糖尿病诊断的进化支持向量机

R. Stoean, C. Stoean, M. Preuss, E. El-Darzi, D. Dumitrescu
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引用次数: 16

摘要

本文的目的是验证进化支持向量机(esvm)的新范式,并通过一个应用到现实世界的问题,即糖尿病的诊断。esvm是将支持向量机(svm)的强学习范式与进化计算的优化能力相结合而开发出来的。杂交是在求解支持向量机内部的约束优化问题的层面上实现的,这是一项难以用标准方式执行的任务。到目前为止,esvm已经应用于二维点的二值分类。本文对机器学习数据集UCI存储库中关于糖尿病的基准问题进行了实验。得到的结果证明了这种新的混合学习方法的正确性和前景,并证明了它能够解决任何情况下的二元标准分类问题
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Support Vector Machines for Diabetes Mellitus Diagnosis
The aim of this paper is to validate the new paradigm of evolutionary support vector machines (ESVMs) for binary classification also through an application to a real-world problem, i.e. the diagnosis of diabetes mellitus. ESVMs were developed through hybridization between the strong learning paradigm of support vector machines (SVMs) and the optimization power of evolutionary computation. Hybridization is achieved at the level of solving the constrained optimization problem within the SVMs, which is a difficult task to perform in its standard manner. ESVMs have been so far applied to the binary classification of two-dimensional points. In this paper, experiments are conducted on the benchmark problem concerning diabetes of the UCI repository of machine learning data sets. Obtained results proved the correctness and promise of the new hybridized learning technique and demonstrated its ability to solve any case of binary standard classification
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