The use of effect sizes in credit rating models

The aim of this thesis was to investigate the use of effect sizes to report the results of statistical credit rating models in a more practical way. Rating systems in the form of statistical probability models like logistic regression models are used to forecast the behaviour of clients and guide...

Full description

Bibliographic Details
Main Author: Steyn, Hendrik Stefanus
Other Authors: Ndlovu, P.
Format: Others
Language:en
Published: 2015
Subjects:
Online Access:Steyn, Hendrik Stefanus (2014) The use of effect sizes in credit rating models, University of South Africa, Pretoria, <http://hdl.handle.net/10500/18790>
http://hdl.handle.net/10500/18790
id ndltd-netd.ac.za-oai-union.ndltd.org-unisa-oai-umkn-dsp01.int.unisa.ac.za-10500-18790
record_format oai_dc
spelling ndltd-netd.ac.za-oai-union.ndltd.org-unisa-oai-umkn-dsp01.int.unisa.ac.za-10500-187902016-05-17T04:07:33Z The use of effect sizes in credit rating models Steyn, Hendrik Stefanus Ndlovu, P. Practical significance Logistic regression Cohen‟s d Probability of default Effect size Goodness-of-fit Odds ratio Area under the curve Multi-collinearity Basel II 519.538 Effect sizes (Statistics) Probability measures Mathematical models Experimental design Analysis of variance The aim of this thesis was to investigate the use of effect sizes to report the results of statistical credit rating models in a more practical way. Rating systems in the form of statistical probability models like logistic regression models are used to forecast the behaviour of clients and guide business in rating clients as “high” or “low” risk borrowers. Therefore, model results were reported in terms of statistical significance as well as business language (practical significance), which business experts can understand and interpret. In this thesis, statistical results were expressed as effect sizes like Cohen‟s d that puts the results into standardised and measurable units, which can be reported practically. These effect sizes indicated strength of correlations between variables, contribution of variables to the odds of defaulting, the overall goodness-of-fit of the models and the models‟ discriminating ability between high and low risk customers. Statistics M. Sc. (Statistics) 2015-07-08T09:02:17Z 2015-07-08T09:02:17Z 2014-12 Dissertation Steyn, Hendrik Stefanus (2014) The use of effect sizes in credit rating models, University of South Africa, Pretoria, <http://hdl.handle.net/10500/18790> http://hdl.handle.net/10500/18790 en 1 online resource (xi, 85 leaves) : illustrations
collection NDLTD
language en
format Others
sources NDLTD
topic Practical significance
Logistic regression
Cohen‟s d
Probability of default
Effect size
Goodness-of-fit
Odds ratio
Area under the curve
Multi-collinearity
Basel II
519.538
Effect sizes (Statistics)
Probability measures
Mathematical models
Experimental design
Analysis of variance
spellingShingle Practical significance
Logistic regression
Cohen‟s d
Probability of default
Effect size
Goodness-of-fit
Odds ratio
Area under the curve
Multi-collinearity
Basel II
519.538
Effect sizes (Statistics)
Probability measures
Mathematical models
Experimental design
Analysis of variance
Steyn, Hendrik Stefanus
The use of effect sizes in credit rating models
description The aim of this thesis was to investigate the use of effect sizes to report the results of statistical credit rating models in a more practical way. Rating systems in the form of statistical probability models like logistic regression models are used to forecast the behaviour of clients and guide business in rating clients as “high” or “low” risk borrowers. Therefore, model results were reported in terms of statistical significance as well as business language (practical significance), which business experts can understand and interpret. In this thesis, statistical results were expressed as effect sizes like Cohen‟s d that puts the results into standardised and measurable units, which can be reported practically. These effect sizes indicated strength of correlations between variables, contribution of variables to the odds of defaulting, the overall goodness-of-fit of the models and the models‟ discriminating ability between high and low risk customers. === Statistics === M. Sc. (Statistics)
author2 Ndlovu, P.
author_facet Ndlovu, P.
Steyn, Hendrik Stefanus
author Steyn, Hendrik Stefanus
author_sort Steyn, Hendrik Stefanus
title The use of effect sizes in credit rating models
title_short The use of effect sizes in credit rating models
title_full The use of effect sizes in credit rating models
title_fullStr The use of effect sizes in credit rating models
title_full_unstemmed The use of effect sizes in credit rating models
title_sort use of effect sizes in credit rating models
publishDate 2015
url Steyn, Hendrik Stefanus (2014) The use of effect sizes in credit rating models, University of South Africa, Pretoria, <http://hdl.handle.net/10500/18790>
http://hdl.handle.net/10500/18790
work_keys_str_mv AT steynhendrikstefanus theuseofeffectsizesincreditratingmodels
AT steynhendrikstefanus useofeffectsizesincreditratingmodels
_version_ 1718269931991072768