首页> 外文会议>International Conference on Modeling Decisions for Artificial Intelligence(MDAI 2004); 20040802-20040804; Barcelona; ES >Quantum Computing Based Machine Learning Method and Its Application in Radar Emitter Signal Recognition
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Quantum Computing Based Machine Learning Method and Its Application in Radar Emitter Signal Recognition

机译:基于量子计算的机器学习方法及其在雷达辐射源信号识别中的应用

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Feature selection plays a central role in data analysis and is also a crucial step in machine learning, data mining and pattern recognition. Feature selection algorithm focuses mainly on the design of a criterion function and the selection of a search strategy. In this paper, a novel feature selection approach (NFSA) based on quantum genetic algorithm (QGA) and a good evaluation criterion is proposed to select the optimal feature subset from a large number of features extracted from radar emitter signals (RESs). The criterion function is given firstly. Then, detailed algorithm of QGA is described and its performances are analyzed. Finally, the best feature subset is selected from the original feature set (OFS) composed of 16 features of RESs. Experimental results show that the proposed approach reduces greatly the dimensions of OFS and heightens accurate recognition rate of RESs, which indicates that NFSA is feasible and effective.
机译:特征选择在数据分析中起着核心作用,也是机器学习,数据挖掘和模式识别中的关键步骤。特征选择算法主要集中在准则函数的设计和搜索策略的选择上。本文提出了一种基于量子遗传算法(QGA)和良好评价标准的新颖特征选择方法(NFSA),以从雷达发射信号(RES)提取的大量特征中选择最优特征子集。首先给出标准函数。然后,描述了QGA的详细算法,并分析了其性能。最后,从由RES的16个特征组成的原始特征集(OFS)中选择最佳特征子集。实验结果表明,该方法大大减小了OFS的尺寸,提高了RES的准确识别率,表明NFSA是可行和有效的。

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