Using Meta Heuristic in Constructing Classification Process

博士 === 國立暨南國際大學 === 國際企業學系 === 102 === Using knowledge and experiments to predict the trend of future events is the prerequisites of management. Classifiers are the main models used to predict future events. Data processed by preprocessors are employed to train classifiers and generate information f...

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Main Authors: Wei Zhan Hung, 洪偉展
Other Authors: Ping-Feng Pai
Format: Others
Language:zh-TW
Published: 2014
Online Access:http://ndltd.ncl.edu.tw/handle/30996010198980394044
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spelling ndltd-TW-102NCNU03200022016-03-16T04:14:50Z http://ndltd.ncl.edu.tw/handle/30996010198980394044 Using Meta Heuristic in Constructing Classification Process 運用次經驗演算法於分類程序之構建 Wei Zhan Hung 洪偉展 博士 國立暨南國際大學 國際企業學系 102 Using knowledge and experiments to predict the trend of future events is the prerequisites of management. Classifiers are the main models used to predict future events. Data processed by preprocessors are employed to train classifiers and generate information for predicting future events. In this study, the data preprocessor includes four steps (1) data imputation (2) outlier detection (3) data distretization (4) feature selection. Different classifiers are suitable for different data preprocessors; and this procedure can be treated as a classification decision process. The classification decision process influences the classification accuracy. In previous literature, experts usually used trial and error method to determine the classification decision process. However, the trial and error process is time-consuming and can not guarantee to obtain the best classification decision process. This study uses meta-huristics to yield the near optimal classification decision process. Some data in UCI library were used to demonstrate the performance of proposed method. Finally, the experimental results, limitations of proposed method and future research directions were presented. Ping-Feng Pai Yu-Pin Hu 白炳豐 胡毓彬 2014 學位論文 ; thesis 59 zh-TW
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description 博士 === 國立暨南國際大學 === 國際企業學系 === 102 === Using knowledge and experiments to predict the trend of future events is the prerequisites of management. Classifiers are the main models used to predict future events. Data processed by preprocessors are employed to train classifiers and generate information for predicting future events. In this study, the data preprocessor includes four steps (1) data imputation (2) outlier detection (3) data distretization (4) feature selection. Different classifiers are suitable for different data preprocessors; and this procedure can be treated as a classification decision process. The classification decision process influences the classification accuracy. In previous literature, experts usually used trial and error method to determine the classification decision process. However, the trial and error process is time-consuming and can not guarantee to obtain the best classification decision process. This study uses meta-huristics to yield the near optimal classification decision process. Some data in UCI library were used to demonstrate the performance of proposed method. Finally, the experimental results, limitations of proposed method and future research directions were presented.
author2 Ping-Feng Pai
author_facet Ping-Feng Pai
Wei Zhan Hung
洪偉展
author Wei Zhan Hung
洪偉展
spellingShingle Wei Zhan Hung
洪偉展
Using Meta Heuristic in Constructing Classification Process
author_sort Wei Zhan Hung
title Using Meta Heuristic in Constructing Classification Process
title_short Using Meta Heuristic in Constructing Classification Process
title_full Using Meta Heuristic in Constructing Classification Process
title_fullStr Using Meta Heuristic in Constructing Classification Process
title_full_unstemmed Using Meta Heuristic in Constructing Classification Process
title_sort using meta heuristic in constructing classification process
publishDate 2014
url http://ndltd.ncl.edu.tw/handle/30996010198980394044
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