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Kelter, Riko: The evolution of statistical hypothesis testing : Bayesian statistical solutions to the replication crisis in the biomedical sciences. 2021
Inhalt
Abstract
Zusammenfassung
Preface
Contents
Introduction
The Replication Crisis in the biomedical Sciences
Research Question and Contribution
I The Evolution of Frequentist Significance - and Hypothesis Testing
The Protagonists
Fisher's Theory of Significance Testing
Fisher's Foundation of Estimation Theory
Fisher's Significance Testing Framework
The Neyman-Pearson Theory of Hypothesis Testing
The Beginning of a new Theory for statistical Hypothesis testing
The Criterion of Likelihood
Optimality Results and the Neyman-Pearson Lemma
The Final Steps
The modern hybrid Approach
The Fisher-Neyman-Pearson Dissens
Prespecified Test Levels versus p-values
The Evolution of the modern Hybrid Approach
II The Evolution of Bayesian Hypothesis Testing
Bayesian Statistics
Elements of Bayesian Statistics
Bayesian Point and Interval Estimates
Bayesian Hypothesis Testing
The Evolution of the Bayes Factor
Wrinch and Jeffreys's Invention of the Bayes Factor
Haldane's alternative Approach
Jeffrey's Work after Haldane
Comparison of Jeffreys' and Haldane's Approach
Fisher's Dissent
III The Evolution of Markov-Chain-Monte-Carlo and its Impact on Bayesian Hypothesis Testing
Markov-Chain-Monte-Carlo
The Metropolis-Hastings-Algorithm
The Slice-Sampler
The Gibbs Sampler
The Evolution of Markov-Chain-Monte-Carlo
An Overview of the Evolution of Markov-Chain-Monte-Carlo
The Introduction of the original Metropolis Algorithm
The Introduction of the Metropolis-Hastings Algorithm
The Introduction of Simulated Annealing
The Invention of the Gibbs-sampler
Markov-Chain-Monte-Carlo as a generalised statistical Simulation Technique
Hamiltonian Monte Carlo and further Developments
The Impact of Markov-Chain-Monte-Carlo on Bayesian Hypothesis Testing
IV On the Axiomatic Foundations of Statistical Inference
Philosophical Considerations on Bayesian Statistical Inference
The traditional Problem of Induction
Popper's Criticism to Inductive Reasoning
Reconstructing the Critiques to Inductive Reasoning
Conclusion
Axiomatic Considerations on the Foundations of Statistical Inference
Principles of Statistical Inference
The Principle of Adequacy
The Likelihood Principle
Implications of the (relative) Likelihood Principle
An axiomatic basis for Frequentists – The Confidence Principle
Axiomatic Map
Implementation of the Likelihood Principle
V Bayesian Statistical Solutions to the Replication Crisis in the Biomedical Sciences
Bayesian Alternatives to Null Hypothesis Significance Testing in the biomedical Sciences with JASP
Introduction
Methods and Results
Discussion
Conclusion
Bayesian Survival Analysis in Stan via Hamiltonian-Monte-Carlo
Introduction
Flexibility and Application
A detailed Example – Parametric Survival Analysis
Conclusion
Analysis of Bayesian Posterior Significance and Effect Size Indices for the two-sample t-test
Bayesian Posterior Significance and Effect Size Indices
Methods
Results
Discussion
Conclusion
A new Bayesian two-sample t-test for the Effect Size based on the Hodges-Lehmann Paradigm
Introduction
Methods
Simulation study
Discussion
Revisiting the Replication Crisis
Appendices
Appendices
Proofs and Derivations for Chapter 15
Derivation of the single-block Gibbs sampler
Proof of Theorem 15.2 – Derivation of the full conditionals for the single-block Gibbs sampler
Proof of Corollary 15.3
Proof of Theorem 15.8
Proof of Theorem 15.11
The Relative Likelihood Principle for continuous Probability Spaces
The Relative Likelihood Principle
Measure-theoretic Foundations of Statistical Inference
Frequentist statistics
Bayesian statistics
Statistical Decision Theory
Maximum-Likelihood estimation
Foundations of Point Estimation
Foundations of Hypothesis Testing
p-values
Foundations of Interval Estimation
Bibliography