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Progress of machine learning in geosciences:Preface 被引量:1

Progress of machine learning in geosciences:Preface
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摘要 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 soft- ware applications. It is a collection of a variety of algorithms that can provide multivariate, nonlinear, nonparametric regression or classification. The remarkable simulation capabilities of the ma- chine learning-based methods have resulted in their extensive ap- plications in science and engineering. Recently, the machine learning techniques have found many applications in the geoscien- ces and remote sensing. More specifically, these techniques are proved to be practical for cases where the system's deterministic model is computationally expensive or there is no deterministic model to solve the problem (Lary, 2010). 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 soft- ware applications. It is a collection of a variety of algorithms that can provide multivariate, nonlinear, nonparametric regression or classification. The remarkable simulation capabilities of the ma- chine learning-based methods have resulted in their extensive ap- plications in science and engineering. Recently, the machine learning techniques have found many applications in the geoscien- ces and remote sensing. More specifically, these techniques are proved to be practical for cases where the system's deterministic model is computationally expensive or there is no deterministic model to solve the problem (Lary, 2010).
出处 《Geoscience Frontiers》 SCIE CAS CSCD 2016年第1期1-2,共2页 地学前缘(英文版)
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  • 1Preface[J].Journal of Computer Science & Technology,2006,21(5).
  • 2Shi-Min Hu (1), Leif Kobbelt (2).Preface[J].Journal of Computer Science & Technology,2015,30(3):437-438.
  • 3Jian Pei.Preface[J].Journal of Computer Science & Technology,2016,31(4):635-636.
  • 4Wenwu Zhu (1), Yonggang Wen (2), Zhi Wang (3).Preface[J].Journal of Computer Science & Technology,2015,30(6):1161-1162.
  • 5Preface[J].Chinese Journal of Chemical Engineering,2014,22(7).
  • 6Yan-Bo Han Zhi-Wei Xu Hai Zhuge.Preface[J].Journal of Computer Science & Technology,2006,21(4):465-465. 被引量:18
  • 7Xiao-Dong Zhang,Robert M.Critchfield Professor,Department of Computer Science and Engineering The Ohio State University,U.S.A..Preface[J].Journal of Computer Science & Technology,2011,26(3):343-343. 被引量:4
  • 8Edwin Hsing-Mean Sha.Preface[J].Journal of Computer Science & Technology,2011,26(3):373-374. 被引量:1
  • 9PREFACE[J].Journal of China University of Geosciences,2009,20(3).
  • 10Prof. De-Yi Li, State Key Lab of Software Development Environment, Beihang University Beijing 100191, China, Prof.Zhi-Yong Liu, Institute of Computing Technology, Chinese Academy of Sciences Beijing 100190, China, Prof. Ke-Qing He, State Key Lab of Software Engineering, Wuhan University, Wuhan 430072 China,.Preface[J].Journal of Computer Science & Technology,2010,25(6):1101-1102. 被引量:3

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