Statistical Inference For Non Regular Family Of Distributions Unified Theory


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STATISTICAL INFERENCE FOR NON REGULAR FAMILY OF DISTRIBUTIONS (UNIFIED THEORY)


STATISTICAL INFERENCE FOR NON REGULAR FAMILY OF DISTRIBUTIONS (UNIFIED THEORY)

Author: Milind B. Bhatt

language: en

Publisher: Lulu.com

Release Date:


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Non-standard Parametric Statistical Inference


Non-standard Parametric Statistical Inference

Author: Russell Cheng

language: en

Publisher: Oxford University Press

Release Date: 2017


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This research monograph gives a unified view of non-standard estimation problems. It provides an overall mathematical framework, but also draws together and studies in detail a large number of practical problems, previously only treated separately, offering solution methods and numerical procedures for each.

Non-Regular Statistical Estimation


Non-Regular Statistical Estimation

Author: Masafumi Akahira

language: en

Publisher: Springer Science & Business Media

Release Date: 2012-12-06


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In order to obtain many of the classical results in the theory of statistical estimation, it is usual to impose regularity conditions on the distributions under consideration. In small sample and large sample theories of estimation there are well established sets of regularity conditions, and it is worth while to examine what may follow if any one of these regularity conditions fail to hold. "Non-regular estimation" literally means the theory of statistical estimation when some or other of the regularity conditions fail to hold. In this monograph, the authors present a systematic study of the meaning and implications of regularity conditions, and show how the relaxation of such conditions can often lead to surprising conclusions. Their emphasis is on considering small sample results and to show how pathological examples may be considered in this broader framework.