基于增强遗传算法的文档和图像分类

Nirmani Athuraliya, H.L.S.R.P De Silva, Dulshani Dasanayake, K. Fernando, P. Haddela, Adeepa Gunarathne
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引用次数: 0

摘要

1975年,John Holland提出了遗传算法(GA)。该算法被广泛用于通过依赖生物启发算子(包括突变、交叉和选择)来提供优化和搜索问题的优越解决方案。该算法选择最适合的个体进行繁殖,以产生下一代的后代。分类是一种在数据挖掘中用于分析收集到的数据并将其划分为不同类别的技术。已知的类分配和待分类实体的属性之间的关系可以作为分类过程的基础。通过本研究,主要考虑了用遗传算法对文档和图像进行分类。为了提高传统模型的精度和降低错误率,提出了一种基于遗传算法的新方法。将遗传算法与分类结合使用的主要好处是它可以有效地解决优化问题。实验结果用于使用从UCI机器学习存储库收集的基准数据集验证建议的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Documents and Images Using an Enhanced Genetic Algorithm
In 1975, John Holland proposed the Genetic Algorithm (GA). The algorithm is widely used to provide superior solutions for optimization and search problems by relying on biologically inspired operators including mutation, crossover, and selection. The fittest individuals are chosen for reproduction in this algorithm to generate the next generation’s offspring. Classification is a technique used in data mining to analyze the collected data and to divide them into different classes. The relationship between a known class assignment and the properties of the entity to be classed may serve as the foundation for the classification procedure. Through this research, it has mainly consider classification for documents and images using GA. In order to enhance the accuracy and to reduce the error rate of traditional models, a new approach is proposed which is based on GA. The primary benefit of using GA in conjunction with classification is the efficiency in which it can address optimization issues. The experiment results are used to verify the suggested algorithm using benchmark data sets gathered from the UCI machine learning repository.
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