2016
DOI: 10.1016/j.knosys.2016.03.023
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Predicting creditworthiness in retail banking with limited scoring data

Abstract: The preoccupation with modelling credit scoring systems including their relevance to predicting and decision making in the financial sector has been with developed countries, whilst developing countries have been largely neglected. The focus of our investigation is on the Cameroonian banking sector with implications for fellow members of the Banque des Etats de L'Afrique Centrale (BEAC) family which apply the same system. We apply logistic regression (LR), Classification and Regression Tree (CART) and Cascade … Show more

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Cited by 45 publications
(34 citation statements)
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“…Meanwhile, AI technology combined with big data can help build robust credit systems, assess business risks under uncertainty, and achieve anti-fraud functions. For example, diversified data sources can be utilized to build a credit system based on the tree model (Yeh, Lin et al 2012), neural network (Khashman 2010, Abdou, Tsafack et al 2016, and support vector machine model (Han, Han et al 2013). Moreover, businesses rely increasingly on AI technology for competitive advantages, and IoT provides risk managers abundant information for assessing and managing risks.…”
Section: Risk Managementmentioning
confidence: 99%
“…Meanwhile, AI technology combined with big data can help build robust credit systems, assess business risks under uncertainty, and achieve anti-fraud functions. For example, diversified data sources can be utilized to build a credit system based on the tree model (Yeh, Lin et al 2012), neural network (Khashman 2010, Abdou, Tsafack et al 2016, and support vector machine model (Han, Han et al 2013). Moreover, businesses rely increasingly on AI technology for competitive advantages, and IoT provides risk managers abundant information for assessing and managing risks.…”
Section: Risk Managementmentioning
confidence: 99%
“…As per the information value 6 score, 'Size' is the most influential non-financial predictor with a sore of 3.139. 'Sovereign Country Risk Rating' (SR) with an information value score of 2.712 comes second.…”
Section: Non-financial Indicatorsmentioning
confidence: 99%
“…'Sovereign Country Risk Rating' (SR) with an information value score of 2.712 comes second. 6 Information value directly relates to a statistical technique called Weight of Evidence (WoE) which identifies the strength of different predictor indicators, as an alternative to Chi2. For more details the reader is referred to Abdou et al (2016).…”
Section: Non-financial Indicatorsmentioning
confidence: 99%
“…A framework for developing causal credit default theories is introduced through the example of a new residential mortgage default theory (Wilson, 2007). Table 4 presents information developed by a group of researchers (Abdou et al, 2016) about the nature of the loan, the personal characteristics of the borrower and the borrower's history.…”
Section: Role Of Credit Scoring In Reducing Credit Risksmentioning
confidence: 99%