Modelling Time to Default on Kenyan Bank Loans Using Non-parametric Models
Abstract
Financial institutions in past decades have been facing many risks that must be dealt with
sensitively and in accordance with the instructions of the Central Bank of Kenya (CBK).
In the forefront of these risks is credit risk which in case is ignored would likely plunge
the banks into myriads of problems or even to bankruptcy. Papers on statistical models
detailing on how to model credit risks have been published and have enabled banks to
di erentiate ’good’ and ’bad’ clients contingent on repayment performance during loan
term. Credit granting is one of the main ingredients required for an economic spur in
any given country. However, the technicalities attached to it poses a dilemma to the
lending institutions on the appropriate approach to adopt when lending to minimize losses
resulting from default.
The objective of this research is to identify credit scoring factors and to select non-parametric
models of survival analysis which is most e ective to model time to default. Variables considered
based on FICO include income of the company, age of the company and account. It
was evident that oldest companies whose accounts were opened more than 8 years before
loan application have lower tendency of default. Also study show that Nelson Aalen is a
better estimator of time to default to Kaplan-Meier. The study recommends more studies
to incorporate macroeconomic variables to establish their impacts on client’s loan repayment
performance and further estimate time to second default. It will also be interesting
to extend this studies to the mixture curse model and study the performance of the resulting
model in comparison with Cox proportional hazard model with penalized splines as
our study involved univariate method.
Publisher
University of Nairobi
Rights
Attribution-NonCommercial-NoDerivs 3.0 United StatesUsage Rights
http://creativecommons.org/licenses/by-nc-nd/3.0/us/Collections
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