Delivery included to the United States

A Comparison of Two Methods in Credit Scoring

A Comparison of Two Methods in Credit Scoring

Paperback (25 Sep 2013)

Save $11.35

  • RRP $57.82
  • $46.47
Add to basket

Includes delivery to the United States

10+ copies available online - Usually dispatched within 7 days

Publisher's Synopsis

The credit scoring methodology is increasingly used in companies and business field. This method once in the 1950's introduced has developed and cover new branches today, such as mailing and fraud. This methodology is one of the most important to manage risks and estimate the probability of default of a client by borrowing money. There are several statistical methods to select the relevant characteristics for the scoring model such as linear regression models and classification tree and the goal in this study is to compare the two most used statistical methods on credit scoring: logistic regression - with categorized and raw data - and discriminant analysis, as also their pros and cons. The analysis was made using a dataset from METRO Cash&Carry enabling the application of the methods on real data. The logistic regression with a Scorecard example and the discriminant analysis have a similar performance on estimating the probability of default from a client, despite the methodologies being different the approaches are similar and the results shown a small difference between them.

Book information

ISBN: 9783639479539
Publisher: KS Omniscriptum Publishing
Imprint: AV Akademikerverlag
Pub date:
Language: English
Number of pages: 124
Weight: 191g
Height: 229mm
Width: 152mm
Spine width: 7mm