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A State-of-the-Art Survey on Deep Learning Methods and Applications in Bioinformatics

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Proceedings of International Conference on Advanced Computing Applications

Abstract

Deep learning (DL) methods have impacted machine learning-based bioinformatics applications as these methods provide the ability to learn complex non-linear relationships between features. DL methods also allow information leveraging from unlabeled data that does not belong to the problem under study. This paper's main objective is to provide a state-of-the-art survey on deep learning (DL) methods and applications in bioinformatics. Various DL methods, including feed-forward neural networks (FNNs), recurrent neural networks (RNNs), bidirectional recurrent neural networks (BRNNs), and convolutional neural networks (CNN), are presented. Deep learning methods are presented along with a review of the state-of-the-art applications in the bioinformatics domain.

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Correspondence to Narasimha Rao Vajjhala .

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Biba, M., Vajjhala, N.R., Rakshit, S. (2022). A State-of-the-Art Survey on Deep Learning Methods and Applications in Bioinformatics. In: Mandal, J.K., Buyya, R., De, D. (eds) Proceedings of International Conference on Advanced Computing Applications. Advances in Intelligent Systems and Computing, vol 1406. Springer, Singapore. https://doi.org/10.1007/978-981-16-5207-3_62

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