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Journal ArticleOpen Access

Deep learning modelling techniques: current progress, applications, advantages, and challenges

Author Affiliations
Asian University for Women, Asian Institute of Technology, Carnegie Mellon University, Carleton University, ...
Published InArtificial Intelligence Review
Year2023
Citations938

Abstract

Abstract Deep learning (DL) is revolutionizing evidence-based decision-making techniques that can be applied across various sectors. Specifically, it possesses the ability to utilize two or more levels of non-linear feature transformation of the given data via representation learning in order to overcome limitations posed by large datasets. As a multidisciplinary field that is still in its nascent phase, articles that survey DL architectures encompassing the full scope of the field are rather limited. Thus, this paper comprehensively reviews the state-of-art DL modelling techniques and provides insights into their advantages and challenges. It was found that many of the models exhibit a highly domain-specific efficiency and could be trained by two or more methods. However, training DL models can be very…
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