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A ternary bitwise calculator based genetic algorithm for improving error correcting output codes

机译:基于三元计算器基于基于误差校正输出代码的遗传算法

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摘要

This paper proposes a novel genetic algorithm (GA) for the error correction output coding (ECOC) framework. Different from other GA algorithms, a new individual structure is designed by setting a gene as the combination of three types of operators: (1) the column selector; (2) the ternary bitwise calculator; (3) the feature selector. In our GA algorithm, two column selectors first extract two columns to from a codematrix pool, then a Ternary bitwise Calculator (TC) transfers them to a new column through a ternary number calculation process. The feature selector selects a feature subset for training the associated dichotomizer. By doing so, an individual contains a set of genes to form an ECOC ensemble. The TCs deployed in our algorithm include both the traditional TCs and some newly proposed TCs, which aid to generate diverse codematrices. When the evolutionary process terminates, the best individual in the last generation is regarded as the final solution. The performance of our algorithm is verified on both the UCI and microarray data sets. Experiment results demonstrate that our GA based ECOC achieves promising performance comparing to other ECOC algorithms. Furthermore, results also confirm that various TCs contribute to the generation of discriminative individuals. (C) 2020 Elsevier Inc. All rights reserved.
机译:本文提出了一种用于纠错输出编码(ECOC)框架的新型遗传算法(GA)。与其他GA算法不同,通过将基因设置为三种类型的操作员组合来设计一种新的单独结构:(1)列选择器; (2)三元位数计算器; (3)特征选择器。在我们的GA算法中,两个列选择器首先从CodeMatrix池中提取两列,然后通过三元数计算过程将它们传送到新列。特征选择器选择用于训练相关的DIChotomizer的特征子集。通过这样做,个人包含一组基因以形成ecoc集合。部署在我们的算法中的TCS包括传统TCS和一些新提议的TCS,帮助生成各种CodeMatrices。当进化过程终止时,上一代中最好的个人被视为最终解决方案。在UCI和微阵列数据集中验证了我们算法的性能。实验结果表明,基于GA的ECOC达到了与其他ecoC算法相比的有希望的性能。此外,结果还证实各种TCS有助于产生歧视性的人。 (c)2020 Elsevier Inc.保留所有权利。

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