Contributions to industrial statistics

The main theme of this dissertation deals with the impact and consequences of non-normal distribution on the process capability index Cpm. In this thesis, much work has been done in this area including the properties of C^pm, the estimate of Cpm, under normality, its sensitivity to non-normality and...

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Main Author: Leung, Bartholomew Ping Kei
Language:en_US
Published: 2007
Online Access:http://hdl.handle.net/1993/2178
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-MWU.1993-21782014-03-29T03:42:05Z Contributions to industrial statistics Leung, Bartholomew Ping Kei The main theme of this dissertation deals with the impact and consequences of non-normal distribution on the process capability index Cpm. In this thesis, much work has been done in this area including the properties of C^pm, the estimate of Cpm, under normality, its sensitivity to non-normality and also the relationship of Cpm to squared error loss. Related to Cpm is the unifying measure of process capability index Cpw. Several properties of C^pw are investigated. Much of the controversy surrounding the Cp index involves 6[sigma] in the denominator. It carries particular physical meaning when the process characteristic is normally distributed. A new index Cpo is proposed which is based on the difference between two order statistics. The sampling distribution of C^po is obtained for those cases where the process characteristic is uniform, exponential and normal distributions. The behavior of C^p, when n = 2, under non-normal situations such as uniform and exponential distributions is also investigated as a special case of C^po. Another major issue addressed in this dissertation is the Inverted Probability Loss Functions (IPLFs). It is a modified loss function found by inverting a probability density function which was first invented by my supervisor Dr. F.A. Spiring in 1993. The first loss function I studied is the inverted beta loss function (IBLF). I have found certain interesting properties that this class of loss function possesses such as the shape, the loss function and its associated risk function of the IBLF are scale invariant under linear transformation. Finally, I have investigated a few more IPLFs satisfying the usual loss function properties and developed some theorems in this portion of the study. 2007-05-25T18:30:59Z 2007-05-25T18:30:59Z 1999-02-01T00:00:00Z http://hdl.handle.net/1993/2178 en_US
collection NDLTD
language en_US
sources NDLTD
description The main theme of this dissertation deals with the impact and consequences of non-normal distribution on the process capability index Cpm. In this thesis, much work has been done in this area including the properties of C^pm, the estimate of Cpm, under normality, its sensitivity to non-normality and also the relationship of Cpm to squared error loss. Related to Cpm is the unifying measure of process capability index Cpw. Several properties of C^pw are investigated. Much of the controversy surrounding the Cp index involves 6[sigma] in the denominator. It carries particular physical meaning when the process characteristic is normally distributed. A new index Cpo is proposed which is based on the difference between two order statistics. The sampling distribution of C^po is obtained for those cases where the process characteristic is uniform, exponential and normal distributions. The behavior of C^p, when n = 2, under non-normal situations such as uniform and exponential distributions is also investigated as a special case of C^po. Another major issue addressed in this dissertation is the Inverted Probability Loss Functions (IPLFs). It is a modified loss function found by inverting a probability density function which was first invented by my supervisor Dr. F.A. Spiring in 1993. The first loss function I studied is the inverted beta loss function (IBLF). I have found certain interesting properties that this class of loss function possesses such as the shape, the loss function and its associated risk function of the IBLF are scale invariant under linear transformation. Finally, I have investigated a few more IPLFs satisfying the usual loss function properties and developed some theorems in this portion of the study.
author Leung, Bartholomew Ping Kei
spellingShingle Leung, Bartholomew Ping Kei
Contributions to industrial statistics
author_facet Leung, Bartholomew Ping Kei
author_sort Leung, Bartholomew Ping Kei
title Contributions to industrial statistics
title_short Contributions to industrial statistics
title_full Contributions to industrial statistics
title_fullStr Contributions to industrial statistics
title_full_unstemmed Contributions to industrial statistics
title_sort contributions to industrial statistics
publishDate 2007
url http://hdl.handle.net/1993/2178
work_keys_str_mv AT leungbartholomewpingkei contributionstoindustrialstatistics
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