Skripsi
IMPUTASI DATA DERET WAKTU MULTIVARIAT MENGGUNAKAN METODE SKDL (STING KERNEL DEEP LEVEL) WITH EXPLAINABLE
This study aims to develop a new method to address the problem of missing values in multivariate time series data, particularly in vital sign data of ICU patients derived from the MIMIC-IV dataset. Missing data in the medical context can hinder analysis, prediction, and even clinical decision-making. Therefore, an accurate and explainable imputation approach is crucial. This research introduces a combined approach involving two methods: the STING method (Self-Attention-based Time Series Imputation using GAN) and the Enhanced Kernel method. The Enhanced STING method is designed to generate precise numerical imputations using attention mechanisms and a GAN architecture, while the Kernel method focuses on achieving better imputations in the medical domain. The combination of these two methods is referred to as SKDL (STING Kernel Deep Level with Explainable), an imputation method capable of producing dual outputs (numerical and categorical) and equipped with Explainable AI components. The model is evaluated using MAE, MSE, RMSE, R-Squared, Sensitivity, Specificity, and F1-Score as performance metrics. The results show that the Enhanced STING method achieved a MAE of 0.090 and RMSE of 0.0109, outperforming existing methods such as KNN, MICE, and Mean Imputation. Meanwhile, the Enhanced Kernel method achieved an F1-Score of 0.825. The SKDL method achieved MAE of 0.0870, MSE of 0.0175, RMSE of 0.0040, and R-Squared of 0.3367, which shows the best accuracy results compared to the Advanced Stage STING and Advanced Stage Kernel Methods. These findings indicate that the proposed approach not only produces more accurate imputations but also provides clinically interpretable outputs in the form of categorical data representing patient condition status. This research provides a significant contribution to the field of medical data science, particularly in the development of AI-based decision support systems for intensive care units. Keywords: Imputation, Time Series, Multivariat, Data, STING, Kernel, Deep Level, Explainable
Inventory Code | Barcode | Call Number | Location | Status |
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2507005874 | T184572 | T1845722025 | Central Library (Reference) | Available but not for loan - Not for Loan |
Title | Edition | Language |
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IMPUTASI DATA YANG HILANG PADA DATA DERET WAKTU MULTIVARIAT MENGGUNAKAN ARSITEKTUR U-NET | id |