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Evolving Artificial Neural Networks Using Opposition Based Particle Swarm Optimization Neural Network for Data Classification

机译:使用基于对立粒子群优化神经网络的进化人工神经网络进行数据分类

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Artificial neural network (ANN) has a wide variety of practice for the solution of problems in the area of data classification. Back propagation algorithm is a famous neural network (NN) traditional training approach. Since this classical training technique has many drawbacks like stuck in the local minima, maximum number of iterations required, in this paper the training of the NN has been implemented with the opposition based with particle swarm optimization neural network (OPSONN) algorithm. These algorithms that are used for the NN training can be applied for the solutions of data classification problems. It is renowned that different techniques comparison is also as vital as by proposing a new technique for data classification. In this paper, a detailed comparative performance analysis for the training of neural network is observed on the different data sets taken from UCI repository. Results demonstrates that opposition based particle swarm optimization neural network (OPSONN) may offer efficient and best substitute to traditional training approach of the neural network for the solution of problems of data classification. The results are compared with OPSONN learning algorithm for feed forward neural network (FNN). The subsequent exactness of FNNs trained with PSO (PSONN), back propagation algorithm (BPA), and back propagation algorithm with momentum is likewise examined. The trial results demonstrate that OPSONN outperforms PSONN, back propagation algorithm (BPA), and back propagation algorithm with momentum for preparing FFNNs as far as accuracy rate and better precision. It is likewise demonstrated that an FFNN prepared with OPSONN technique has preferable exactness over one trained with different methods.
机译:人工神经网络(ANN)在解决数据分类方面的问题方面有多种实践。反向传播算法是著名的神经网络(NN)传统训练方法。由于这种经典的训练技术有很多缺点,例如卡在局部极小值中,需要最大的迭代次数,因此本文中的神经网络训练已采用基于粒子群优化神经网络(OPSONN)的对立算法进行。这些用于NN训练的算法可用于解决数据分类问题。众所周知,不同的技术比较也与提出新的数据分类技术一样至关重要。在本文中,从UCI存储库获取的不同数据集上观察到了针对神经网络训练的详细比较性能分析。结果表明,基于对立的粒子群优化神经网络(OPSONN)可以为神经网络的传统训练方法提供有效且最佳的替代方法,以解决数据分类问题。将结果与用于前馈神经网络(FNN)的OPSONN学习算法进行比较。同样检查了用PSO(PSONN),反向传播算法(BPA)和带动量的反向传播算法训练的FNN的后续准确性。试验结果表明,OPSONN在准备FFNN方面要优于PSONN,反向传播算法(BPA)和具有动量的反向传播算法,其准确率和精度更高。同样证明,用OPSONN技术制备的FFNN优于使用不同方法训练的FFNN。

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