Please use this identifier to cite or link to this item: https://repository.sustech.edu/handle/123456789/22918
Title: Construction of a Prediction Model for Banking Loans Risk Using Data Mining Techniques
Other Titles: بناء نموذج تنبؤي لمخاطر القروض البنكية باستخدام تقنيات تنقيب البيانات
Authors: Mohammed, Sarah Alamein
Supervisor, -Shaza Mergani
Keywords: Computer Science
Construction of a Prediction Model
Banking Loans Risk
Data Mining Techniques
Issue Date: 15-Feb-2019
Publisher: Sudan University of Science and Technology
Citation: Mohammed, Sarah Alamein.Construction of a Prediction Model for Banking Loans Risk Using Data Mining Techniques\ Sarah Alamein Mohammed ;Shaza Mergani .- Khartoum: Sudan University of Science and Technology, College of Computer Science And Information Technology, 2019 .- 36p. :ill. ;28cm .- M.Sc
Abstract: Banks deal with huge amounts of customer's data and thus needs tremendous efforts to improve the understanding of the accumulated data in order to detect customer's behavior and accordingly enable the executive mangers to make the right decision and avoid any possible losses, wasting time and effort . The main aim of this thesis is to distinguish between borrowers who pay back loan from those who don’t . therefore the executive mangers can easily reduce the costs of non-payment borrowers and decrease the high number of bad loans in order to serve the bank and its customers by using data mining techniques. The dataset of this research was obtained from the UCI machine learning repository website. In order to improve the accuracy of our classification and gain useful results some preprocessing techniques were applied such as : removed any irrelevant and correlated data , implemented data discretization ,data cleaning ,and target class balancing as well to achieve a suitable dataset for our Algorithms. Then five data mining classification techniques were conducted which are: Naive bayes , J48, IBK, Multilayer Perceptron (MLP) and Sequential minimal optimization (SMO).The Weka software from Waikato university with (10-cross validation) was used to model and validate the proposed models. Experiments in this research were conducted in two stages. Firstly, J48 classifier was applied on full dataset, the results carried out in this stage show that: applying of the preprocessing techniques on the data set improved the performance of the classifier. Secondly, five classification techniques were applied to the preprocessed datasets. The results carried out in this stage showed that the performance of the five classification algorithms are nearly same . Out of these five classification algorithms, J48classifier had the highest accuracy (84.35%) .
Description: Thesis
URI: http://repository.sustech.edu/handle/123456789/22918
Appears in Collections:Masters Dissertations : Computer Science and Information Technology

Files in This Item:
File Description SizeFormat 
Construction of a Prediction ....pdfTitle75.32 kBAdobe PDFView/Open
Abstract.pdfAbstract117.51 kBAdobe PDFView/Open
Research.pdfResearch17.61 MBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.