FRAUD DETECTION SYSTEM USING CONVOLUTIONAL NEURAL NETWORK ALGORITHM
In this modern era, it is undeniable that the internet has become a basic human need which is one of the pillars of the rolling of life. Almost everything humans do today requires an internet connection, one of which is when conducting financial transactions. An example of the use of the inter...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/56120 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | In this modern era, it is undeniable that the internet has become a basic human
need which is one of the pillars of the rolling of life. Almost everything humans do
today requires an internet connection, one of which is when conducting financial
transactions. An example of the use of the internet in financial transactions is the use of
mobile banking and digital wallet/electronic money. These two things are indeed very
helpful for humans to transact anytime and anywhere very easily and quickly, but
behind this ease and convenience there is a threat waiting for an opportunity to attack
anyone. This is very possible because the device used is connected to the internet
network so there may be intruders from the public network to commit fraud, especially
in terms ofmobile banking. In this final project, a machine will be developed to detect
fraud (fraud) finance with an artificial intelligence-based approach (artificial
intelligence). The machine that will be developed will apply one of the methods in the
development of an artificial nervous system, namely Convolutional Neural Networks (
CNN). The development of this machine consists of 5 stages, namely understanding
business needs, understanding data, data preparation, machine modeling, and model
evaluation. In this study, the performance of the model between before and after
optimization will be compared usingframework Optuna who managed to improve the
performance of the model from 83% to 91% (recalls). |
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