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首页> 外文期刊>International Journal of Information Technology & Decision Making >Proportional Hybrid Mechanism for Population Based Feature Selection Algorithm
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Proportional Hybrid Mechanism for Population Based Feature Selection Algorithm

机译:基于群体特征选择算法的比例混合机制

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摘要

Feature selection is an important research field for pattern classification, data mining, etc. Population-based optimization algorithms (POA) have high parallelism and are widely used as search algorithm for feature selection. Population-based feature selection algorithms (PFSA) involve compromise between precision and time cost. In order to optimize the PFSA, the feature selection models need to be improved. Feature selection algorithms broadly fall into two categories: the filter model and the wrapper model. The filter model is fast but less precise; while the wrapper model is more precise but generally computationally more intensive. In this paper, we proposed a new mechanism - proportional hybrid mechanism (PHM) to combine the advantages of filter and wrapper models. The mechanism can be applied in PFSA to improve their performance. Genetic algorithm (GA) has been applied in many kinds of feature selection problems as search algorithm because of its high efficiency and implicit parallelism. Therefore, GAs are used in this paper. In order to validate the mechanism, seven datasets from university of California Irvine (UCI) database and artifiial toy datasets are tested. The experiments are carried out for different GAs, classifiers, and evaluation criteria, the results show that with the introduction of PHM, the GA-based feature selection algorithm can be improved in both time cost and classification accuracy. Moreover, the comparison of GA-based, PSO-based and some other feature selection algorithms demonstrate that the PHM can be used in other population-based feature selection algorithms and obtain satisfying results.
机译:特征选择是模式分类,数据挖掘等的重要研究领域。基于人口的优化算法(POA)具有高并行性,并且广泛用作特征选择的搜索算法。基于人口的特征选择算法(PFSA)涉及精度和时间成本之间的折衷。为了优化PFSA,需要提高特征选择模型。特征选择算法大致分为两类:过滤器模型和包装模型。过滤器模型快速但更确切地说;虽然包装模型更精确但通常计算更加密集。在本文中,我们提出了一种新的机制 - 比例混合机制(PHM)来结合过滤器和包装模型的优点。该机制可以应用于PFSA以提高其性能。由于其高效率和隐含的并行性,遗传算法(GA)已以多种特征选择问题应用于搜索算法。因此,本文使用气体。为了验证该机制,测试了来自加州大学Irvine(UCI)数据库和艺术玩具数据集的七个数据集。该实验是针对不同的气体,分类器和评估标准进行的,结果表明,随着PHM的引入,可以以时间成本和分类精度提高GA基特征选择算法。此外,基于GA的基于PSO和一些特征选择算法的比较表明,PHM可以用于其他基于人群的特征选择算法并获得满足结果。

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