Addressing Optimisation Challenges for Datasets with Many Variables, Using Genetic Algorithms to Implement Feature Selection

Neil Gordon, C. Kambhampati, Asma Alabad
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Abstract

This article provides an optimisation method using a Genetic Algorithm approach to apply feature selection techniques for large data sets to improve accuracy. This is achieved through improved classification, a reduced number of features, and furthermore it aids in interpreting the model. A clinical dataset, based on heart failure, is used to illustrate the nature of the problem and to show the effectiveness of the techniques developed. Clinical datasets are sometimes characterised as having many variables. For instance, blood biochemistry data has more than 60 variables that have led to complexities in developing predictions of outcomes using machine-learning and other algorithms. Hence, techniques to make them more tractable are required. Genetic Algorithms can provide an efficient and low numerically complex method for effectively selecting features. In this paper, a way to estimate the number of required variables is presented, and a genetic algorithm is used in a “wrapper” form to select features for a case study of heart failure data. Additionally, different initial populations and termination conditions are used to arrive at a set of optimal features, and these are then compared with the features obtained using traditional methodologies. The paper provides a framework for estimating the number of variables and generations required for a suitable solution.
解决多变量数据集的优化挑战,使用遗传算法实现特征选择
本文提供了一种优化方法,使用遗传算法方法将特征选择技术应用于大型数据集,以提高准确性。这是通过改进分类、减少特征数量来实现的,而且它有助于解释模型。一个临床数据集,基于心力衰竭,用来说明问题的性质,并显示所开发的技术的有效性。临床数据集有时被描述为具有许多变量。例如,血液生化数据有60多个变量,这导致使用机器学习和其他算法进行结果预测的复杂性。因此,需要使它们更易于处理的技术。遗传算法为有效地选择特征提供了一种高效且数值复杂度低的方法。在本文中,提出了一种估计所需变量数量的方法,并以“包装”形式使用遗传算法来选择心力衰竭数据案例研究的特征。此外,使用不同的初始种群和终止条件来获得一组最优特征,然后将这些特征与使用传统方法获得的特征进行比较。本文提供了一个框架来估计一个合适的解决方案所需的变量和代的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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