应用粒子群优化技术设计面向教育数据集的神经网络最优结构

Devika Chhachhiya, Amita Sharma, Manish Gupta
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引用次数: 14

摘要

设计最优的神经网络结构对神经网络模型的性能起着至关重要的作用。在过去的几年里,各种生物启发的优化技术被应用于寻找神经网络模型的最优结构。本文将粒子群算法(PSO)与反向传播算法相结合,寻找前馈神经网络的最优结构。为了优化神经网络模型的结构,考虑了隐藏神经元、学习率和激活函数等参数。用于选择参数最优组合的适应度函数为均方根误差(RMSE)。由于教育民营化,私立学院和大学的数量每年都在迅速增加。这一增长导致了大量关于高等教育机构评估和认证的数据(NAAC报告)。数据集从国家评估认可委员会(NAAC)官方网站收集。将粒子群算法与反向传播算法混合应用于该数据集。根据得到的适应度函数和精度对两种算法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing optimal architecture of neural network with particle swarm optimization techniques specifically for educational dataset
Designing an optimal Neural Network architecture plays an important role in the performance of a neural network model. In the past few years, various bio-inspired optimization techniques have been applied to find the optimal architecture of a neural network model. In this paper Particle Swarm Optimization (PSO) technique has been applied with back propagation algorithm to find an optimal architecture for feed forward Neural Network. To optimize the architecture of neural network model Parameters considered are hidden neurons, learning rate and activation function. Fitness function applied for the selection of the optimal combination of the parameters is root mean square error (RMSE). Due to privatization of education number of private institutes and universities are increasing rapidly every year. This increase has resulted in huge number of data (NAAC reports) regarding the assessment and accreditation of higher education institutions. Dataset of 380 educational institutes has been collected from the official site of National Assessment and Accreditation Council (NAAC). Hybrid of PSO with back propagation has been applied on this dataset. Results obtained from both of the algorithms are compared on the basis of the fitness function and accuracy obtained.
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