This book provides an accessible but rigorous introduction to asymptotic theory in parametric statistical models. Asymptotic results for estimation and testing are derived using the "moving alternative" formulation due to R. A. Fisher and L. Le Cam. Later chapters include discussions of linear rank statistics and of chi-squared tests for contingency table analysis, including situations where parameters are estimated from the complete ungrouped data. This book is based on lecture notes prepared by the first author, subsequently edited, expanded and updated by the second author.
Key features:
Succinct account of the concept of "asymptotic linearity" and its usesSimplified derivations of the major results, under an assumption of joint asymptotic normalityInclusion of numerical illustrations, practical examples and adviceHighlighting some unexpected consequences of the theoryLarge number of exercises, many with hints to solutions
Some facility with linear algebra andwith real analysis including 'epsilon-delta' arguments is required. Concepts and results from measure theory are explained when used. Familiarity with undergraduate probability and statistics including basic concepts of estimation and hypothesis testing is necessary, and experience with applying these concepts to data analysis would be very helpful.
Key features:
Succinct account of the concept of "asymptotic linearity" and its usesSimplified derivations of the major results, under an assumption of joint asymptotic normalityInclusion of numerical illustrations, practical examples and adviceHighlighting some unexpected consequences of the theoryLarge number of exercises, many with hints to solutions
Some facility with linear algebra andwith real analysis including 'epsilon-delta' arguments is required. Concepts and results from measure theory are explained when used. Familiarity with undergraduate probability and statistics including basic concepts of estimation and hypothesis testing is necessary, and experience with applying these concepts to data analysis would be very helpful.
"Overall, the book is presented clearly, with an excellent sequence of concepts that guide the reader through the material effectively. I foundmost chapters engaging and detailed, offering a good balance of theory and application.[...] A Course in the Large Sample Theory of Statistical Inference is a comprehensive and accessible textbook, well-suited for a graduate-level course on large sample theory. Building on the concepts fromstandard/intermediate statistical inference courses, this book offers a smooth transition into the principles of large sample theory. It features simplified derivations of key results, along with numerical illustrations, practical examples,
and insightful guidance. This combination provides a strong foundation for graduate students, researchers, and practitioners who seek to apply these concepts to real-worlddata applications. Certainly suitable for a library purchase, and, definitely worthy of my office shelf!"
-Indranil Sahoo, in The American Statistician, December 2024
and insightful guidance. This combination provides a strong foundation for graduate students, researchers, and practitioners who seek to apply these concepts to real-worlddata applications. Certainly suitable for a library purchase, and, definitely worthy of my office shelf!"
-Indranil Sahoo, in The American Statistician, December 2024