The Effect of Adaptive Learning Rate on the Accuracy of Neural Networks

dc.contributor.authorJepkoech, J.
dc.contributor.authorToo, E. C.
dc.contributor.authorKenduiywo, B. K.
dc.contributor.authorMugo, D. M.
dc.date.accessioned2025-05-19T07:03:12Z
dc.date.available2025-05-19T07:03:12Z
dc.date.issued2021
dc.descriptionResearch Article
dc.description.abstractLearning rates in gradient descent algorithms have significant effects especially on the accuracy of a Capsule Neural Network (CNN). Choosing an appropriate learning rate is still an issue to date. Many developers still have a problem in selecting a learning rate for CNN leading to low accuracies in classification. This gap motivated this study to assess the effect of learning rate on the accuracy of a developed (CNN). There are no predefined learning rates in CNN and therefore it is hard for researchers to know what learning rate will give good results. This work, therefore, focused on assessing the effect of learning rate on the accuracy of a CNN by using different learning rates and observing the best performance. The contribution of this work is to give an appropriate learning rate for CNNs to improve accuracy during classification. This work has assessed the effect of different learning rates and came up with the most appropriate learning rate for CNN plant leaf disease classification. Part of the images used in this work was from the PlantVillage dataset while others were from the Nepal database. The images were pre-processed then subjected to the original CNN model for classification. When the learning rate was 0.0001, the best performance was 99.4% on testing and 100% on training. When the learning rate was 0.00001, the highest performance was 97% on testing and 99.9% on training. The lowest performance observed was 81% accuracy on testing and 99% on training when the learning rate was 0.001. This work observed that CNN was able to achieve the highest accuracy with a learning rate of 0.0001. The best Convolutional Neural Network accuracy observed was 98% on testing and 100% on training when the learning rate was 0.0001.
dc.identifier.citationJepkoech, J., Mugo, D. M., Kenduiywo, B. K., & Too, E. C. (2021). The effect of adaptive learning rate on the accuracy of neural networks. International Journal of Advanced Computer Science and Applications, 12(8).
dc.identifier.urihttps://scholar.google.com/scholar?hl=en&as_sdt=0%2C5&q=The+Effect+of+Adaptive+Learning+Rate+on+the+Accuracy+of+Neural+Networks&btnG=#d=gs_cit&t=1747637991903&u=%2Fscholar%3Fq%3Dinfo%3AKFk-eKe422cJ%3Ascholar.google.com%2F%26output%3Dcite%26scirp%3D0%26hl%3Den
dc.identifier.urihttps://repository.chuka.ac.ke/handle/123456789/18290
dc.language.isoen
dc.subjectCNN
dc.subjectConvnet
dc.subjectLearning Rate
dc.subjectGradient Descent
dc.titleThe Effect of Adaptive Learning Rate on the Accuracy of Neural Networks
dc.typeArticle

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