We compare the performances of a wide set of regression techniques and machine learning algorithms for predicting recovery rates on non-performing loans, using a private database from a European debt collection agency. We find that rule-based algorithms such as Cubist, boosted trees and random forests perform significantly better than other approaches. In addition to loan contract specificities, the predictors referring to the bank recovery process - prior to the portfolio's sale to the debt collector - are also proven to strongly enhance forecasting performances. These variables, derived from the time-series of contacts to defaulted clients and clients' reimbursements to the bank, help all algorithms to better identify debtors with differe...
Machine Learning (ML) uses statistics to find patterns in high dimensional data. The Swedish Board o...
In Todays world, most of world population has access to banking services. Consumers has increa...
The aim of this paper is to evaluate a machine learning technique, Random Forest, to predict default...
We compare the performances of a wide set of regression techniques and machine learning algorithms f...
This study evaluates the performance of linear model trees to forecast recovery rates of defaulted b...
The main requirement for effective credit risk management is the sound quantification of default and...
Forecasting partial recovery rates for non-performing loans. Based on real debt portfolio data provi...
In this study we implement a neural network to forecast recovery rates of defaulted bonds using bond...
This paper is an extended version of the paper originally presented at the International Conference ...
There have been more studies on recovery rate modeling of bonds than of personal loans and retail cr...
In this paper we explore how predictive modelling can be applied in loan default prediction. The iss...
Loans account for a huge chunk of bank profits. Even though many individuals are looking for loans. ...
Giving credit is one of the core businesses in banking and the importance of credit risk management ...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
In the lending industry, investors provide loans to borrowers in exchange for the promise of repayme...
Machine Learning (ML) uses statistics to find patterns in high dimensional data. The Swedish Board o...
In Todays world, most of world population has access to banking services. Consumers has increa...
The aim of this paper is to evaluate a machine learning technique, Random Forest, to predict default...
We compare the performances of a wide set of regression techniques and machine learning algorithms f...
This study evaluates the performance of linear model trees to forecast recovery rates of defaulted b...
The main requirement for effective credit risk management is the sound quantification of default and...
Forecasting partial recovery rates for non-performing loans. Based on real debt portfolio data provi...
In this study we implement a neural network to forecast recovery rates of defaulted bonds using bond...
This paper is an extended version of the paper originally presented at the International Conference ...
There have been more studies on recovery rate modeling of bonds than of personal loans and retail cr...
In this paper we explore how predictive modelling can be applied in loan default prediction. The iss...
Loans account for a huge chunk of bank profits. Even though many individuals are looking for loans. ...
Giving credit is one of the core businesses in banking and the importance of credit risk management ...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
In the lending industry, investors provide loans to borrowers in exchange for the promise of repayme...
Machine Learning (ML) uses statistics to find patterns in high dimensional data. The Swedish Board o...
In Todays world, most of world population has access to banking services. Consumers has increa...
The aim of this paper is to evaluate a machine learning technique, Random Forest, to predict default...