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Feature Selection in Life Science Classification: Metaheuristic Swarm Search

机译:生命科学分类中的特征选择:元启发式群搜索

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The purpose of classification in medical informatics is to predict the presence or absence of a particular disease as well as disease types from historical data. Medical data often contain irrelevant features and noise, and an appropriate subset of the significant features can improve classification accuracy. Therefore, researchers apply feature selection to identify and remove irrelevant and redundant features. The authors propose a versatile feature selection approach called Swarm Search Feature Selection (SS-FS), based on stochastic swarm intelligence. It is designed to overcome NP-hard combinatorial search problems such as the selection of an optimal feature subset from an extremely large array of features--which is not uncommon in biomedical data. SS-FS is demonstrated to be a feasible computing tool in achieving high accuracy in classification via testing with two empirical biomedical datasets. This article is part of a special issue on life sciences computing.
机译:医学信息学中分类的目的是根据历史数据预测特定疾病的存在与否以及疾病类型。医学数据通常包含不相关的特征和噪声,并且重要特征的适当子集可以提高分类准确性。因此,研究人员应用特征选择来识别和删除不相关和多余的特征。作者提出了一种基于随机群智能的通用特征选择方法,称为“群搜索特征选择”(SS-FS)。它旨在克服NP难题的组合搜索问题,例如从极其庞大的特征数组中选择最佳特征子集-这在生物医学数据中并不罕见。通过使用两个经验生物医学数据集进行测试,SS-FS被证明是实现分类的高精度的可行计算工具。本文是有关生命科学计算的一期特刊的一部分。

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