混合人工神经网络的数据分类问题

Jaspreet Kaur, Ashima Kalra
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引用次数: 2

摘要

人工神经网络(ANN)的基准数据库包括来自不同领域的多个数据集。所有的数据集都显示出可行的问题,这些问题可以被称为诊断工作,除了一个之外,所有的数据集都包含真实的世界数据。本文以这两个分类标准问题为例,分析了智能水滴(IWD)、粒子群优化(PSO)和混合粒子群-粒子群优化(IWD -PSO)与神经网络的分类能力。在这项工作中,SI算法在一组两个基准函数上进行了测试。并从平方和误差、运行时间等方面对群智能算法与人工神经网络进行了比较。该研究被用于寻找人工神经网络的主要权重和偏差。将群智能优化与人工神经网络相结合,极大地促进了人工神经网络在分类中对各种基准问题的快速收敛。结果表明,利用群体智能使分类误差最小化。
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Hybrid artificial neural network for data classification problem
The benchmarking databases for artificial neural network (ANN) include several datasets from several different domains. All datasets exhibit feasible problems which could be called diagnosis jobs and all but one contain genuine world data. Two such standard problems, for categorization are taken in this paper to analyze the capability of intelligent water drop (IWD), particle swarm optimization (PSO) and hybrid IWD-PSO with ANN. In this work, SI algorithm is tested on a set of two benchmark functions. Further a comparison is made between Swarm intelligence algorithm-ANN in terms of sum square error, Elapsed time. The research is chosen for finding primary weights and biases for an artificial neural network. The amalgamation of swarm intelligence (SI) optimization and ANN greatly help in quick convergence of ANN in classification to various benchmark problems. The result shows that utilization of swarm intelligence minimizes the classification error.
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