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Scarce data based credit risk assessment
Evaluating Missing Data Methods in PD-estimation by Logistic Regression
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By employing statistical methods in credit risk assessment, banks seek to maximize the degree of insight data hold about the nature and quantity of risk inherent in potential and actual credit transactions. Non-available records, i. e., missing data, erode the extent of databases and thus the precision and reliability of statistical models banks use in order to draw conclusions in regard to their credit risk. Statistics holds a wide spectrum of techniques, so called missing data methods, in order to mitigate the damaging effect of these occurrences on models constructed for deriving statistical inferences. Bernd Galler evaluates the benefit of these methods in terms of enhancing credit risk assessment. He assesses their influence on
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Scarce data based credit risk assessment, Bernd Galler
- Language
- Released
- 2015
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- Title
- Scarce data based credit risk assessment
- Subtitle
- Evaluating Missing Data Methods in PD-estimation by Logistic Regression
- Language
- English
- Authors
- Bernd Galler
- Publisher
- Tectum-Verl.
- Released
- 2015
- ISBN10
- 3828834329
- ISBN13
- 9783828834323
- Category
- University and college textbooks
- Description
- By employing statistical methods in credit risk assessment, banks seek to maximize the degree of insight data hold about the nature and quantity of risk inherent in potential and actual credit transactions. Non-available records, i. e., missing data, erode the extent of databases and thus the precision and reliability of statistical models banks use in order to draw conclusions in regard to their credit risk. Statistics holds a wide spectrum of techniques, so called missing data methods, in order to mitigate the damaging effect of these occurrences on models constructed for deriving statistical inferences. Bernd Galler evaluates the benefit of these methods in terms of enhancing credit risk assessment. He assesses their influence on