Progress of machine learning in geosciences:Preface

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作者
Amir HAlavi [1 ]
Amir HGandomi [2 ]
David JLary [3 ]
机构
[1] Department of Civil and Environmental Engineering,Michigan State University
[2] BEACON Center for the Study of Evolution in Action,Michigan State University
[3] Hanson Center for Space Science,University of Texas at
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<正>In the past two decades,artificial intelligence(AI)algorithms have proved to be promising tools for solving several tough scientific problems.As a broad subfield of AI,machine learning is concerned with algorithms and techniques that allow computers to"learn".The machine learning approach covers main domains such as data mining,difficult-to-program applications,and software applications.It is a collection of a variety of algorithms that
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