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NiaNet: A framework for constructing Autoencoder architectures using nature-inspired algorithms | IEEE Conference Publication | IEEE Xplore

NiaNet: A framework for constructing Autoencoder architectures using nature-inspired algorithms


Abstract:

Autoencoder, an hourly glass-shaped deep neural network capable of learning data representation in a lower dimension, has performed well in various applications. However,...Show More

Abstract:

Autoencoder, an hourly glass-shaped deep neural network capable of learning data representation in a lower dimension, has performed well in various applications. However, developing a high-quality AE system for a specific task heavily relies on human expertise, limiting its widespread application. On the other hand, there has been a gradual increase in automated machine learning for developing deep learning systems without human intervention. However, there is a shortage of automatically designing particular deep neural networks such as AE. This study presents the NiaNet method and corresponding software frame-work for designing AE topology and hyper-parameter settings. Our findings show that it is possible to discover the optimal AE architecture for a specific dataset without the requirement for human expert assistance. The future potential of the proposed method is also discussed in this paper.
Date of Conference: 04-07 September 2022
Date Added to IEEE Xplore: 10 October 2022
ISBN Information:
Conference Location: Sofia, Bulgaria

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