Deep Learning -- A first Meta-Survey of selected Reviews across Scientific Disciplines, their Commonalities, Challenges and Research Impact
Jan Egger, Antonio Pepe, Christina Gsaxner, Yuan Jin, Jianning Li,, Roman Kern

TL;DR
This paper provides a high-level meta-survey of deep learning reviews across various scientific disciplines, highlighting common architectures, challenges, and future research directions amidst exponential publication growth.
Contribution
It offers a novel categorization and synthesis of existing deep learning reviews across disciplines, identifying shared challenges and research trends.
Findings
Deep learning reviews are categorized into computer vision, language processing, and medical informatics.
Common architectures and methods are identified across disciplines.
Challenges and future directions are outlined for each sub-category.
Abstract
Deep learning belongs to the field of artificial intelligence, where machines perform tasks that typically require some kind of human intelligence. Similar to the basic structure of a brain, a deep learning algorithm consists of an artificial neural network, which resembles the biological brain structure. Mimicking the learning process of humans with their senses, deep learning networks are fed with (sensory) data, like texts, images, videos or sounds. These networks outperform the state-of-the-art methods in different tasks and, because of this, the whole field saw an exponential growth during the last years. This growth resulted in way over 10,000 publications per year in the last years. For example, the search engine PubMed alone, which covers only a sub-set of all publications in the medical field, provides already over 11,000 results in Q3 2020 for the search term 'deep learning',…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Anomaly Detection Techniques and Applications · Machine Learning in Healthcare
