Abstract
Deep learning is one of the most widely used machine learning techniques which has achieved enormous success in applications such as anomaly detection, image detection, pattern recognition, and natural language processing. Deep learning architectures have revolutionized the analytical landscape for big data amidst wide-scale deployment of sensory networks and improved communication protocols. In this chapter, we will discuss multiple deep learning architectures and explain their underlying mathematical concepts. An up-to-date overview here presented concerns three main categories of neural networks, namely, Convolutional Neural Networks, Pretrained Unspervised Networks, and Recurrent/Recursive Neural Networks. Applications of each of these architectures in selected areas such as pattern recognition and image detection are also discussed.
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Hosseini, MP., Lu, S., Kamaraj, K., Slowikowski, A., Venkatesh, H.C. (2020). Deep Learning Architectures. In: Pedrycz, W., Chen, SM. (eds) Deep Learning: Concepts and Architectures. Studies in Computational Intelligence, vol 866. Springer, Cham. https://doi.org/10.1007/978-3-030-31756-0_1
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DOI: https://doi.org/10.1007/978-3-030-31756-0_1
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