Hybrid Genetic Algorithm with SVM for Medical Data Classification

Brahim Sahmadi, D. Boughaci
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引用次数: 4

Abstract

In medical data classification system, several parameters can affect its performance, notably, the quality of the features which poses problems in real applications. Some of the attributes are redundant while others are irrelevant, or are even unnecessary to the classification problem. Feature selection plays a crucial role in medical data analysis by identifying and removing irrelevant features from the training data. In this work, a feature subset selection method is proposed using hybridization of a genetic algorithm with a simulated annealing meta-heuristic and combined with SVM classifier. It tries to reduce the initial size of data and to select a set of relevant features to enhance the accuracy and speed of classification system. For evaluation, the proposed method is applied to eleven public medical datasets and then compared to two other methods of feature selection applied on the same datasets. Experimental results have shown that the proposed method with optimized SVM parameters gives competitive results and finds good quality solutions with small size.
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混合遗传算法与支持向量机在医疗数据分类中的应用
在医疗数据分类系统中,有几个参数会影响分类系统的性能,尤其是分类特征的质量,在实际应用中会给分类系统带来问题。有些属性是冗余的,而另一些属性是不相关的,甚至对分类问题是不必要的。特征选择通过识别和去除训练数据中的不相关特征,在医学数据分析中起着至关重要的作用。本文提出了一种将遗传算法与模拟退火元启发式算法相结合,并结合SVM分类器的特征子集选择方法。它试图减少数据的初始大小,并选择一组相关的特征来提高分类系统的准确性和速度。为了进行评估,将所提出的方法应用于11个公共医疗数据集,然后与应用于相同数据集的另外两种特征选择方法进行比较。实验结果表明,该方法在优化支持向量机参数的基础上,得到了具有竞争力的解,且解的体积小,质量好。
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