Considering the need for the IFRS 9 accounting standard to estimate the loss of credit, for financial assets that presented a significant increase in risk, throughout the entire period until the maturity of a credit operation, the survival analysis models become techniques useful for modeling the Probability of Default. In this work, with the objective ofevaluating the performance of tree-based survival analysis models for this purpose, PD was examined from different methodological approaches, more particularly, exploring different machine learning algorithms for this type of approach. A credit card refinancing dataset was used, and results from twotree-based survival analysis tools, Survival Tree and Random Survival Forest, were compared a...
Loss Given Default (LGD) is one of the key parameters needed in order to estimate expected and unexp...
The main purpose of the article is the development and implementation of two main scoring models for...
Envisaging the Credit nonpayer is a risky task of Financial Industries like Banks. find out the defa...
The goal of this thesis is to model and predict the probability of default (PD) for a mortgage portf...
Survival analysis can be applied to build models for time of default on debt. In this paper we repor...
Credit scoring systems were originally built to allow organisations to measure how likely an applica...
The Basel Accords, a set of recommendations for regulating the banking industry, have changed the st...
Thesis by publication.Includes bibliographic references1 Introduction -- 2 Literature Review -- 3 PA...
Credit risk models are used by financial companies to evaluate in advance the insolvency risk caused...
We investigate the performance of various survival analysis techniques applied to ten actual credit ...
Credit scoring is one of the most successful applications of quantitative analysis in business. This...
Understanding risky behavior associated with a given cardholder is crucial in managing a successful ...
Abstract This paper extends the existing literature on empirical research in the field of credit ris...
Credit risk plays a major role in the banking industry business. Banks' main activities involve gran...
Traditionally, customer credit scoring aimed at distinguishing good payers from bad payers at the ti...
Loss Given Default (LGD) is one of the key parameters needed in order to estimate expected and unexp...
The main purpose of the article is the development and implementation of two main scoring models for...
Envisaging the Credit nonpayer is a risky task of Financial Industries like Banks. find out the defa...
The goal of this thesis is to model and predict the probability of default (PD) for a mortgage portf...
Survival analysis can be applied to build models for time of default on debt. In this paper we repor...
Credit scoring systems were originally built to allow organisations to measure how likely an applica...
The Basel Accords, a set of recommendations for regulating the banking industry, have changed the st...
Thesis by publication.Includes bibliographic references1 Introduction -- 2 Literature Review -- 3 PA...
Credit risk models are used by financial companies to evaluate in advance the insolvency risk caused...
We investigate the performance of various survival analysis techniques applied to ten actual credit ...
Credit scoring is one of the most successful applications of quantitative analysis in business. This...
Understanding risky behavior associated with a given cardholder is crucial in managing a successful ...
Abstract This paper extends the existing literature on empirical research in the field of credit ris...
Credit risk plays a major role in the banking industry business. Banks' main activities involve gran...
Traditionally, customer credit scoring aimed at distinguishing good payers from bad payers at the ti...
Loss Given Default (LGD) is one of the key parameters needed in order to estimate expected and unexp...
The main purpose of the article is the development and implementation of two main scoring models for...
Envisaging the Credit nonpayer is a risky task of Financial Industries like Banks. find out the defa...