A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry
碩士 === 國立臺灣大學 === 土木工程學研究所 === 99 === Construction industry plays a major part in any nation economy. However, the construction industry tends to face high risk due to the particular characteristic of the environment and high competition. Therefore, many researches have been conducted to find an app...
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ndltd-TW-099NTU050151662015-10-16T04:03:10Z http://ndltd.ncl.edu.tw/handle/36314436235457307468 A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry 重覆取樣BPN模型應用於營建公司財務危機預測之研究 Minh Tran 陳明 碩士 國立臺灣大學 土木工程學研究所 99 Construction industry plays a major part in any nation economy. However, the construction industry tends to face high risk due to the particular characteristic of the environment and high competition. Therefore, many researches have been conducted to find an appropriate model to forecast bankruptcy in construction sector. Artificial Neural Network (ANN) using Back Propagation Algorithm has been applied in this area since the early 1990s, and has been showed the promising outcome. Accordingly, in this study Back Propagation Network (BPN) was selected to construct a model in bankruptcy prediction for construction industry. In the previous study employing ANN methods, the sample-matching technique was usually used, which lead to sample selection biases, likely due to ANN’s inability to tackle between-class imbalance problem. In this research Back Propagation Network (BPN) using over-sampling techniques with all available firm-year data was proposed so as to tackle between-class imbalance challenge. The two over-sampling techniques used were: Enforce training and Synthetic Minority Over-Sampling TEchnique (SMOTE). The empirical result of this study showed that the BPN using SMOTE was out performed the BPN original and EBPN. Accordingly, BPN using SMOTE are suggested as an alternative to the existing model Hui-Ping Tserng 曾惠斌 2011 學位論文 ; thesis 74 en_US |
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碩士 === 國立臺灣大學 === 土木工程學研究所 === 99 === Construction industry plays a major part in any nation economy. However, the construction industry tends to face high risk due to the particular characteristic of the environment and high competition. Therefore, many researches have been conducted to find an appropriate model to forecast bankruptcy in construction sector. Artificial Neural Network (ANN) using Back Propagation Algorithm has been applied in this area since the early 1990s, and has been showed the promising outcome. Accordingly, in this study Back Propagation Network (BPN) was selected to construct a model in bankruptcy prediction for construction industry. In the previous study employing ANN methods, the sample-matching technique was usually used, which lead to sample selection biases, likely due to ANN’s inability to tackle between-class imbalance problem. In this research Back Propagation Network (BPN) using over-sampling techniques with all available firm-year data was proposed so as to tackle between-class imbalance challenge. The two over-sampling techniques used were: Enforce training and Synthetic Minority Over-Sampling TEchnique (SMOTE). The empirical result of this study showed that the BPN using SMOTE was out performed the BPN original and EBPN. Accordingly, BPN using SMOTE are suggested as an alternative to the existing model
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author2 |
Hui-Ping Tserng |
author_facet |
Hui-Ping Tserng Minh Tran 陳明 |
author |
Minh Tran 陳明 |
spellingShingle |
Minh Tran 陳明 A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
author_sort |
Minh Tran |
title |
A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
title_short |
A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
title_full |
A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
title_fullStr |
A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
title_full_unstemmed |
A Back Propagation Neural Network using Over-sampling techniques in bankruptcy prediction in construction industry |
title_sort |
back propagation neural network using over-sampling techniques in bankruptcy prediction in construction industry |
publishDate |
2011 |
url |
http://ndltd.ncl.edu.tw/handle/36314436235457307468 |
work_keys_str_mv |
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