基于SVR改进算法的信号完整性分析

Kaixing Cheng, Zhongqiang Luo, Xingzhong Xiong, L. Cheng, Xiaohan Wei, Leilei Chen, Wei Zhang
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引用次数: 2

摘要

与传统的支持向量机回归(SVR)相比,SVR超参数快速优化算法可以提高预测结果的准确性。然而,数据表明,当训练样本过大时,会增加模型学习的复杂性,导致建模时间过长。因此,我们参考变量选择和稀疏支持向量机(VSߝSSVM)算法中最有效的支持向量集搜索方法,并适当拟合这两种算法的“优点”,构建快速优化超参数和稀疏支持向量机(FOH-SSVM)算法。在这项工作中,我们使用该算法来解决信号完整性问题。实验结果表明,FOH-SSVM算法所需的建模时间为1%,大大缩短了建模时间。同时,该算法的预测精度提高了8%,保证了良好的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Integrity Analysis Based on SVR Improved Algorithm
Compared with the traditional support vector machine regression (SVR), the SVR hyperparameter fast optimization algorithm can improve the accuracy of the prediction results. However, the data shows that when the training sample is too large, it will increase the complexity of model learning, resulting in too long modeling time. Therefore, we refer to the most effective support vector set search method in the variable selection and sparse support vector machine (VSߝSSVM) algorithm, and appropriately fit the “advantages” of these two algorithms to construct a fast optimization hyperparameter and sparse support vector machine (FOH-SSVM) algorithm. In this work, we use the algorithm to solve the problem of signal integrity. The experimental results show that the modeling time required by the FOH-SSVM algorithm is 1%, which greatly reduces the modeling time. At the same time, the prediction accuracy of the algorithm is increased by 8%, ensuring good prediction performance.
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