首页> 外文期刊>International Journal of Modern Physics: Conference Series >STUDYING THE EFFECT OF ADAPTIVE MOMENTUM IN IMPROVING THE ACCURACY OF GRADIENT DESCENT BACK PROPAGATION ALGORITHM ON CLASSIFICATION PROBLEMS
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STUDYING THE EFFECT OF ADAPTIVE MOMENTUM IN IMPROVING THE ACCURACY OF GRADIENT DESCENT BACK PROPAGATION ALGORITHM ON CLASSIFICATION PROBLEMS

机译:自适应动量在提高梯度下降回波传播算法精度的效果研究

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Despite being widely used in the practical problems around the world, Gradient Descent Back-propagation algorithm comes with problems like slow convergence and convergence to local minima. Previous researchers have suggested certain modifications to improve the convergence in gradient Descent Back-propagation algorithm such as careful selection of input weights and biases, learning rate, momentum, network topology, activation function and value for 'gain' in the activation function. This research proposed an algorithm for improving the working performance of back-propagation algorithm which is 'Gradient Descent with Adaptive Momentum (GDAM)' by keeping the gain value fixed during all network trials. The performance of GDAM is compared with 'Gradient Descent with fixed Momentum (GDM)' and 'Gradient Descent Method with Adaptive Gain (GDM-AG)'. The learning rate is fixed to 0.4 and maximum epochs are set to 3000 while sigmoid activation function is used for the experimentation. The results show that GDAM is a better approach than previous methods with an accuracy ratio of 1.0 for classification problems like Wine Quality, Mushroom and Thyroid disease.
机译:尽管广泛用于世界各地的实际问题,但梯度下降反向传播算法具有缓慢的收敛性和局部最小值的问题。以前的研究人员已经提出了某些修改,以提高梯度下降反向传播算法的收敛,例如仔细选择的输入权重和偏置,学习率,动量,网络拓扑,激活功能和“增益”中的“增益”中的“增益”。该研究提出了一种提高回到传播算法的工作性能的算法,其通过保持在所有网络试验期间固定的增益值来提高作为对自适应动量(GDAM)'的梯度下降的梯度下降。将GDAM的性能与“具有固定动量(GDM)”和具有自适应增益(GDM-AG)'的梯度下降方法进行比较。学习速率固定为0.4,最大时期设定为3000,而Sigmoid激活功能用于实验。结果表明,GDAM比以前的方法更好的方法,精度比为1.0,用于葡萄酒品质,蘑菇和甲状腺疾病等分类问题。

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