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OverviewA New Approach to Sound Statistical Reasoning Inferential Models: Reasoning with Uncertainty introduces the authors’ recently developed approach to inference: the inferential model (IM) framework. This logical framework for exact probabilistic inference does not require the user to input prior information. The authors show how an IM produces meaningful prior-free probabilistic inference at a high level. The book covers the foundational motivations for this new IM approach, the basic theory behind its calibration properties, a number of important applications, and new directions for research. It discusses alternative, meaningful probabilistic interpretations of some common inferential summaries, such as p-values. It also constructs posterior probabilistic inferential summaries without a prior and Bayes’ formula and offers insight on the interesting and challenging problems of conditional and marginal inference. This book delves into statistical inference at a foundational level, addressing what the goals of statistical inference should be. It explores a new way of thinking compared to existing schools of thought on statistical inference and encourages you to think carefully about the correct approach to scientific inference. Full Product DetailsAuthor: Ryan Martin , Chuanhai LiuPublisher: Taylor & Francis Ltd Imprint: Chapman & Hall/CRC Weight: 0.360kg ISBN: 9780367737801ISBN 10: 0367737809 Pages: 256 Publication Date: 18 December 2020 Audience: College/higher education , General/trade , Tertiary & Higher Education , General Format: Paperback Publisher's Status: Active Availability: In Print ![]() This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us. Table of ContentsReviewsThe book . . . delivers on its promise. It should be read by all statisticians with an interest in the foundations and development of the statistical methods for inference. ~Michael J. Lew, University of Melbourne . . . the book covers the motivations for the IM framework, the basic theory behind its calibration properties, a number of its applications and gives a new way of thinking compared to existing schools of thought on statistical inference ~Apostolos Batsidis (Ioannina), Zentralblatt MATH The book . . . delivers on its promise. It should be read by all statisticians with an interest in the foundations and development of the statistical methods for inference. ~Michael J. Lew, University of Melbourne . . . the book covers the motivations for the IM framework, the basic theory behind its calibration properties, a number of its applications and gives a new way of thinking compared to existing schools of thought on statistical inference ~Apostolos Batsidis (Ioannina), Zentralblatt MATH The book . . . delivers on its promise. It should be read by all statisticians with an interest in the foundations and development of the statistical methods for inference. ~Michael J. Lew, University of Melbourne . . . the book covers the motivations for the IM framework, the basic theory behind its calibration properties, a number of its applications and gives a new way of thinking compared to existing schools of thought on statistical inference ~Apostolos Batsidis (Ioannina), Zentralblatt MATH Author InformationRyan Martin is an associate professor in the Department of Mathematics, Statistics, and Computer Science at the University of Illinois at Chicago. Chuanhai Liu is a professor in the Department of Statistics at Purdue University. Tab Content 6Author Website:Countries AvailableAll regions |