SGD-Based Cascade Scheme for Higher Degrees Wiener Polynomial Approximation of Large Biomedical Datasets

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2022-11-21 DOI:10.3390/make4040055
I. Izonin, R. Tkachenko, Rostyslav Holoven, Kyrylo Yemets, Myroslav Havryliuk, Shishir K. Shandilya
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引用次数: 1

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.
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基于sgd的大型生物医学数据集高次Wiener多项式近似级联方案
生物医学工程领域的现代发展伴随着大量具有非线性响应面的数据的可用性。对这些数据的有效分析需要开发新的、更高效的机器学习方法。本文提出了一种结合了高阶维纳多项式和随机梯度下降算法的优点,同时又消除了它们的缺点的级联集成,以保证在令人满意的训练时间内对此类数据的逼近具有较高的精度。本文给出了学习算法的流程图和所开发的集成方案的应用,并对所有步骤进行了详细的描述。模拟是基于真实世界的数据集进行的。已经执行了所建议的模型调优过程。实验结果表明,该方法具有较高的逼近精度。给出了高阶维纳多项式在其成员数稍有增加的情况下隐式逼近的可能性。保证了该方法在分析大数据集时训练时间短,为其在生物医学工程领域的实际应用提供了可能。
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6.30
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审稿时长
7 weeks
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