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首页> 外文期刊>International journal of fuzzy system applications >Hybrid System based on Rough Sets and Genetic Algorithms for Medical Data Classifications
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Hybrid System based on Rough Sets and Genetic Algorithms for Medical Data Classifications

机译:基于粗糙集和遗传算法的医学数据分类混合系统

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摘要

Computational intelligence provides the biomedical domain by a significant support. The application of machine learning techniques in medical applications have been evolved from the physician needs. Screening, medical images, pattern classification, prognosis are some examples of health care support systems. Typically medical data has its own characteristics such as huge size and features, continuous and real attributes that refer to patients' investigations. Therefore, discretization and feature selection process are considered a key issue in improving the extracted knowledge from patients' investigations records. In this paper, a hybrid system that integrates Rough Set (RS) and Genetic Algorithm (GA) is presented for the efficient classification of medical data sets of different sizes and dimensionalities. Genetic Algorithm is applied with the aim of reducing the dimension of medical datasets and RS decision rules were used for efficient classification. Furthermore, the proposed system applies the Entropy Gain Information (EI) for discretization process. Four biomedical data sets are tested by the proposed system (EI-GA-RS), and the highest score was obtained through three different datasets. Other different hybrid techniques shared the proposed technique the highest accuracy but the proposed system preserves its place as one of the highest results systems four three different sets. EI as discretization technique also is a common part for the best results in the mentioned datasets while RS as an evaluator realized the best results in three different data sets.
机译:计算智能在重要的支持下提供了生物医学领域。机器学习技术在医学应用中的应用已从医生的需求中发展而来。筛查,医学图像,模式分类,预后是医疗支持系统的一些示例。通常,医学数据具有其自身的特征,例如巨大的规模和特征,连续的和真实的属性,这些属性均指患者的研究。因此,离散化和特征选择过程被认为是改善从患者调查记录中提取的知识的关键问题。在本文中,提出了一种混合系统,该系统集成了粗糙集(RS)和遗传算法(GA),可以对不同大小和维度的医学数据集进行有效分类。应用遗传算法的目的是减少医学数据集的维数,并使用RS决策规则进行有效分类。此外,提出的系统将熵增益信息(EI)用于离散化过程。通过提议的系统(EI-GA-RS)测试了四个生物医学数据集,并且通过三个不同的数据集获得了最高分。其他不同的混合技术以最高的准确性共享了所提出的技术,但是所提出的系统将其位置保留为四个三组不同的最高结果系统之一。 EI作为离散化技术也是上述数据集中获得最佳结果的常见部分,而RS作为评估者则在三个不同的数据集中实现了最佳结果。

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