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Swarm MeLiF: Feature Selection with Filter Combination Found via Swarm Intelligence

机译:Swarm Melif:功能选择,通过群智能找到过滤器组合

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Combination of algorithms being called ensemble is a widely used machine learning technique. In this paper we propose a new method Swarm MeLiF which aims to find the best combination of basic filters and uses swarm optimization methods for this purpose. In this work we combine filters by combining the measures they use to evaluate feature importance. Thus, the problem of filter ensemble learning is reduced to finding a linear combination of these measures. We applied several swarm optimization methods and found that Particle Swarm Optimization shows the best results and outperforms the original MeLiF.
机译:被称为集合的算法的组合是广泛使用的机器学习技术。 在本文中,我们提出了一种新的方法,旨在找到基本过滤器的最佳组合,并为此目的使用群体优化方法。 在这项工作中,我们通过组合他们使用的措施来组合过滤器来评估特征重要性。 因此,减少了过滤器集合学习的问题,以找到这些措施的线性组合。 我们应用了几种群体优化方法,发现粒子群优化显示了最佳效果和优于原始MELIF的结果。

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