Title of article :
Assessment of Customer Credit Risk using an Adaptive Neuro-Fuzzy System
Author/Authors :
Kianian, Sahar Faculty of Computer Engineering - Shahid Rajaee Teacher Training University, Tehran, Iran , Farzi, Saeed Faculty of Computer Engineering - K. N. Toosi University of Technology, Tehran, Iran
Abstract :
Given the financial crises in the world, one of the
most important issues of banking industry is the assessment
of customers' credit to distinguish bad credit customers from
good credit customers. The problem of customer credit risk
assessment is a binary classification problem, which suffers
from the lack of data and sophisticated features as main
challenges. In this paper, an adaptive neuro-fuzzy inference
system is exploited to tackle the customer credit risk
assessment problem regarding the mentioned challenges.
First of all, a SOMTE-based algorithm is introduced to
overcome the data imbalancing problem. Then, several
efficient features are identified using a MEMETIC metaheuristic
algorithm, and finally an adaptive neuro-fuzzy
system is exploited for distinguishing bad credit customers
from good ones. To evaluate and compare the performance of
the proposed system, the standard German credit data dataset
and the well-known classification algorithms are utilized. The
results indicate the superiority of the proposed system
compared to some well-known algorithms in terms of
precision, accuracy, and Type II errors.
Keywords :
Fuzzy system , Risk assessment , Customer credit risk , Banking
Journal title :
Journal of Computer and Knowledge Engineering