DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK

One of the main problems in telecommunications business, especially in postpaid service at service provider side, is unpaid invoice or bad debt. As the essential part of its cycle, an operator must be able to handle this problem since it contributes significantly in its earnings. Abuse to service is...

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Main Author: SETIADI (NIM 23206066), WIWIT
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/9640
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:9640
spelling id-itb.:96402017-09-27T15:37:36ZDESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK SETIADI (NIM 23206066), WIWIT Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/9640 One of the main problems in telecommunications business, especially in postpaid service at service provider side, is unpaid invoice or bad debt. As the essential part of its cycle, an operator must be able to handle this problem since it contributes significantly in its earnings. Abuse to service is one of the causes resulting bad debt. This kind of fraud is difficult to be managed if the fraudster has entered the network. But, by learning the pattern recognition of the usage, this disservice can be minimized. It depends on the selection of method that is able to recognize the usage pattern. <br /> <br /> <br /> <br /> The importance of this problem now becomes a challenge. The challenge is in the form of finding correct concept or method to detect fraud. Some researchers have been address this problem by using various technologies of data mining and intelligent composing. Artificial neural network (neural network) is one of the technologies which will be employed, where its ability to recognize pattern is a pre-eminent value. <br /> <br /> <br /> <br /> On this thesis, we design and implement a Bad Debt predictor and Fraud Management System (FMS). This system uses artificial neural network technology. This system is intended be to be used for postpaid services in cellular telecommunications business. Nevertheless, similar concept can also be applied into other technology with a few modification. This research has given good result in the ability of bad debt prediction to 87%, while for FMS has reached 85%. <br /> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description One of the main problems in telecommunications business, especially in postpaid service at service provider side, is unpaid invoice or bad debt. As the essential part of its cycle, an operator must be able to handle this problem since it contributes significantly in its earnings. Abuse to service is one of the causes resulting bad debt. This kind of fraud is difficult to be managed if the fraudster has entered the network. But, by learning the pattern recognition of the usage, this disservice can be minimized. It depends on the selection of method that is able to recognize the usage pattern. <br /> <br /> <br /> <br /> The importance of this problem now becomes a challenge. The challenge is in the form of finding correct concept or method to detect fraud. Some researchers have been address this problem by using various technologies of data mining and intelligent composing. Artificial neural network (neural network) is one of the technologies which will be employed, where its ability to recognize pattern is a pre-eminent value. <br /> <br /> <br /> <br /> On this thesis, we design and implement a Bad Debt predictor and Fraud Management System (FMS). This system uses artificial neural network technology. This system is intended be to be used for postpaid services in cellular telecommunications business. Nevertheless, similar concept can also be applied into other technology with a few modification. This research has given good result in the ability of bad debt prediction to 87%, while for FMS has reached 85%. <br />
format Theses
author SETIADI (NIM 23206066), WIWIT
spellingShingle SETIADI (NIM 23206066), WIWIT
DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
author_facet SETIADI (NIM 23206066), WIWIT
author_sort SETIADI (NIM 23206066), WIWIT
title DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
title_short DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
title_full DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
title_fullStr DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
title_full_unstemmed DESIGN AND IMPLEMENTATION OF BAD DEBT PREDICTOR AND FRAUD MANAGEMENT SYSTEM USING MULTILAYER NEURAL NETWORK
title_sort design and implementation of bad debt predictor and fraud management system using multilayer neural network
url https://digilib.itb.ac.id/gdl/view/9640
_version_ 1820664753852252160