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Data Classification Using Genetic Parallel Programming

机译:使用遗传并行编程的数据分类

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摘要

A novel Linear Genetic Programming (LGP) paradigm called Genetic Parallel Programming (GPP) has been proposed to evolve parallel programs based on a Multi-ALU Processor. It is found that GPP can evolve parallel programs for Data Classification problems. In this paper, five binary-class UCI Machine Learning Repository databases are used to test the effectiveness of the proposed GPP-classifier. The main advantages of employing GPP for data classification are: 1) speeding up evolutionary process by parallel hardware fitness evaluation; and 2) discovering parallel algorithms automatically. Experimental results show that the GPP-classifier evolves simple classification programs with good generalization performance. The accuracies of these evolved classifiers are comparable to other existing classification algorithms.
机译:已经提出了一种新颖的线性遗传编程(LGP)范例,称为遗传并行编程(GPP),以发展基于Multi-ALU处理器的并行程序。发现GPP可以针对数据分类问题发展并行程序。在本文中,使用五个二元类UCI机器学习存储库数据库来测试所提出的GPP分类器的有效性。采用GPP进行数据分类的主要优点是:1)通过并行硬件适应性评估加快进化过程; 2)自动发现并行算法。实验结果表明,GPP分类器可以演化出具有良好泛化性能的简单分类程序。这些进化的分类器的准确性可与其他现有分类算法相媲美。

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