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An Efficient Optimization Technique for Training Deep Neural Networks
by
Mehmood, Faisal
, Whangbo, Taeg Keun
, Ahmad, Shabir
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Automobile industry
/ Classification
/ Computer vision
/ Datasets
/ Deep learning
/ Experiments
/ Image classification
/ Knowledge acquisition
/ Literature reviews
/ Machine learning
/ Mathematical optimization
/ Mathematical research
/ Mathematics
/ Model accuracy
/ Natural language processing
/ neural network
/ Neural networks
/ Neurons
/ Object recognition
/ Optimization
/ Optimization algorithms
/ Optimization techniques
/ Task complexity
/ Training
2023
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An Efficient Optimization Technique for Training Deep Neural Networks
by
Mehmood, Faisal
, Whangbo, Taeg Keun
, Ahmad, Shabir
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Automobile industry
/ Classification
/ Computer vision
/ Datasets
/ Deep learning
/ Experiments
/ Image classification
/ Knowledge acquisition
/ Literature reviews
/ Machine learning
/ Mathematical optimization
/ Mathematical research
/ Mathematics
/ Model accuracy
/ Natural language processing
/ neural network
/ Neural networks
/ Neurons
/ Object recognition
/ Optimization
/ Optimization algorithms
/ Optimization techniques
/ Task complexity
/ Training
2023
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An Efficient Optimization Technique for Training Deep Neural Networks
by
Mehmood, Faisal
, Whangbo, Taeg Keun
, Ahmad, Shabir
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Automobile industry
/ Classification
/ Computer vision
/ Datasets
/ Deep learning
/ Experiments
/ Image classification
/ Knowledge acquisition
/ Literature reviews
/ Machine learning
/ Mathematical optimization
/ Mathematical research
/ Mathematics
/ Model accuracy
/ Natural language processing
/ neural network
/ Neural networks
/ Neurons
/ Object recognition
/ Optimization
/ Optimization algorithms
/ Optimization techniques
/ Task complexity
/ Training
2023
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An Efficient Optimization Technique for Training Deep Neural Networks
Journal Article
An Efficient Optimization Technique for Training Deep Neural Networks
2023
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Overview
Deep learning is a sub-branch of artificial intelligence that acquires knowledge by training a neural network. It has many applications in the field of banking, automobile industry, agriculture, and healthcare industry. Deep learning has played a significant role in solving complex tasks related to computer vision, such as image classification, natural language processing, and object detection. On the other hand, optimizers also play an intrinsic role in training the deep learning model. Recent studies have proposed many deep learning models, such as VGG, ResNet, DenseNet, and ImageNet. In addition, there are many optimizers such as stochastic gradient descent (SGD), Adam, AdaDelta, Adabelief, and AdaMax. In this study, we have selected those models that require lower hardware requirements and shorter training times, which facilitates the overall training process. We have modified the Adam based optimizers and minimized the cyclic path. We have removed an additional hyper-parameter from RMSProp and observed that the optimizer works with various models. The learning rate is set to minimum and constant. The initial weights are updated after each epoch, which helps to improve the accuracy of the model. We also changed the position of the epsilon in the default Adam optimizer. By changing the position of the epsilon, it accumulates the updating process. We used various models with SGD, Adam, RMSProp, and the proposed optimization technique. The results indicate that the proposed method is effective in achieving the accuracy and works well with the state-of-the-art architectures.
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