Principles and Theory for Data Mining and Machine Learning

Author:   Bertrand Clarke ,  Ernest Fokoue ,  Hao Helen Zhang
Publisher:   Springer-Verlag New York Inc.
Edition:   2009 ed.
ISBN:  

9780387981345


Pages:   786
Publication Date:   30 July 2009
Format:   Hardback
Availability:   Out of print, replaced by POD   Availability explained
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Principles and Theory for Data Mining and Machine Learning


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Overview

The idea for this book came from the time the authors spent at the Statistics and Applied Mathematical Sciences Institute (SAMSI) in Research Triangle Park in North Carolina starting in fall 2003. The rst author was there for a total of two years, the rst year as a Duke/SAMSI Research Fellow. The second author was there for a year as a Post-Doctoral Scholar. The third author has the great fortune to be in RTP p- manently. SAMSI was – and remains – an incredibly rich intellectual environment with a general atmosphere of free-wheeling inquiry that cuts across established elds. SAMSI encourages creativity: It is the kind of place where researchers can be found at work in the small hours of the morning – computing, interpreting computations, and developing methodology. Visiting SAMSI is a unique and wonderful experience. The people most responsible for making SAMSI the great success it is include Jim Berger, Alan Karr, and Steve Marron. We would also like to express our gratitude to Dalene Stangl and all the others from Duke, UNC-Chapel Hill, and NC State, as well as to the visitors (short and long term) who were involved in the SAMSI programs. It was a magical time we remember with ongoing appreciation.

Full Product Details

Author:   Bertrand Clarke ,  Ernest Fokoue ,  Hao Helen Zhang
Publisher:   Springer-Verlag New York Inc.
Imprint:   Springer-Verlag New York Inc.
Edition:   2009 ed.
Dimensions:   Width: 15.50cm , Height: 4.20cm , Length: 23.50cm
Weight:   1.467kg
ISBN:  

9780387981345


ISBN 10:   0387981349
Pages:   786
Publication Date:   30 July 2009
Audience:   College/higher education ,  Postgraduate, Research & Scholarly
Format:   Hardback
Publisher's Status:   Active
Availability:   Out of print, replaced by POD   Availability explained
We will order this item for you from a manufatured on demand supplier.

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Reviews

From the reviews: PhD level students, and researchers and practitioners in statistical learning and machine learning. ... text assumes a thorough training in undergraduate statistics and mathematics. Computed examples that include R code are scattered through the text. There are numerous exercises, many with commentary that sets out guidelines for exploration. ... The over-riding reason for staying with the independent, symmetric unimodal error model is surely that no one book can cover everything! Within these bounds, this book gives a careful treatment that is encyclopedic in its scope. (John H. Maindonald, International Statistical Review, Vol. 79 (1), 2011) It is an appropriate textbook for a PhD level course and can also be used as a reference or for independent reading. ... an excellent resource for researchers and students interested in DMML. ... the authors have done an outstanding job of covering important topics and providing relevant statistical theory and computational resources. I can see myself teaching a statistical learning class using this book and comfortably recommend it to any researcher with a solid mathematical background who wants to be engaged in this field. (Jeongyoun Ahn, Journal of the American Statistical Association, Vol. 106 (493), March, 2011)


From the reviews: PhD level students, and researchers and practitioners in statistical learning and machine learning. ! text assumes a thorough training in undergraduate statistics and mathematics. Computed examples that include R code are scattered through the text. There are numerous exercises, many with commentary that sets out guidelines for exploration. ! The over-riding reason for staying with the independent, symmetric unimodal error model is surely that no one book can cover everything! Within these bounds, this book gives a careful treatment that is encyclopedic in its scope. (John H. Maindonald, International Statistical Review, Vol. 79 (1), 2011) It is an appropriate textbook for a PhD level course and can also be used as a reference or for independent reading. ! an excellent resource for researchers and students interested in DMML. ! the authors have done an outstanding job of covering important topics and providing relevant statistical theory and computational resources. I can see myself teaching a statistical learning class using this book and comfortably recommend it to any researcher with a solid mathematical background who wants to be engaged in this field. (Jeongyoun Ahn, Journal of the American Statistical Association, Vol. 106 (493), March, 2011)


From the reviews: PhD level students, and researchers and practitioners in statistical learning and machine learning. ! text assumes a thorough training in undergraduate statistics and mathematics. Computed examples that include R code are scattered through the text. There are numerous exercises, many with commentary that sets out guidelines for exploration. ! The over-riding reason for staying with the independent, symmetric unimodal error model is surely that no one book can cover everything! Within these bounds, this book gives a careful treatment that is encyclopedic in its scope. (John H. Maindonald, International Statistical Review, Vol. 79 (1), 2011)


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