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Analyzing Quantum Feature Engineering and Balancing Strategies Effect on Liver Disease Classification

Safriandono, Achmad Nuruddin and Setiadi, De Rosal Ignatius Moses and Dahlan, Akhmad and Rahmanti, Farah Zakiyah and Wibisono, Iwan Setiawan and Ojugo, Arnold Adimabua (2024) Analyzing Quantum Feature Engineering and Balancing Strategies Effect on Liver Disease Classification. Journal of Future Artificial Intelligence and Technologies, 1 (1). pp. 51-63. ISSN 3048-3719

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Abstract

This research aims to improve the accuracy of liver disease classification using Quantum Feature Engineering (QFE) and the Synthetic Minority Over-sampling Tech-nique and Tomek Links (SMOTE-Tomek) data balancing technique. Four machine learning models were compared in this research, namely eXtreme Gradient Boosting (XGB), Random Forest (RF), Support Vector Machine (SVM), and Logistic Regression (LR) on the Indian Liver Patient Dataset (ILPD) dataset. QFE is applied to capture correlations and complex patterns in the data, while SMOTE-Tomek is used to address data imbalances. The results showed that QFE significantly improved LR performance in terms of recall and specificity up to 99%, which is very important in medical diagnosis. The combination of QFE and SMOTE-Tomek gives the best results for the XGB method with an accuracy of 81%, recall of 90%, and f1-score of 83%. This study concludes that the use of QFE and data balancing techniques can improve liver disease classification performance in general.

Item Type: Article
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: dl fts
Date Deposited: 01 Dec 2024 13:23
Last Modified: 01 Dec 2024 13:23
URI: https://dl.futuretechsci.org/id/eprint/91

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