A GA approach to Optimization of Convolution Neural Network

Pradeep S Naulia, J. Watada, I. Aziz, Arunava Roy
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Abstract

In recent days a lot of activities in Deep Learning demonstrated ability to produce much better than other Machine Learning techniques. Much of the challenge in the Deep Learning is about optimizing the weights and several hyper parameters as it takes lot of computation and time to do. Gradient descent has been most popular technique currently in its weights optimization for back propagation. Most of the existing implementation of Convolution Neural Networks/Deep Learning Networks plays pivotal role in image processing. Though being scientifically regressive, BP and GD is slowly converging and getting easily trapped in local minima these are inherent disadvantages. For this reason, we explored another optimization with Meta Heuristic Algorithms such as Genetic Algorithm in the Deep Learning algorithm.
卷积神经网络优化的遗传算法
最近几天,深度学习领域的许多活动都证明了它比其他机器学习技术更好的生产能力。深度学习中的大部分挑战是关于优化权重和几个超参数,因为这需要大量的计算和时间。梯度下降法是目前最流行的反向传播权优化方法。现有的卷积神经网络/深度学习网络在图像处理中发挥着关键作用。BP和GD虽然是科学回归的,但收敛速度慢,容易陷入局部极小值,这是其固有的缺点。出于这个原因,我们探索了另一种使用元启发式算法的优化,如深度学习算法中的遗传算法。
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