Corporate Fraud Prediction:The Application of Data Mining Techniques

碩士 === 逢甲大學 === 會計學系 === 102 === The purpose of this study is to employ the feature selection by using Association Rules (AR) a data mining technique and to choose the important affecting factors of corporate fraud prediction. The empirical result indicates that the prediction performance of feature...

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Main Authors: yu-chi chang, 張育綺
Other Authors: Yu-Hsin Lu
Format: Others
Language:zh-TW
Published: 2014
Online Access:http://ndltd.ncl.edu.tw/handle/96361067303682634405
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spelling ndltd-TW-102FCU053850072015-10-13T23:49:59Z http://ndltd.ncl.edu.tw/handle/96361067303682634405 Corporate Fraud Prediction:The Application of Data Mining Techniques 資料探勘技術在公司舞弊預測模型之應用 yu-chi chang 張育綺 碩士 逢甲大學 會計學系 102 The purpose of this study is to employ the feature selection by using Association Rules (AR) a data mining technique and to choose the important affecting factors of corporate fraud prediction. The empirical result indicates that the prediction performance of feature selection is better than without feature selection. The critical factors extracted out are characterized by the scale of directors and supervisors, independent directors and supervisors seats, major shareholders and used in Decision Tree (DT) classification technology to construct prediction model. The empirical results provide that overall prediction accuracy was 79.17%, and indicate the decision table of corporate fraud prediction. The study expect these results can provide the desired decision table to the user, and reduce losses from the investments in future. Yu-Hsin Lu 盧鈺欣 2014 學位論文 ; thesis 46 zh-TW
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language zh-TW
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description 碩士 === 逢甲大學 === 會計學系 === 102 === The purpose of this study is to employ the feature selection by using Association Rules (AR) a data mining technique and to choose the important affecting factors of corporate fraud prediction. The empirical result indicates that the prediction performance of feature selection is better than without feature selection. The critical factors extracted out are characterized by the scale of directors and supervisors, independent directors and supervisors seats, major shareholders and used in Decision Tree (DT) classification technology to construct prediction model. The empirical results provide that overall prediction accuracy was 79.17%, and indicate the decision table of corporate fraud prediction. The study expect these results can provide the desired decision table to the user, and reduce losses from the investments in future.
author2 Yu-Hsin Lu
author_facet Yu-Hsin Lu
yu-chi chang
張育綺
author yu-chi chang
張育綺
spellingShingle yu-chi chang
張育綺
Corporate Fraud Prediction:The Application of Data Mining Techniques
author_sort yu-chi chang
title Corporate Fraud Prediction:The Application of Data Mining Techniques
title_short Corporate Fraud Prediction:The Application of Data Mining Techniques
title_full Corporate Fraud Prediction:The Application of Data Mining Techniques
title_fullStr Corporate Fraud Prediction:The Application of Data Mining Techniques
title_full_unstemmed Corporate Fraud Prediction:The Application of Data Mining Techniques
title_sort corporate fraud prediction:the application of data mining techniques
publishDate 2014
url http://ndltd.ncl.edu.tw/handle/96361067303682634405
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