期刊论文详细信息
IEEE Access
Biomedical Classification Problems Automatically Solved by Computational Intelligence Methods
Luis Carlos Padierna1  Carlos Villasenor-Mora2  Silvia Alejandra Lopez Juarez3 
[1] División de Ciencias e Ingenierías, Universidad de Guanajuato Campus Le&x00F3;n, Le&x00F3;n, M&x00E9;
关键词: Biomedical classification problems;    estimation of distribution algorithm;    evolutionary algorithms;    genetic programming;    orthogonal polynomial kernels;    support vector machines;   
DOI  :  10.1109/ACCESS.2020.2998749
来源: DOAJ
【 摘 要 】

Biomedical classification problems are of great interest to both medical practitioners and computer scientists. Due to the harmful consequences of a wrong decision in this ambit, computational methods must be carefully designed to provide a reliable tool for helping physicians to obtain accurate predictions on unseen cases. Computational Intelligence (CI) provides robust models to perform optimization, classification and regression tasks. These models have been previously designed, mainly based on the expertise of computer scientists, to solve a vast number of biomedical problems. As the number of both CI algorithms and biomedical problems continues to grow, selecting the right method to solve a given problem becomes more challenging. To deal with this complexity, a systematic methodology for selecting a suitable model for a given classification problem is required. In this work, we review the more promising classification and optimization algorithms and reformulate them into a synergic framework to automatically design and optimize pattern classifiers. Our proposal, including state-of-the-art evolutionary algorithms and support vector machines, is tested on a variety of biomedical problems. Experimental results on benchmark datasets allow us to conclude that the automatically designed classifiers reach higher or equal performance than those designed by computer specialists.

【 授权许可】

Unknown   

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