Abstract
The modern development of the biomedical engineering area is accompanied by the availability of large volumes of data with a non-linear response surface. The effective analysis of such data requires the development of new, more productive machine learning methods. This paper proposes a cascade ensemble that combines the advantages of using a high-order Wiener polynomial and Stochastic Gradient Descent algorithm while eliminating their disadvantages to ensure a high accuracy of the approximation of such data with a satisfactory training time. The work presents flow charts of the learning algorithms and the application of the developed ensemble scheme, and all the steps are described in detail. The simulation was carried out based on a real-world dataset. Procedures for the proposed model tuning have been performed. The high accuracy of the approximation based on the developed ensemble scheme was established experimentally. The possibility of an implicit approximation by high orders of the Wiener polynomial with a slight increase in the number of its members is shown. It ensures a low training time for the proposed method during the analysis of large datasets, which provides the possibility of its practical use in the biomedical engineering area.
Funder
National Research Foundation of Ukraine
Subject
General Economics, Econometrics and Finance
Reference47 articles.
1. Garza-Ulloa, J. (2022). Applied Biomedical Engineering Using Artificial Intelligence and Cognitive Models, Academic Press.
2. Tsmots, I., and Skorokhoda, O. (2010, January 20–23). Methods and VLSI-Structures for Neural Element Implementation. Proceedings of the 2010 VIth International Conference on Perspective Technologies and Methods in MEMS Design, Lviv, Ukraine.
3. Development and Implementation of the Technical Accident Prevention Subsystem for the Smart Home System;Int. J. Intell. Syst. Appl.,2018
4. Radutniy, R., Nechyporenko, A., Alekseeva, V., Titova, G., Bibik, D., and Gargin, V.V. (2020, January 21–25). Automated Measurement of Bone Thickness on SCT Sections and Other Images. Proceedings of the 2020 IEEE Third International Conference on Data Stream Mining & Processing (DSMP), Lviv, Ukraine.
5. Complex Automatic Determination of Morphological Parameters for Bone Tissue in Human Paranasal Sinuses;Open Bioinform. J.,2021
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