2013
DOI: 10.1080/02664763.2013.784894
|View full text |Cite
|
Sign up to set email alerts
|

Modelling small and medium enterprise loan defaults as rare events: the generalized extreme value regression model

Abstract: A pivotal characteristic of credit defaults that is ignored by most credit scoring models is the rarity of the event. The most widely used model to estimate the Probability of Default (PD) is the logistic regression model. Since the dependent variable represents a rare event, the logistic regression model shows relevant drawbacks, for example underestimation of the default probability, which could be very risky for banks. In order to overcome these drawbacks we propose the Generalized Extreme Value (GEV) regre… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
2
2
1

Citation Types

0
98
0

Year Published

2015
2015
2024
2024

Publication Types

Select...
6
2
1

Relationship

2
7

Authors

Journals

citations
Cited by 78 publications
(98 citation statements)
references
References 41 publications
0
98
0
Order By: Relevance
“…In this study, we test the use of a quite simple classifier, linear regression approach (similar to Guo et al [27]), for modelling the relationship between a scalar dependent variable and more explanatory variables (financial indicators) as it performs reasonably well in bankruptcy prediction, as proved by Jones et al [28]. Regression analysis if often use for bankruptcy prediction, the realized analysis is supported by the study of Calabrese et al [29] or latest researches in Romania [30] and Lithuania [31], which recommend regression models for bankruptcy prediction. A methodological framework of regression was used to construct predictive bankruptcy models for Asia, Europe and America and the results verify the superiority of the global model compared to regional models [32].…”
Section: Literature Reviewmentioning
confidence: 55%
“…In this study, we test the use of a quite simple classifier, linear regression approach (similar to Guo et al [27]), for modelling the relationship between a scalar dependent variable and more explanatory variables (financial indicators) as it performs reasonably well in bankruptcy prediction, as proved by Jones et al [28]. Regression analysis if often use for bankruptcy prediction, the realized analysis is supported by the study of Calabrese et al [29] or latest researches in Romania [30] and Lithuania [31], which recommend regression models for bankruptcy prediction. A methodological framework of regression was used to construct predictive bankruptcy models for Asia, Europe and America and the results verify the superiority of the global model compared to regional models [32].…”
Section: Literature Reviewmentioning
confidence: 55%
“…When the data is in fact unbalanced, the estimate of the dependent variable tends to be biased towards the majority class, which is usually the less important class to correctly predict ( King & Zeng, 2001 ). Specifically, the use of a symmetric link function, such as the logit or probit function, may underestimate π t for the rare events { Y t = 1 } , as the response curve π t approaches zero at the same rate as it approaches one ( Calabrese & Osmetti, 2013;King & Zeng, 2001;Marra et al, 2014;Wang & Dey, 2010 ).…”
Section: Gev Modelmentioning
confidence: 99%
“…If we classify the rare events as ones, the major drawback of these approaches is that they underestimate the probability of binary rare events for values close to one, such as bank defaults or bail-outs ( Calabrese & Osmetti, 2015;King & Zeng, 2001;Wang & Dey, 2010 ). To overcome this limitation, a model has been proposed in the operational research literature ( Andreeva, Calabrese, & Osmetti, 2016;Calabrese & Osmetti, 2013;2015;Marra, Calabrese, & Osmetti, 2014 ) -the Binary Generalised Extreme Value Additive model, BGEVA (GEV model in the parametric form). This approach is particularly suitable for binary rare events data, i.e.…”
Section: Introductionmentioning
confidence: 99%
“…He then fit the Generalized Logistic (GL) distribution and the GEV to the data and compared the results to determine which model better describes the extreme events. [10] Applied GEV and BGEVA models to the sample of Italian SMEs from 2006 to 2011 and found each of the two model is better than the logistic regression. [9] Introduced the option of probability weighted moments as a more efficient way to estimate parameters instead of the maximum likelihood approach, which was the method used in [8].…”
Section: Introductionmentioning
confidence: 99%