Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML

Credit risk assessment has been one of the most appealing topics in banking and finance studies, attracting both scholars’ and practitioners’ attention for some time. Following the success of the Grameen Bank, works on credit risk, in particular for Small Medium Enterprises (SMEs), have become essen...

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Main Authors: Ikasari, Novita, Hadzic, Fedja, Dillon, Tharam
Other Authors: Andrea Tagarelli
Format: Book Chapter
Published: IGI Global 2011
Online Access:http://hdl.handle.net/20.500.11937/29489
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author Ikasari, Novita
Hadzic, Fedja
Dillon, Tharam
author2 Andrea Tagarelli
author_facet Andrea Tagarelli
Ikasari, Novita
Hadzic, Fedja
Dillon, Tharam
author_sort Ikasari, Novita
building Curtin Institutional Repository
collection Online Access
description Credit risk assessment has been one of the most appealing topics in banking and finance studies, attracting both scholars’ and practitioners’ attention for some time. Following the success of the Grameen Bank, works on credit risk, in particular for Small Medium Enterprises (SMEs), have become essential. The distinctive character of SMEs requires a method that takes into account quantitative and qualitative information for loan granting decision purposes. In this chapter, we first provide a survey of existing credit risk assessment methods, which shows a current gap in the existing research in regards to taking qualitative information into account during the data mining process. To address this shortcoming, we propose a framework that utilizes an XML-based template to capture both qualitative and quantitative information in this domain. By representing this information in a domain-oriented way, the potential knowledge that can be discovered for evidence-based decision support will be maximized. An XML document can be effectively represented as a rooted ordered labelled tree and a number of tree mining methods exist that enable the efficient discovery of associations among tree-structured data objects, taking both the content and structure into account. The guidelines for correct and effective application of such methods are provided in order to gain detailed insight into the information governing the decision making process. We have obtained a number of textual reports from the banks regarding the information collected from SMEs during the credit application/evaluation process. These are used as the basis for generating a synthetic XML database that partially reflects real-world scenarios. A tree mining method is applied to this data to demonstrate the potential of the proposed method for credit risk assessment.
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institution Curtin University Malaysia
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publishDate 2011
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spelling curtin-20.500.11937-294892017-01-30T13:13:13Z Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML Ikasari, Novita Hadzic, Fedja Dillon, Tharam Andrea Tagarelli Credit risk assessment has been one of the most appealing topics in banking and finance studies, attracting both scholars’ and practitioners’ attention for some time. Following the success of the Grameen Bank, works on credit risk, in particular for Small Medium Enterprises (SMEs), have become essential. The distinctive character of SMEs requires a method that takes into account quantitative and qualitative information for loan granting decision purposes. In this chapter, we first provide a survey of existing credit risk assessment methods, which shows a current gap in the existing research in regards to taking qualitative information into account during the data mining process. To address this shortcoming, we propose a framework that utilizes an XML-based template to capture both qualitative and quantitative information in this domain. By representing this information in a domain-oriented way, the potential knowledge that can be discovered for evidence-based decision support will be maximized. An XML document can be effectively represented as a rooted ordered labelled tree and a number of tree mining methods exist that enable the efficient discovery of associations among tree-structured data objects, taking both the content and structure into account. The guidelines for correct and effective application of such methods are provided in order to gain detailed insight into the information governing the decision making process. We have obtained a number of textual reports from the banks regarding the information collected from SMEs during the credit application/evaluation process. These are used as the basis for generating a synthetic XML database that partially reflects real-world scenarios. A tree mining method is applied to this data to demonstrate the potential of the proposed method for credit risk assessment. 2011 Book Chapter http://hdl.handle.net/20.500.11937/29489 IGI Global restricted
spellingShingle Ikasari, Novita
Hadzic, Fedja
Dillon, Tharam
Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title_full Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title_fullStr Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title_full_unstemmed Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title_short Incorporating qualitative information for credit risk assessment through frequent subtree mining for XML
title_sort incorporating qualitative information for credit risk assessment through frequent subtree mining for xml
url http://hdl.handle.net/20.500.11937/29489