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Study on Parameter Optimization for Support Vector Regression in Solving the Inverse ECG Problem

机译:求解逆心电图问题的支持向量回归参数优化研究

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The typical inverse ECG problem is to noninvasively reconstruct the transmembrane potentials (TMPs) from body surface potentials (BSPs). In the study, the inverse ECG problem can be treated as a regression problem with multi-inputs (body surface potentials) and multi-outputs (transmembrane potentials), which can be solved by the support vector regression (SVR) method. In order to obtain an effective SVR model with optimal regression accuracy and generalization performance, the hyperparameters of SVR must be set carefully. Three different optimization methods, that is, genetic algorithm (GA), differential evolution (DE) algorithm, and particle swarm optimization (PSO), are proposed to determine optimal hyperparameters of the SVR model. In this paper, we attempt to investigate which one is the most effective way in reconstructing the cardiac TMPs from BSPs, and a full comparison of their performances is also provided. The experimental results show that these three optimization methods are well performed in finding the proper parameters of SVR and can yield good generalization performance in solving the inverse ECG problem. Moreover, compared with DE and GA, PSO algorithm is more efficient in parameters optimization and performs better in solving the inverse ECG problem, leading to a more accurate reconstruction of the TMPs.
机译:典型的逆心电图问题是非从体表电位(BSP)中的跨膜电位(TMP)重建。在该研究中,逆心电图问题可以被视为具有多输入(主体表面电位)和多输出(跨膜电位)的回归问题,其可以通过支持向量回归(SVR)方法来解决。为了获得具有最佳回归精度和泛化性能的有效SVR模型,必须仔细设置SVR的超级参数。提出了三种不同的优化方法,即遗传算法(GA),差分演进(DE)算法和粒子群优化(PSO),以确定SVR模型的最佳超参数。在本文中,我们试图调查哪一个是从BSP重建心脏TMP的最有效的方法,并且还提供了它们性能的完整比较。实验结果表明,在寻找SVR的适当参数时,这三种优化方法很好地进行,可以在解决逆心电图问题时产生良好的泛化性能。此外,与DE和GA相比,PSO算法在参数优化方面更有效,并且在解决逆心电图问题方面更好地执行,导致TMP的更准确地重建。

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