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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Multi-objective adaptive differential evolution for SVM/SVR hyperparameters selection
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Multi-objective adaptive differential evolution for SVM/SVR hyperparameters selection

机译:SVM / SVR HyperParameters选择的多目标自适应差分演进

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摘要

Parameters Selection Problem (PSP) is a relevant and complex optimization issue in Support Vector Machine (SVM) and Support Vector Regression (SVR), looking for obtaining an optimal set of hyperparameters. In our case, the optimization problem is addressed to obtain models that minimize the number of support vectors and maximize generalization capacity. However, to obtain accurate and low complexity solutions, defining an adequate kernel function and the SVM/SVR's hyperparameters are necessary, which currently represents a relevant research topic. To tackle this problem, this work proposes a multiobjective metaheuristic named Adaptive Parameter control with Mutant Tournament Multi-Objective Differential Evolution (APMT-MODE). Its performance is first tested in a series of benchmarks for classification and regression problems using simple kernels such as Gaussian and polynomial kernels. In both cases, the APMT-MODE is able to yield more precise and more straightforward solutions using simple kernels. Then, the approach is used on a real case study to create a welding bead depth and width SVR models for a Gas Metal Arc Welding (GMAW) process. Additionally, a study on kernel functions was developed in terms of computational effort, aiming to assess its performance for embedded systems applications. (c) 2020 Published by Elsevier Ltd.
机译:参数选择问题(PSP)是支持向量机(SVM)和支持向量回归(SVR)中的一个相关而复杂的优化问题,旨在获得一组最优的超参数。在我们的例子中,优化问题是为了获得最小化支持向量数量和最大化泛化能力的模型。然而,要获得精确且低复杂度的解,必须定义适当的核函数和SVM/SVR的超参数,这是当前的一个相关研究课题。为了解决这一问题,本文提出了一种多目标元启发式算法——多目标差分进化自适应参数控制(APMT-MODE)。它的性能首先在一系列使用简单核函数(如高斯核函数和多项式核函数)的分类和回归问题基准测试中得到验证。在这两种情况下,APMT-MODE都能够使用简单的内核生成更精确、更直接的解决方案。然后,将该方法应用于实际案例研究中,建立了气体保护焊(GMAW)工艺的焊道深度和宽度SVR模型。此外,从计算量的角度对核函数进行了研究,旨在评估其在嵌入式系统应用中的性能。(c) 2020年爱思唯尔有限公司出版。

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