Response Prediction and Desirability by Statistical Learning Methods

碩士 === 國立交通大學 === 電機與控制工程系所 === 94 === This paper aims to look out for the flexible working region of predictor variable under the condition of meeting the desirability of response variable. The region will be completed as wide as possible. Besides, find out the rank of important predictor variable...

Full description

Bibliographic Details
Main Author: 張志強
Other Authors: 周志成
Format: Others
Language:zh-TW
Published: 2005
Online Access:http://ndltd.ncl.edu.tw/handle/83205507648755796861
id ndltd-TW-094NCTU5591004
record_format oai_dc
spelling ndltd-TW-094NCTU55910042016-06-06T04:10:54Z http://ndltd.ncl.edu.tw/handle/83205507648755796861 Response Prediction and Desirability by Statistical Learning Methods 應用統計學習方法於響應模型預測與渴望條件分析 張志強 碩士 國立交通大學 電機與控制工程系所 94 This paper aims to look out for the flexible working region of predictor variable under the condition of meeting the desirability of response variable. The region will be completed as wide as possible. Besides, find out the rank of important predictor variable which will affects working region. Compare to many traditional methods, which merely find out the optimal point, this paper takes one step ahead to look out for the working region of predictor variable and uses hyper rectangular cuboid to state this region. Hence, it will be more flexible when we control predictor variable. This experiment takes wafer manufacturing process data as an example, hoping the yield will be greater than or equal to 95%. Under this situation, we want to find out the flexible working region of predictor variable. Fist, we take data to feature selection, rid of redundancy and outlier in data preprocession. Next, we use the preprocessed data to build up six memory- based models to execute regression. Afterward, we use classification trees to classify and decide the working region. Finally, utilize validation data to confirm the decided working region. The same method can be applied not only to wafer manufacturing process in this paper, but to the fields of finance and medical science, etc…. 周志成 2005 學位論文 ; thesis 60 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 國立交通大學 === 電機與控制工程系所 === 94 === This paper aims to look out for the flexible working region of predictor variable under the condition of meeting the desirability of response variable. The region will be completed as wide as possible. Besides, find out the rank of important predictor variable which will affects working region. Compare to many traditional methods, which merely find out the optimal point, this paper takes one step ahead to look out for the working region of predictor variable and uses hyper rectangular cuboid to state this region. Hence, it will be more flexible when we control predictor variable. This experiment takes wafer manufacturing process data as an example, hoping the yield will be greater than or equal to 95%. Under this situation, we want to find out the flexible working region of predictor variable. Fist, we take data to feature selection, rid of redundancy and outlier in data preprocession. Next, we use the preprocessed data to build up six memory- based models to execute regression. Afterward, we use classification trees to classify and decide the working region. Finally, utilize validation data to confirm the decided working region. The same method can be applied not only to wafer manufacturing process in this paper, but to the fields of finance and medical science, etc….
author2 周志成
author_facet 周志成
張志強
author 張志強
spellingShingle 張志強
Response Prediction and Desirability by Statistical Learning Methods
author_sort 張志強
title Response Prediction and Desirability by Statistical Learning Methods
title_short Response Prediction and Desirability by Statistical Learning Methods
title_full Response Prediction and Desirability by Statistical Learning Methods
title_fullStr Response Prediction and Desirability by Statistical Learning Methods
title_full_unstemmed Response Prediction and Desirability by Statistical Learning Methods
title_sort response prediction and desirability by statistical learning methods
publishDate 2005
url http://ndltd.ncl.edu.tw/handle/83205507648755796861
work_keys_str_mv AT zhāngzhìqiáng responsepredictionanddesirabilitybystatisticallearningmethods
AT zhāngzhìqiáng yīngyòngtǒngjìxuéxífāngfǎyúxiǎngyīngmóxíngyùcèyǔkěwàngtiáojiànfēnxī
_version_ 1718295649897676800