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A New Hybrid Ant Colony Optimization Based on Brain Storm Optimization for Feature Selection

机译:基于头脑风暴优化的特征选择新混合蚁群算法

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Machine learning algorithms are becoming more and more popular in current era. Data preprocessing especially feature selection is helpful for improving the performance of those algorithms. A new powerful feature selection algorithm is proposed. It combines the advantages of ant colony optimization and brain storm optimization which simulates the behavior of human beings. Six classical datasets and five state-of-art algorithms are used to make a comparison with our algorithm on binary classification problems. The results on accuracy, percent rate, recall rate, and F1 measures show that the developed algorithm is more excellent. Besides, it is no more complex than the compared approaches.
机译:机器学习算法在当前时代变得越来越流行。数据预处理,特别是特征选择,有助于改善那些算法的性能。提出了一种新的强大的特征选择算法。它结合了蚁群优化和模拟人类行为的头脑风暴优化的优势。使用六个经典数据集和五个最新算法与我们的算法进行二进制分类问题的比较。准确性,百分比率,召回率和F1度量的结果表明,所开发的算法更加出色。此外,它不比比较方法复杂。

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