KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH
Knowledge-based systems with a blackbox model generally lack internal information as explanations for decisions. This is not suitable for high-risk fields such as credit, both in terms of user needs and regulations (Personal Data Protection (PDP) and General Data Protection Regulation (GDPR)). Th...
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id-itb.:732482023-06-19T08:21:34ZKNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH Steven Supardi, Rolland Indonesia Final Project knowledge-based system, credit granting, XAI INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/73248 Knowledge-based systems with a blackbox model generally lack internal information as explanations for decisions. This is not suitable for high-risk fields such as credit, both in terms of user needs and regulations (Personal Data Protection (PDP) and General Data Protection Regulation (GDPR)). Therefore, XAI is commonly used for explanations in such systems. However, its application in credit granting has not been found with Indonesian data yet, as the regulations are still new. This final project aims to create a knowledge-based credit granting system in Indonesia with local explanations. This can be achieved by using Indonesian knowledge base, searching for machine learning algorithms and XAI methods with a level of explanation that can be easily understood by users. To achieve this, the final system created is the best solution based on a comparison of Decision Tree and XGBoost models with LIME, SHAP, and Anchors methods. Evaluation metrics such as accuracy and feedback from domain experts are used to find the best system. The data used in the system needs to be adapted for machine learning algorithms and XAI to provide sufficiently accurate predictions with easily understandable explanations. The test results show that the Decision Tree explanation method provides the best results compared to other tested methods. However, the system still has weaknesses in terms of accuracy and explanations of important features, which are still too simplistic and dominated by certain features. text |
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Knowledge-based systems with a blackbox model generally lack internal
information as explanations for decisions. This is not suitable for high-risk fields
such as credit, both in terms of user needs and regulations (Personal Data Protection
(PDP) and General Data Protection Regulation (GDPR)). Therefore, XAI is
commonly used for explanations in such systems. However, its application in credit
granting has not been found with Indonesian data yet, as the regulations are still
new. This final project aims to create a knowledge-based credit granting system in
Indonesia with local explanations. This can be achieved by using Indonesian
knowledge base, searching for machine learning algorithms and XAI methods with
a level of explanation that can be easily understood by users.
To achieve this, the final system created is the best solution based on a comparison
of Decision Tree and XGBoost models with LIME, SHAP, and Anchors methods.
Evaluation metrics such as accuracy and feedback from domain experts are used to
find the best system. The data used in the system needs to be adapted for machine
learning algorithms and XAI to provide sufficiently accurate predictions with easily
understandable explanations.
The test results show that the Decision Tree explanation method provides the best
results compared to other tested methods. However, the system still has weaknesses
in terms of accuracy and explanations of important features, which are still too
simplistic and dominated by certain features. |
format |
Final Project |
author |
Steven Supardi, Rolland |
spellingShingle |
Steven Supardi, Rolland KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
author_facet |
Steven Supardi, Rolland |
author_sort |
Steven Supardi, Rolland |
title |
KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
title_short |
KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
title_full |
KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
title_fullStr |
KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
title_full_unstemmed |
KNOWLEDGE-BASED CREDIT GRANTING SYSTEM IN INDONESIA WITH ARTIFICIAL INTELLIGENCE AND XAI APPROACH |
title_sort |
knowledge-based credit granting system in indonesia with artificial intelligence and xai approach |
url |
https://digilib.itb.ac.id/gdl/view/73248 |
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1822007055725101056 |