Personal Credit Score Prediction using Data Mining Algorithms (Case Study: Bank Customers)

Authors

Abstract:

Knowledge and information extraction from data is an age-old concept in scientific studies. In industrial decision-making processes, the application of this concept gives rise to data-mining opportunities. Personal credit scoring is an ever-vital tool for banking systems in order to manage and minimize the inherent risks of the financial sector, thus, the design and improvement of credit scoring systems based on the data-driven and machine learning techniques have garnered newfound research interest on the subject in recent years. In the present study, important variables and parameters for credit score are identified and consequently, prediction of credit score for clients of a bank is performed. CRISP-DM is employed as the reference model for the data mining process and data modelling is accomplished based on a variety of algorithms (K-nearest-neighbors, Decision tree and Random forest). Comparative results of accuracy and sensitivity of algorithms demonstrated that the k-nearest neighbour algorithm by the accuracy of 90.3% for the training set and 76.7% for test data performs suitably to predict credit score.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

classification of internet banking customers using data mining algorithms

classifying customers using data mining algorithms, enables banks to keep old customers loyality while attracting new ones. using decision tree as a data mining technique, we can optimize customer classification provided that the appropriate decision tree is selected. in this article we have presented an appropriate model to classify customers who use internet banking service. the model is deve...

full text

Personal bankruptcy prediction by mining credit card data

A personal bankruptcy prediction system running on credit card data is proposed. Personal bankruptcy, which usually results in significant losses to creditors, is a rapidly increasing yet little understood phenomenon. The most commonly used methods in personal bankruptcy prediction are credit scoring models. Some data mining models have also been investigated in this domain. Neither the scoring...

full text

Credit rating of the bank legal customers by using the improved modified Russell model (Case study: the legal customers of Arak Melli Bank)

The most exchange volume in a country will be obtained through bank system whose correct function will have a determinant role in improving economic activities. Nowadays, the customer’s rating and accreditation subject has been considered more than before by the banks due to increase the volume of overdue claims and banks’ past over dues. One of the most important tools for controlling the bank...

full text

Predicting Type2 Diabetes Using Data Mining Algorithms

Background and purpose: Today, information systems and databases are widely used and in order to achieve higher accuracy and speed in making diagnosis, preventing the diseases, and choosing treatments they should be merged with traditional methods. This study aimed at presenting an accurate system for diagnosis of diabetes using data mining and a heuristic method combining neural network and pa...

full text

Predicting personal credit ratings using ubiquitous data mining

Ubiquitous data mining (UDM) is a methodology for creating new knowledge by building an integrated financial database in a ubiquitous computing environment, extracting useful rules by using diverse rule-extraction-based data mining techniques, and combining these rules. In this study, we built six credit rating forecasting models using traditional statistical methods (i.e., logistic regression ...

full text

A Prediction Model for Recognition of Bad Credit Customers in Saman Bank Using Neural Networks

The aim of this paper is to present a model based on feed forward neural networks to recognize bad credit customers in Saman Bank. To find an appropriate structure for the proposed neural network model, three different strategies called quick, dynamic and multiple strategies are investigated. The registered data of credit customer in Saman Bank from 2000 to 2008 year is used. To prevent models ...

full text

My Resources

Save resource for easier access later

Save to my library Already added to my library

{@ msg_add @}


Journal title

volume 14  issue 48

pages  327- 360

publication date 2021-09

By following a journal you will be notified via email when a new issue of this journal is published.

Keywords

No Keywords

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023