
This book discusses the fitting of parametric statistical models to data samples. Emphasis is placed on: (i) how to recognize situations where the problem is non-standard when parameter estimates behave unusually, and (ii) the use of parametric bootstrap resampling methods in analyzing such problems. A frequentist likelihood-based viewpoint is adopted, for which there is a well-established and very practical theory. The standard situation is where certain widely applicable regularity conditions hold. However, there are many apparently innocuous situations where standard theory breaks down, sometimes spectacularly. Most of the departures from regularity are described geometrically, with only sufficient mathematical detail to clarify the non-standard nature of a problem and to allow formulation of practical solutions. The book is intended for anyone with a basic knowledge of statistical methods, as is typically covered in a university statistical inference course, wishing to understand or study how standard methodology might fail. Easy to understand statistical methods are presented which overcome these difficulties, and demonstrated by detailed examples drawn from real applications. Simple and practical model-building is an underlying theme. Parametric bootstrap resampling is used throughout for analyzing the properties of fitted models, illustrating its ease of implementation even in non-standard situations. Distributional properties are obtained numerically for estimators or statistics not previously considered in the literature because their theoretical distributional properties are too hard to obtain theoretically. Bootstrap results are presented mainly graphically in the book, providing an accessible demonstration of the sampling behaviour of estimators.
This book investigates the limitations of standard parametric statistical inference when regularity conditions fail and proposes practical solutions through resampling methods. Russell Cheng, a specialist in statistical methodology, utilizes a frequentist likelihood-based framework to address scenarios where standard model-fitting techniques produce anomalous results. By focusing on geometric interpretations of these failures, the author provides a bridge between theoretical statistical breakdowns and applied computational solutions.
What You Will Find
Scope Limits
Experts identify this text as a practical resource for practitioners encountering unexpected behavior in statistical models. Readers frequently note that the inclusion of graphical bootstrap results makes complex inferential failures accessible to those without extensive theoretical backgrounds.
Page Count:
432
Publication Date:
2017-01-01
Publisher:
OUP Oxford
ISBN-10:
0192518313
ISBN-13:
9780192518316
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