蚂蚁矿机参数的研究

R. Robu, C. Vașar, Nicolae Robu, S. Holban
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引用次数: 6

摘要

蚂蚁矿机是蚁群优化算法在数据分类问题中的应用。自2001年Parpinelli等人提出该算法以来,大量的数据分类研究都是借助该算法进行的。并将该算法的结果与改进的Ant Miner算法的结果进行了比较。通常,在不同的研究中,输入参数(如蚂蚁数量、每条规则覆盖的最小实例数等)会选择不同的值。因此,我们提出了这样一个问题:如何选择输入参数的值,以便在预测精度、发现规则的数量和执行时间等输出参数方面获得良好的结果?在本文中,我们在从UCI机器学习存储库获得的15个数据集上运行了32种输入参数的组合,我们试图找到输入参数的值与获得的结果之间的联系。最后,我们写了一组关于Ant Miner参数的备注,这可能有助于在不同的研究中选择输入参数,以获得总体良好的结果。在开始实验之前,我们对Ant Miner开源代码进行了一个小修改,以确保每次运行都使用相同的数据子集,从而公平地比较结果。
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A study on Ant Miner parameters
Ant Miner is the application of Ant Colony Optimization algorithm in data classification problem. Since it was proposed by Parpinelli et al., in 2001, a lot of data classification studies were performed with the aid of this algorithm. Also a lot of comparisons were performed between the results obtained with this algorithm and the results obtained by improved Ant Miner algorithms. Usually, in different studies different values were chosen for the input parameters such as the number of ants, the minimum number of instances covered by each rule, and so on. So we ask the question how to choose the values of input parameters in order to obtain good results for output parameters like prediction accuracy, the number of discovered rules and the execution time? In this paper we run on 15 datasets obtained from UCI Machine Learning Repository a number of 32 combinations of input parameters, and we try to find connections between the values of the input parameters and the obtained results. Finally we wrote a set of remarks regarding Ant Miner parameters, which may be useful in choosing input parameters in different studies in order to obtain overall good results. Before starting the experiments we performed a small modification to the Ant Miner open source code in order to assure that each run will work with the same subsets of data, for a fair comparison of results.
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