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Quantum-inspired particle swarm optimization for feature selection and parameter optimization in evolving spiking neural networks for classification tasks

机译:量子激励粒子群算法在分类任务尖峰神经网络中的特征选择和参数优化

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摘要

Introduction: Particle Swarm Optimization (PSO) was introduced in 1995 by Russell Eberhart and James Kennedy (Eberhart & Kennedy, 1995). PSO is a biologically-inspired technique based around the study of collective behaviour in decentralized and self-organized animal society systems. The systems are typically made up from a population of candidates (particles) interacting with one another within their environment (swarm) to solve a given problem. Because of its efficiency and simplicity, PSO has been successfully applied as an optimizer in many applications such as function optimization, artificial neural network training, fuzzy system control. However, despite recent research and development, there is an opportunity to find the most effective methods for parameter optimization and feature selection tasks. This chapter deals with the problem of feature (variable) and parameter optimization for neural network models, utilising a proposed Quantum–inspired PSO (QiPSO) method. In this method the features of the model are represented probabilistically as a quantum bit (qubit) vector and the model parameter values as real numbers. The principles of quantum superposition and quantum probability are used to accelerate the search for an optimal set of features, that combined through co-evolution with a set of optimised parameter values, will result in a more accurate computational neural network model. The method has been applied to the problem of feature and parameter optimization in Evolving Spiking Neural Network (ESNN) for classification. A swarm of particles is used to find the most accurate classification model for a given classification task. The QiPSO will be integrated within ESNN where features and parameters are simultaneously and more efficiently optimized. A hybrid particle structure is required for the qubit and real number data types. In addition, an improved search strategy has been introduced to find the most relevant and eliminate the irrelevant features on a synthetic dataset. The method is tested on a benchmark classification problem. The proposed method results in the design of faster and more accurate neural network classification models than the ones optimised through the use of standard evolutionary optimization algorithms. This chapter is organized as follows. Section 2 introduces PSO with quantum information principles and an improved feature search strategy used later in the developed method. Section 3 is an overview of ESNN, while Section 4 gives details of the integrated structure and the experimental results. Finally, Section 5 concludes this chapter.
机译:简介:粒子群优化(PSO)是Russell Eberhart和James Kennedy于1995年提出的(Eberhart&Kennedy,1995)。 PSO是一种生物学启发的技术,其基础是对分散和自组织的动物社会系统中的集体行为进行研究。该系统通常由一组候选对象(粒子)组成,它们在其环境(群)中相互交互以解决给定的问题。由于其高效性和简便性,PSO已成功地作为优化器应用于许多应用程序,例如功能优化,人工神经网络训练,模糊系统控制。但是,尽管最近进行了研究和开发,但仍有机会找到用于参数优化和特征选择任务的最有效方法。本章利用提出的量子启发式PSO(QiPSO)方法处理神经网络模型的特征(变量)和参数优化问题。在这种方法中,模型的特征概率性地表示为量子比特(qubit)向量,模型参数值表示为实数。量子叠加和量子概率的原理用于加速对最佳特征集的搜索,这些特征是通过与一组优化的参数值一起共同进化而组合在一起的,将产生更精确的计算神经网络模型。该方法已应用于进化尖峰神经网络(ESNN)的特征和参数优化问题中进行分类。大量的粒子用于为给定的分类任务找到最准确的分类模型。 QiPSO将集成在ESNN中,在ESNN中,功能和参数将同时且更有效地优化。量子位和实数数据类型需要混合粒子结构。此外,已引入一种改进的搜索策略,以在合成数据集上找到最相关的特征并消除不相关的特征。该方法在基准分类问题上进行了测试。与通过使用标准进化优化算法所优化的神经网络分类模型相比,该方法可以设计出更快,更准确的神经网络分类模型。本章安排如下。第2节介绍了具有量子信息原理的PSO和改进的特征搜索策略,该策略稍后在已开发的方法中使用。第3节概述了ESNN,而第4节则详细介绍了集成结构和实验结果。最后,第5节总结了本章。

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