2011
DOI: 10.18517/ijaseit.1.2.38
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The Effect of Adaptive Gain and Adaptive Momentum in Improving Training Time of Gradient Descent Back Propagation Algorithm on Classification Problems

Abstract: Abstract-The back propagation algorithm has been successfully applied to wide range of practical problems. Since this algorithm uses a gradient descent method, it has some limitations which are slow learning convergence velocity and easy convergence to local minima. The convergence behaviour of the back propagation algorithm depends on the choice of initial weights and biases, network topology, learning rate, momentum, activation function and value for the gain in the activation function. Previous researchers … Show more

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Cited by 10 publications
(2 citation statements)
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“…The superior performance of the hybrid CMA-ES algorithm can be attributed to the combined strengths of the genetic algorithm and CMA-ES optimization. The algorithms compared in this study were the Fuzzy KNN (F-KNN) method [40], Learning Vector Quantization (LVQ) [41], C4.5 method [42], K-Means clustering method [43], momentum backpropagation (MK) method [44], PCA-SVM [45], and hybrid CMA-ES (GA-C-E) algorithm.…”
Section: Accuracy Comparisonmentioning
confidence: 99%
See 1 more Smart Citation
“…The superior performance of the hybrid CMA-ES algorithm can be attributed to the combined strengths of the genetic algorithm and CMA-ES optimization. The algorithms compared in this study were the Fuzzy KNN (F-KNN) method [40], Learning Vector Quantization (LVQ) [41], C4.5 method [42], K-Means clustering method [43], momentum backpropagation (MK) method [44], PCA-SVM [45], and hybrid CMA-ES (GA-C-E) algorithm.…”
Section: Accuracy Comparisonmentioning
confidence: 99%
“…The accuracy of each algorithm was evaluated by measuring the percentage of correctly classified compounds out of the total number of test compounds. The algorithms compared in this study were the Fuzzy KNN (F-KNN) method[40], Learning Vector Quantization (LVQ)[41], C4.5 method[42], K-Means clustering method[43], momentum backpropagation (MK) method[44], PCA-SVM[45], and hybrid CMA-ES (GA-C-E) algorithm.…”
mentioning
confidence: 99%