. 45 |
| Summary | p. 47 |
| Information and Likelihood Theory: A Basis for Model Selection and Inference | p. 49 |
| Kullback--Leibler Information or Distance Between Two Models | p. 50 |
| Examples of Kullback--Leibler Distance | p. 54 |
| Truth, f, Drops Out as a Constant | p. 58 |
| Akaike's Information Criterion: 1973 | p. 60 |
| Takeuchi's Information Criterion: 1976 | p. 65 |
| Second-Order Information Criterion: 1978 | p. 66 |
| Modification of Information Criterion for Overdispersed Count Data | p. 67 |
| AIC Differences, [Delta subscript i] | p. 70 |
| A Useful Analogy | p. 72 |
| Likelihood of a Model, L(g[subscript i] | p. 74 |
| Akaike Weights, [omega subscript i] | p. 75 |
| Basic Formula | p. 75 |
| An Extension | p. 76 |
| Evidence Ratios | p. 77 |
| Important Analysis Details | p. 80 |
| AIC Cannot Be Used to Compare Models of Different Data Sets | p. 80 |
| Order Not Important in Computing AIC Values | p. 81 |
| Transformations of the Response Variable | p. 81 |
| Regression Models with Differing Error Structures | p. 82 |
| Do Not Mix Null Hypothesis Testing with Information-Theoretic Criteria | p. 83 |
| Null Hypothesis Testing Is Still Important in Strict Experiments | p. 83 |
| Information-Theoretic Criteria Are Not a "Test" | p. 84 |
| Exploratory Data Analysis | p. 84 |
| Some History and Further Insights | p. 85 |
| Entropy | p. 86 |
| A Heuristic Interpretation | p. 87 |
| More on Interpreting Information-Theoretic Criteria | p. 87 |
| Nonnested Models | p. 88 |
| Further Insights | p. 89 |
| Bootstrap Methods and Model Selection Frequencies [pi subscript i] | p. 90 |
| Introduction | p. 91 |
| The Bootstrap in Model Selection: The Basic Idea | p. 93 |
| Return to Flather's Models | p. 94 |
| Summary | p. 96 |
| Basic Use of the Information-Theoretic Approach | p. 98 |
| Introduction | p. 98 |
| Example 1: Cement Hardening Data | p. 100 |
| Set of Candidate Models | p. 101 |
| Some Results and Comparisons | p. 102 |
| A Summary | p. 106 |
| Example 2: Time Distribution of an Insecticide Added to a Simulated Ecosystem | p. 106 |
| Set of Candidate Models | p. 108 |
| Some Results | p. 110 |
| Example 3: Nestling Starlings | p. 111 |
| Experimental Scenario | p. 112 |
| Monte Carlo Data | p. 113 |
| Set of Candidate Models | p. 113 |
| Data Analysis Results | p. 117 |
| Further Insights into the First Fourteen Nested Models | p. 120 |
| Hypothesis Testing and Information-Theoretic Approaches Have Different Selection Frequencies | p. 121 |
| Further Insights Following Final Model Selection | p. 124 |
| Why Not Always Use the Global Model for Inference? | p. 125 |
| Example 4: Sage Grouse Survival | p. 126 |
| Introduction | p. 126 |
| Set of Candidate Models | p. 127 |
| Model Selection | p. 129 |
| Hypothesis Tests for Year-Dependent Survival Probabilities | p. 131 |
| Hypothesis Testing Versus AIC in Model Selection | p. 132 |
| A Class of Intermediate Models | p. 134 |
| Example 5: Resource Utilization of Anolis Lizards | p. 137 |
| Set of Candidate Models | p. 138 |
| Comments on Analytic Method | p. 138 |
| Some Tentative Results | p. 139 |
| Example 6: Sakamoto et al.'s (1986) Simulated Data | p. 141 |
| Example 7: Models of Fish Growth | p. 142 |
| Summary | p. 143 |
| Formal Inference From More Than One Model: Multimodel Inference (MMI) | p. 149 |
| Introduction to Multimodel Inference | p. 149 |
| Model Averaging | p. 150 |
| Prediction | p. 150 |
| Averaging Across Model Parameters | p. 151 |
| Model Selection Uncertainty | p. 153 |
| Concepts of Parameter Estimation and Model Selection Uncertainty | p. 155 |
| Including Model Selection Uncertainty in Estimator Sampling Variance | p. 158 |
| Unconditional Confidence Intervals | p. 164 |
| Estimating the Relative Importance of Variables | p. 167 |
| Confidence Set for the K-L Best Model | p. 169 |
| Introduction | p. 169 |
| [Delta subscript i], Model Selection Probabilities, and the Bootstrap | p. 171 |
| Model Redundancy | p. 173 |
| Recommendations | p. 176 |
| Cement Data | p. 177 |
| Pine Wood Data | p. 183 |
| The Durban Storm Data | p. 187 |
| Models Considered | p. 188 |
| Consideration of Model Fit | p. 190 |
| Confidence Intervals on Predicted Storm Probability | p. 191 |
| Comparisons of Estimator Precision | p. 193 |
| Flour Beetle Mortality: A Logistic Regression Example | p. 195 |
| Publication of Research Results | p. 201 |
| Summary | p. 203 |
| Monte Carlo Insights and Extended Examples | p. 206 |
| Introduction | p. 206 |
| Survival Models | p. 207 |
| A Chain Binomial Survival Model | p. 207 |
| An Example | p. 210 |
| An Extended Survival Model | p. 215 |
| Model Selection if Sample Size Is Huge, or Truth Known | p. 219 |
| A Further Chain Binomial Model | p. 221 |
| Examples and Ideas Illustrated with Linear Regression | p. 224 |
| All-Subsets Selection: A GPA Example | p. 225 |
| A Monte Carlo Extension of the GPA Example | p. 229 |
| An Improved Set of GPA Prediction Models | p. 235 |
| More Monte Carlo Results | p. 238 |
| Linear Regression and Variable Selection | p. 244 |
| Discussion | p. 248 |
| Estimation of Density from Line Transect Sampling | p. 255 |
| Density Estimation Background | p. 255 |
| Line Transect Sampling of Kangaroos at Wallaby Creek | p. 256 |
| Analysis of Wallaby Creek Data | p. 256 |
| Bootstrap Analysis | p. 258 |
| Confidence Interval on D | p. 258 |
| Bootstrap Samples: 1,000 Versus 10,000 | p. 260 |
| Bootstrap Versus Akaike Weights: A Lesson on QAIC[subscript c] | p. 261 |
| Summary | p. 264 |
| Advanced Issues and Deeper Insights | p. 267 |
| Introduction | p. 267 |
| An Example with 13 Predictor Variables and 8,191 Models | p. 268 |
| Body Fat Data | p. 268 |
| The Global Model | p. 269 |
| Classical Stepwise Selection | p. 269 |
| Model Selection Uncertainty for AIC[subscript c] and BIC | p. 271 |
| An A Priori Approach | p. 274 |
| Bootstrap Evaluation of Model Uncertainty | p. 276 |
| Monte Carlo Simulations | p. 279 |
| Summary Messages | p. 281 |
| Overview of Model Selection Criteria | p. 284 |
| Criteria That Are Estimates of K-L Information | p. 284 |
| Criteria That Are Consistent for K | p. 286 |
| Contrasts | p. 288 |
| Consistent Selection in Practice: Quasi-true Models | p. 289 |
| Contrasting AIC and BIC | p. 293 |
| A Heuristic Derivation of BIC | p. 293 |
| A K-L-Based Conceptual Comparison of AIC and BIC | p. 295 |
| Performance Comparison | p. 298 |
| Exact Bayesian Model Selection Formulas | p. 301 |
| Akaike Weights as Bayesian Posterior Model Probabilities | p. 302 |
| Goodness-of-Fit and Overdispersion Revisited | p. 305 |
| Overdispersion c and Goodness-of-Fit: A General Strategy | p. 305 |
| Overdispersion Modeling: More Than One c | p. 307 |
| Model Goodness-of-Fit After Selection | p. 309 |
| AIC and Random Coefficient Models | p. 310 |
| Basic Concepts and Marginal Likelihood Approach | p. 310 |
| A Shrinkage Approach to AIC and Random Effects | p. 313 |
| On Extensions | p. 316 |
| Selection When Probability Distributions Differ by Model | p. 317 |
| Keep All the Parts | p. 317 |
| A Normal Versus Log-Normal Example | p. 318 |
| Comparing Across Several Distributions: An Example | p. 320 |
| Lessons from the Literature and Other Matters | p. 323 |
| Use AIC[subscript c], Not AIC, with Small Sample Sizes | p. 323 |
| Use AIC[subscript c], Not AIC, When K Is Large | p. 325 |
| When Is AIC[subscript c] Suitable: A Gamma Distribution Example | p. 326 |
| Inference from a Less Than Best Model | p. 328 |
| Are Parameters Real? | p. 330 |
| Sample Size Is Often Not a Simple Issue | p. 332 |
| Judgment Has a Role | p. 333 |
| Tidbits About AIC | p. 334 |
| Irrelevance of Between-Sample Variation of AIC | p. 334 |
| The G-Statistic and K-L Information | p. 336 |
| AIC Versus Hypothesis Testing: Results Can Be Very Different | p. 337 |
| A Subtle Model Selection Bias Issue | p. 339 |
| The Dimensional Unit of AIC | p. 340 |
| AIC and Finite Mixture Models | p. 342 |
| Unconditional Variance | p. 344 |
| A Baseline for [omega subscript +](i) | p. 345 |
| Summary | p. 347 |
| Statistical Theory and Numerical Results | p. 352 |
| Useful Preliminaries | p. 352 |
| A General Derivation of AIC | p. 362 |
| General K-L--Based Model Selection: TIC | p. 371 |
| Analytical Computation of TIC | p. 371 |
| Bootstrap Estimation of TIC | p. 372 |
| AIC[subscript c]: A Second-Order Improvement | p. 374 |
| Derivation of AIC[subscript c] | p. 374 |
| Lack of Uniqueness of AIC[subscript c] | p. 379 |
| Derivation of AIC for the Exponential Family of Distributions | p. 380 |
| Evaluation of tr(J([theta subscript o])[I([theta subscript o]) superscript -1]) and Its Estimator | p. 384 |
| Comparison of AIC Versus TIC in a Very Simple Setting | p. 385 |
| Evaluation Under Logistic Regression | p. 390 |
| Evaluation Under Multinomially Distributed Count Data | p. 397 |
| Evaluation Under Poisson-Distributed Data | p. 405 |
| Evaluation for Fixed-Effects Normality-Based Linear Models | p. 406 |
| Additional Results and Considerations | p. 412 |
| Selection Simulation for Nested Models | p. 412 |
| Simulation of the Distribution of [Delta subscript p] | p. 415 |
| Does AIC Overfit? | p. 417 |
| Can Selection Be Improved Based on All the [Delta subscript i]? | p. 419 |
| Linear Regression, AIC, and Mean Square Error | p. 421 |
| AIC[subscript c] and Models for Multivariate Data | p. 424 |
| There Is No True TIC[subscript c] | p. 426 |
| Kullback--Leibler Information Relationship to the Fisher Information Matrix | p. 426 |
| Entropy and Jaynes Maxent Principle | p. 427 |
| Akaike Weights [omega subscript i] Versus Selection Probabilities [pi subscript i] | p. 428 |
| Kullback--Leibler Information Is Always [greater than or equal] 0 | p. 429 |
| Summary | p. 434 |
| Summary | p. 437 |
| The Scientific Question and the Collection of Data | p. 439 |
| Actual Thinking and A Priori Modeling | p. 440 |
| The Basis for Objective Model Selection | p. 442 |
| The Principle of Parsimony | p. 443 |
| Information Criteria as Estimates of Expected Relative Kullback--Leibler Information | p. 444 |
| Ranking Alternative Models | p. 446 |
| Scaling Alternative Models | p. 447 |
| MMI: Inference Based on Model Averaging | p. 448 |
| MMI: Model Selection Uncertainty | p. 449 |
| MMI: Relative Importance of Predictor Variables | p. 451 |
| More on Inferences | p. 451 |
| Final Thoughts | p. 454 |
| References | p. 455 |
| Index | p. 485 |
| Table of Contents provided by Syndetics. All Rights Reserved. |
ISBN: 9780387953649
ISBN-10: 0387953647
Published: 1st January 2002
Format: Hardcover
Language: English
Number of Pages: 520
Audience: Professional and Scholarly
Publisher: Springer Nature B.V.
Country of Publication: GB
Edition Number: 2
Edition Type: Revised
Dimensions (cm): 22.86 x 15.88 x 2.54
Weight (kg): 0.86
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