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String pattern recognition using evolving spiking neural networks and quantum inspired particle swarm optimization

机译:使用进化的尖峰神经网络和量子启发式粒子群算法进行字符串模式识别

摘要

This paper proposes a novel method for string pattern recognition using an Evolving Spiking Neural Network (ESNN) with Quantum-inspired Particle Swarm Optimization (QiPSO). This study reveals an interesting concept of QiPSO by representing information as binary structures. The mechanism optimizes the ESNN parameters and relevant features using the wrapper approach simultaneously. The N-gram kernel is used to map Reuters string datasets into high dimensional feature matrix which acts as an input to the proposed method. The results show promising string classification results as well as satisfactory QiPSO performance in obtaining the best combination of ESNN parameters and in identifying the most relevant features.
机译:本文提出了一种新的字符串模式识别方法,该方法使用了带有量子启发式粒子群优化算法(QiPSO)的进化尖峰神经网络(ESNN)。这项研究通过将信息表示为二进制结构,揭示了QiPSO的一个有趣概念。该机制同时使用包装方法优化了ESNN参数和相关功能。 N-gram内核用于将路透社字符串数据集映射到高维特征矩阵,该高维特征矩阵可作为所提出方法的输入。结果表明,在获得ESNN参数的最佳组合以及确定最相关的特征方面,字符串分类结果以及令人满意的QiPSO性能均令人满意。

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