Bank Failure Prediction Using Dea to Measure Management Quality

Author(s):  
Richard S. Barr ◽  
Thomas F. Siems
2016 ◽  
Vol 3 (3) ◽  
Author(s):  
Victor Gumbo ◽  
Simba Zoromedza

Author(s):  
Marilyn Waldron ◽  
Charles Jordan ◽  
Alan MacGregor

<p class="MsoBodyText" style="text-align: justify; margin: 0in 34.2pt 0pt 0.5in; mso-pagination: none;"><span style="font-size: 10pt;" lang="EN-AU"><span style="font-family: Times New Roman;">Bank failure prediction remains an important economic issue.<span style="mso-spacerun: yes;">&nbsp; </span>Although prior research investigates bank failure prediction, the opportunity to improve predictions exists.<span style="mso-spacerun: yes;">&nbsp; </span>The purpose of this present study is to investigate the possibility of improving prediction of bank failure by including loan default variables and regional variation in prediction of bank failure. The results of statistical analysis indicate loan default measures contain information content both in their own right and also incrementally above that of traditional CAMEL measures.<span style="mso-spacerun: yes;">&nbsp; </span>Furthermore, statistical analysis utilizing logit regression shows the superiority of bank failure prediction models that include consideration of geographic region.<span style="mso-spacerun: yes;">&nbsp; </span></span></span></p>


Author(s):  
VAHID BEHBOOD ◽  
JIE LU ◽  
GUANGQUAN ZHANG

Machine learning methods, such as neural network (NN) and support vector machine, assume that the training data and the test data are drawn from the same distribution. This assumption may not be satisfied in many real world applications, like long-term financial failure prediction, because the training and test data may each come from different time periods or domains. This paper proposes a novel algorithm known as fuzzy bridged refinement-based domain adaptation to solve the problem of long-term prediction. The algorithm utilizes the fuzzy system and similarity concepts to modify the target instances' labels which were initially predicted by a shift-unaware prediction model. The experiments are performed using three shift-unaware prediction models based on nine different settings including two main situations: (1) there is no labeled instance in the target domain; (2) there are a few labeled instances in the target domain. In these experiments bank failure financial data is used to validate the algorithm. The results demonstrate a significant improvement in the predictive accuracy, particularly in the second situation identified above.


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