An Introduction to Machine Learning

In the last few years, machine learning (ML) and artificial intelligence have seen a new wave of publicity fueled by the huge and ever‐increasing amount of data and computational power as well as the discovery of improved learning algorithms. However, the idea of a computer learning some concept fro...

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Veröffentlicht in:Clinical pharmacology and therapeutics Jg. 107; H. 4; S. 871 - 885
Hauptverfasser: Badillo, Solveig, Banfai, Balazs, Birzele, Fabian, Davydov, Iakov I., Hutchinson, Lucy, Kam‐Thong, Tony, Siebourg‐Polster, Juliane, Steiert, Bernhard, Zhang, Jitao David
Format: Journal Article
Sprache:Englisch
Veröffentlicht: United States 01.04.2020
ISSN:0009-9236, 1532-6535, 1532-6535
Online-Zugang:Volltext
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Zusammenfassung:In the last few years, machine learning (ML) and artificial intelligence have seen a new wave of publicity fueled by the huge and ever‐increasing amount of data and computational power as well as the discovery of improved learning algorithms. However, the idea of a computer learning some concept from data and applying them to yet unseen situations is not new and has been around at least since the 1950s. Many of these basic principles are very familiar to the pharmacometrics and clinical pharmacology community. In this paper, we want to introduce the foundational ideas of ML to this community such that readers obtain the essential tools they need to understand publications on the topic. Although we will not go into the very details and theoretical background, we aim to point readers to relevant literature and put applications of ML in molecular biology as well as the fields of pharmacometrics and clinical pharmacology into perspective.
Bibliographie:[Correction added on 6th March, 2020, after first online publication: Author contribution text was added].
Authors in alphabetical order. All authors contributed equally.
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ISSN:0009-9236
1532-6535
1532-6535
DOI:10.1002/cpt.1796