ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS
One of the most common credit card fraud types is called behavioral fraud. It happens when the detail information of one’s credit card has been obtained fraudulently, and transactions are made with that card. The cardholder is not aware at all when the transactions are made. This particular type...
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id-itb.:397142019-06-27T14:26:33ZONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS Low, Erick Indonesia Final Project clustering, Gaussian mixture models, EM Algorithm, k-means INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39714 One of the most common credit card fraud types is called behavioral fraud. It happens when the detail information of one’s credit card has been obtained fraudulently, and transactions are made with that card. The cardholder is not aware at all when the transactions are made. This particular type of fraud easily happens in online transaction, like in e-commerce. It’s because, to make an online transaction, the frauder only requires the detail information of the credit card without has to own the card physically. This books attempts to provide a fraud detection method which can be used to check the transaction status, whether it’s legitimate or fraudulent. Normally, customers who are making transaction will have to pass transaction verification step. The transaction status will be checked by the fraud detection system. For customer service, we hope the verification step won’t be slow so that the customers won’t have to spend a long time in order to make a transaction. Given such situation, not only is a company required to provide a robust fraud detection system, but also a fast fraud detection system. To detect the fraudulent transactions, we’re interested in unsupervised method. We detect by observing the abnormal transactions that are being made. An abnormal transaction is transaction that doesn’t suit the customer’s past transaction behavior. This book uses Gaussian mixture models to do clustering. Clustering needs to be done in order for us to obtain several classes of customer transaction behavior. Later, we also give comparison between fraud detection method using Gaussian mixture models and k-means. text |
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One of the most common credit card fraud types is called behavioral fraud. It
happens when the detail information of one’s credit card has been obtained fraudulently,
and transactions are made with that card. The cardholder is not aware at
all when the transactions are made. This particular type of fraud easily happens in
online transaction, like in e-commerce. It’s because, to make an online transaction,
the frauder only requires the detail information of the credit card without has to own
the card physically. This books attempts to provide a fraud detection method which
can be used to check the transaction status, whether it’s legitimate or fraudulent.
Normally, customers who are making transaction will have to pass transaction
verification step. The transaction status will be checked by the fraud detection
system. For customer service, we hope the verification step won’t be slow so that
the customers won’t have to spend a long time in order to make a transaction. Given
such situation, not only is a company required to provide a robust fraud detection
system, but also a fast fraud detection system. To detect the fraudulent transactions,
we’re interested in unsupervised method. We detect by observing the abnormal
transactions that are being made. An abnormal transaction is transaction that doesn’t
suit the customer’s past transaction behavior. This book uses Gaussian mixture
models to do clustering. Clustering needs to be done in order for us to obtain several
classes of customer transaction behavior. Later, we also give comparison between
fraud detection method using Gaussian mixture models and k-means. |
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Final Project |
author |
Low, Erick |
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Low, Erick ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
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Low, Erick |
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Low, Erick |
title |
ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
title_short |
ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
title_full |
ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
title_fullStr |
ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
title_full_unstemmed |
ONLINE CREDIT CARD FRAUD DETECTION USING GAUSSIAN MIXTURE MODELS |
title_sort |
online credit card fraud detection using gaussian mixture models |
url |
https://digilib.itb.ac.id/gdl/view/39714 |
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