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- Title
Application of concept drift detection and adaptive framework for non linear time series data from cardiac surgery.
- Authors
Ganesan, Rajarajan; Kaur, Tarunpreet; Mittal, Alisha; Sahi, Mansi; Konar, Sushant; Samra, Tanvir; Puri, Goverdhan Dutt; Thingnum, Shayam Kumar Singh; Auluck, Nitin
- Abstract
The quality of machine learning (ML) models deployed in dynamic environments tends to decline over time due to disparities between the data used for training and the upcoming data available for prediction, which is commonly known as drift. Therefore, it is important for ML models to be capable of detecting any changes or drift in the data distribution and updating the ML model accordingly. This study presents various drift detection techniques to identify drift in the survival outcomes of patients who underwent cardiac surgery. Additionally, this study proposes several drift adaptation strategies, such as adaptive learning, incremental learning, and ensemble learning. Through a detailed analysis of the results, the study confirms the superior performance of ensemble model, achieving a minimum mean absolute error (MAE) of 10.684 and 2.827 for predicting hospital stay and ICU stay, respectively. Furthermore, the models that incorporate a drift adaptive framework exhibit superior performance compared to the models that do not include such a framework.
- Subjects
CARDIAC surgery; TIME series analysis; MACHINE learning; DATA distribution; SURVIVAL rate
- Publication
Computational Intelligence, 2024, Vol 40, Issue 3, p1
- ISSN
0824-7935
- Publication type
Article
- DOI
10.1111/coin.12658