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首页> 外文期刊>International Journal of Information Technology >Designing optimal architecture of recurrent neural network (LSTM) with particle swarm optimization technique specifically for educational dataset
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Designing optimal architecture of recurrent neural network (LSTM) with particle swarm optimization technique specifically for educational dataset

机译:专门针对教育数据集的粒子群优化技术设计经常性神经网络(LSTM)的最佳架构

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摘要

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 recurrent neural network long short-term memory (LSTM) 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 500 educational institutes has been collected from the official site of National Assessment and Accreditation Council (NAAC). Hybrid model of PSO with LSTM algorithm has been applied to the educational dataset. Selection of the optimal architecture is done on the basis of RMSE, Accuracy and other performance parameters.
机译:设计最佳神经网络架构在神经网络模型的性能中起着重要作用。在过去几年中,已应用各种生物启发优化技术来查找神经网络模型的最佳架构。在本文中,粒子群优化(PSO)技术已经应用于经常性神经网络长短期内存(LSTM)算法,以找到馈送前向神经网络的最佳架构。为了优化所考虑的神经网络模型参数的架构是隐藏的神经元,学习率和激活功能。适用于选择参数最佳组合的健身功能是均均方误差(RMSE)。由于教育私有化的私营机构和大学每年都在迅速增加。这一增加导致了关于高等教育机构的评估和认证的大量数据(NAAC报告)。从国家评估和认证委员会(NAAC)的官方网站收集了500个教育机构的数据集。具有LSTM算法的PSO的混合模型已应用于教育数据集。选择最佳架构是基于RMSE,准确性和其他性能参数完成的。

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