We review two foundations of statistical inference, the theory of likelihood and the Bayesian paradigm. We begin by applying principles of likelihood to generate point estimators (maximum likelihood estimators) and hypothesis tests (likelihood ratio tests). We then describe the Bayesian approach, focusing on two controversial aspects: the use of prior information and subjective probability. We illustrate these analyses using simple examples
Statistical theory aims to provide a foundation for studying the collection and interpretation of da...
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Reviews probability and introduces statistical inference. Point and interval estimation. The maximum...
Filling a gap in current Bayesian theory, Statistical Inference: An Integrated Bayesian/Likelihood A...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
The notion of evidence is of great importance, but there are substantial disagreements about how it ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
This textbook covers the fundamentals of statistical inference and statistical theory including Baye...
This chapter provides a general overview of Bayesian statistical methods. Topics include the notion ...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
In this thesis we present a review of the Bayesian approach to Statistical Inference. In Chapter One...
This paper considers how the concepts of likelihood and identification became part of Bayesian theor...
We introduce the statistical concept known as likelihood and discuss how it underlies common Frequen...
The aim of this thesis is to cover the basics of Bayesian inference. Bayesian logic is to consider p...
Aimed at advanced undergraduate and graduate students in mathematics and related disciplines, this b...
Statistical theory aims to provide a foundation for studying the collection and interpretation of da...
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Reviews probability and introduces statistical inference. Point and interval estimation. The maximum...
Filling a gap in current Bayesian theory, Statistical Inference: An Integrated Bayesian/Likelihood A...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
The notion of evidence is of great importance, but there are substantial disagreements about how it ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
This textbook covers the fundamentals of statistical inference and statistical theory including Baye...
This chapter provides a general overview of Bayesian statistical methods. Topics include the notion ...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
In this thesis we present a review of the Bayesian approach to Statistical Inference. In Chapter One...
This paper considers how the concepts of likelihood and identification became part of Bayesian theor...
We introduce the statistical concept known as likelihood and discuss how it underlies common Frequen...
The aim of this thesis is to cover the basics of Bayesian inference. Bayesian logic is to consider p...
Aimed at advanced undergraduate and graduate students in mathematics and related disciplines, this b...
Statistical theory aims to provide a foundation for studying the collection and interpretation of da...
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Reviews probability and introduces statistical inference. Point and interval estimation. The maximum...