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Training of Artificial Neural Network Using New Initialization Approach of Particle Swarm Optimization for Data Classification

机译:利用粒子群优化新初始化方法训练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. Hence, this classical training technique has many drawbacks like stuck in the local minima and maximum number of iterations required. Particle Swam Optimization (PSO) has been widely applied for the solutions of data classification problems. Population initialization is a vital factor in PSO algorithm, which considerably influences the diversity and convergence during the PSO's process. In this paper, the training of the ANN has been implemented with new initialization technique by using low discrepancies sequence, Torus termed as TO-PSO. In this paper, a detailed comparative performance analysis for the training of neural network is observed on nine benchmark data sets taken from UCI repository. The Results demonstrate that training of ANN with proposed initialization technique offer efficient and best substitute to traditional training approaches of the NN, which gives the solution of problems related to the data classification. Furthermore, the performance of TO-PSO has been compared with back propagation algorithm (BPA), standard PSO-NN and two other initialization approaches Sobol based PSO (SO-PSONN) and Halton based PSO (H-PSONN) for the training of ANN. The experimental results show that the proposed approach outperforms than BPA, traditional PSONN, SO-PSONN and H-PSONN in terms of converging speed and better accuracy Moreover, the outcomes of our work present a foresight that how the proposed initialization technique can be used as an efficient alternative to standard training approaches for the data classification problems.
机译:人工神经网络(ANN)具有各种各样的实践,用于解决数据分类领域的问题。回到传播算法是着名的神经网络(NN)传统训练方法。因此,这种古典训练技术具有许多缺点,如局部最小值和所需的最大迭代次数。粒子SAM优化(PSO)已被广泛应用于数据分类问题的解决方案。人口初始化是PSO算法中的一个重要因素,其显着影响了PSO过程中的多样性和收敛性。在本文中,通过使用低差异序列,定位为-PSO的循环序列,通过新的初始化技术实现了NAN的培训。在本文中,在UCI存储库中占用的九个基准数据集中观察了神经网络训练的详细比较绩效分析。结果表明,随着建议初始化技术的ANN培训提供了高效和最佳的替代NN的传统培训方法,这使得解决与数据分类有关的问题。此外,对PSO的性能已经与后传播算法(BPA)进行了比较,标准PSO-NN和另外两种初始化方法接近基于Sobol基于Sobol的PSO(SO-PASONN)和基于Halton的PSO(H-PSONN),以便培训ANN 。实验结果表明,拟议的方法优于BPA,传统的PSONN,SO-PSONN和H-PSONN在融合速度和更好的准确性方面,我们的工作结果提出了先提出的初始化技术如何使用所提出的初始化技术有效替代数据分类问题的标准培训方法。

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