Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry
碩士 === 國立臺北科技大學 === 工業工程與管理研究所 === 96 === A bankruptcy prediction model is often built upon the information which comes from financial statements. Many researchers adopt statistical methods or artificial intelligence to build the classification model and use the model to predict the future status. S...
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ndltd-TW-096TIT050310102019-07-26T03:38:38Z http://ndltd.ncl.edu.tw/handle/89y3ap Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry 應用倒傳遞類神經與序列探勘技術建構企業財務危機預警模型─以台灣電子產業為例 Li-Jie Hon 洪立劼 碩士 國立臺北科技大學 工業工程與管理研究所 96 A bankruptcy prediction model is often built upon the information which comes from financial statements. Many researchers adopt statistical methods or artificial intelligence to build the classification model and use the model to predict the future status. Since these models require financial information to judge or predict the operational situation, it is impossible to predict without any financial data. Our research tries to combine Back-propagation Neural Network(BPNN) and sequential pattern mining to overcome this drawback. We use two ways to match our distress and non-distress data by considering industrial factors and use samples from different period to build the classification models. We see classification result from the models as signals, which means distress or non-distress at specific term and furthermore, we mine those signals in order to get some patterns which help us do prediction. We experiment on financial data of Taiwan’s electronic industry from TEJ database and the result shows the combination of BPNN and sequential pattern mining can predict the operational status efficiently. 羅淑娟 2008 學位論文 ; thesis 63 zh-TW |
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碩士 === 國立臺北科技大學 === 工業工程與管理研究所 === 96 === A bankruptcy prediction model is often built upon the information which comes from financial statements. Many researchers adopt statistical methods or artificial intelligence to build the classification model and use the model to predict the future status. Since these models require financial information to judge or predict the operational situation, it is impossible to predict without any financial data. Our research tries to combine Back-propagation Neural Network(BPNN) and sequential pattern mining to overcome this drawback. We use two ways to match our distress and non-distress data by considering industrial factors and use samples from different period to build the classification models. We see classification result from the models as signals, which means distress or non-distress at specific term and furthermore, we mine those signals in order to get some patterns which help us do prediction. We experiment on financial data of Taiwan’s electronic industry from TEJ database and the result shows the combination of BPNN and sequential pattern mining can predict the operational status efficiently.
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author2 |
羅淑娟 |
author_facet |
羅淑娟 Li-Jie Hon 洪立劼 |
author |
Li-Jie Hon 洪立劼 |
spellingShingle |
Li-Jie Hon 洪立劼 Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
author_sort |
Li-Jie Hon |
title |
Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
title_short |
Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
title_full |
Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
title_fullStr |
Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
title_full_unstemmed |
Applying Back Propagation Neural Network and Sequential Pattern Mining to Construct Corporation Crisis Prediction Model–A Case of Taiwan’s Electronic Industry |
title_sort |
applying back propagation neural network and sequential pattern mining to construct corporation crisis prediction model–a case of taiwan’s electronic industry |
publishDate |
2008 |
url |
http://ndltd.ncl.edu.tw/handle/89y3ap |
work_keys_str_mv |
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