A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE

碩士 === 國立清華大學 === 統計學研究所 === 93 === More and more nonparametric control charts are proposed recently, with a common thought of not assuming the underlying distribution of the process. However, without the information about the distribution, it would be difficult to evaluate and analyze the performan...

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Main Author: 謝子陽
Other Authors: Jen Tang
Format: Others
Language:en_US
Published: 2005
Online Access:http://ndltd.ncl.edu.tw/handle/83254927416592474996
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spelling ndltd-TW-093NTHU53370052015-10-13T11:15:49Z http://ndltd.ncl.edu.tw/handle/83254927416592474996 A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE 採用參考樣本之無母數V-BOX管制圖 謝子陽 碩士 國立清華大學 統計學研究所 93 More and more nonparametric control charts are proposed recently, with a common thought of not assuming the underlying distribution of the process. However, without the information about the distribution, it would be difficult to evaluate and analyze the performance of these control charts. Some authors suggest to use a reference sample to avoid this problem, by using its empirical distribution function. In this thesis, we investigate a nonparametric control chart, namely V-Box control chart proposed by Rafajlowicz, Pawlak and Steland (2004), with a reference sample. This V-Box chart has a intuitive design on whether there are enough points inside a control V-Box over a moving window of time. We derive the general form of average run lengths (ARLs) and compare the V-Box chart with the CUSUM and EWMA control charts. With the ARLs available, we also discuss how to design an optimal V-Box chart. V-Box chart has an efficient performance in detecting outliers (out-of-control points). Furthermore, under a distribution with heavy tails and a short range, e.g. Uniform(0,1), the V-Box chart significantly outperforms the CUSUM and EWMA charts Jen Tang 唐正 2005 學位論文 ; thesis 32 en_US
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description 碩士 === 國立清華大學 === 統計學研究所 === 93 === More and more nonparametric control charts are proposed recently, with a common thought of not assuming the underlying distribution of the process. However, without the information about the distribution, it would be difficult to evaluate and analyze the performance of these control charts. Some authors suggest to use a reference sample to avoid this problem, by using its empirical distribution function. In this thesis, we investigate a nonparametric control chart, namely V-Box control chart proposed by Rafajlowicz, Pawlak and Steland (2004), with a reference sample. This V-Box chart has a intuitive design on whether there are enough points inside a control V-Box over a moving window of time. We derive the general form of average run lengths (ARLs) and compare the V-Box chart with the CUSUM and EWMA control charts. With the ARLs available, we also discuss how to design an optimal V-Box chart. V-Box chart has an efficient performance in detecting outliers (out-of-control points). Furthermore, under a distribution with heavy tails and a short range, e.g. Uniform(0,1), the V-Box chart significantly outperforms the CUSUM and EWMA charts
author2 Jen Tang
author_facet Jen Tang
謝子陽
author 謝子陽
spellingShingle 謝子陽
A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
author_sort 謝子陽
title A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
title_short A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
title_full A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
title_fullStr A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
title_full_unstemmed A NONPARAMETRIC V-BOX CONTROL CHART WITH REFERENCE SAMPLE
title_sort nonparametric v-box control chart with reference sample
publishDate 2005
url http://ndltd.ncl.edu.tw/handle/83254927416592474996
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