ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER

Credit default can be defined as the borrower’s failure to make loan payments on the due date. Credit default can cause losses for lenders, so preventive actions must be taken, one of which is to predict the potential for default early. This credit default customer problem can be categorized as a bi...

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Main Author: Widya Sari, Sherin
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/49712
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:49712
spelling id-itb.:497122020-09-18T12:24:28ZARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER Widya Sari, Sherin Indonesia Final Project ANN, credit default customer, learning algorithm, backpropagation gradient descent, spiral optimization algorithm. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/49712 Credit default can be defined as the borrower’s failure to make loan payments on the due date. Credit default can cause losses for lenders, so preventive actions must be taken, one of which is to predict the potential for default early. This credit default customer problem can be categorized as a binary classification problem. Artificial neural networks (ANN) are a widely used model for classification problems. ANN has the capability to capture linear and non-linear trends from complex data and able to obtain reliable predictions for new data. The backpropagation learning algorithm is a learning algorithm that is widely used in ANN and can provide good results. However, this method has a drawback that is could be trapped in local optima since they perform trajectory searching and require gradient information in the process so that only differentiable functions can be used. In this final project, the author uses a spiral optimization algorithm introduced by Tamura and Yasuda (2011). This method is one of the metaheuristic optimization methods in which the process of finding a solution is not based on trajectory searching and does not require gradient information as learning algorithm for ANN. 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 Credit default can be defined as the borrower’s failure to make loan payments on the due date. Credit default can cause losses for lenders, so preventive actions must be taken, one of which is to predict the potential for default early. This credit default customer problem can be categorized as a binary classification problem. Artificial neural networks (ANN) are a widely used model for classification problems. ANN has the capability to capture linear and non-linear trends from complex data and able to obtain reliable predictions for new data. The backpropagation learning algorithm is a learning algorithm that is widely used in ANN and can provide good results. However, this method has a drawback that is could be trapped in local optima since they perform trajectory searching and require gradient information in the process so that only differentiable functions can be used. In this final project, the author uses a spiral optimization algorithm introduced by Tamura and Yasuda (2011). This method is one of the metaheuristic optimization methods in which the process of finding a solution is not based on trajectory searching and does not require gradient information as learning algorithm for ANN.
format Final Project
author Widya Sari, Sherin
spellingShingle Widya Sari, Sherin
ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
author_facet Widya Sari, Sherin
author_sort Widya Sari, Sherin
title ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
title_short ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
title_full ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
title_fullStr ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
title_full_unstemmed ARTIFICIAL NEURAL NETWORK USING SPIRAL OPTIMIZATION ALGORITHM TO PREDICT CREDIT DEFAULT CUSTOMER
title_sort artificial neural network using spiral optimization algorithm to predict credit default customer
url https://digilib.itb.ac.id/gdl/view/49712
_version_ 1822000447000412160