Modelling and Forecasting of Aspects of Credit Card Defaults
Loading...
Files
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
IISERM
Abstract
The author of this thesis aims to reproduce and extend the work done by Vladimir G.
Drugov [Dru] to understand the dynamics involved in the data set, make conclusions,
provide best predictive model to predict future defaults and forecast monthly trends
of credits through arti cial intelligence. In nance, default is the failure of payment
on debt by the due date. This thesis report is devoted to "modelling and forecasting
of aspects of credit card defaults" with the help of Data exploration by statistical
visualisation techniques reproduced from The extended part which is research of the
author is The data used is that of a credit card company [WEB] which has demographic
and nancial information of it's customers and status of default in their credit
card payment.
The purpose of this study is to:
Find impact of demographic and FInancial variables on the status of default.
Find important variables responsible for defaults.
Forecast pattern of unpaid credits of the customers.