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From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence

This successful book provides in its second edition an interactive and illustrative guide from two-dimensional curve fitting to multidimensional clustering and machine learning with neural networks or support vector machines. Along the way topics like mathematical optimization or evolutionary algori...

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Detalles Bibliográficos
Autor principal: Zielesny, Achim
Lenguaje:eng
Publicado: Springer 2016
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-32545-3
http://cds.cern.ch/record/2151704
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author Zielesny, Achim
author_facet Zielesny, Achim
author_sort Zielesny, Achim
collection CERN
description This successful book provides in its second edition an interactive and illustrative guide from two-dimensional curve fitting to multidimensional clustering and machine learning with neural networks or support vector machines. Along the way topics like mathematical optimization or evolutionary algorithms are touched. All concepts and ideas are outlined in a clear cut manner with graphically depicted plausibility arguments and a little elementary mathematics. The major topics are extensively outlined with exploratory examples and applications. The primary goal is to be as illustrative as possible without hiding problems and pitfalls but to address them. The character of an illustrative cookbook is complemented with specific sections that address more fundamental questions like the relation between machine learning and human intelligence. All topics are completely demonstrated with the computing platform Mathematica and the Computational Intelligence Packages (CIP), a high-level function library developed with Mathematica's programming language on top of Mathematica's algorithms. CIP is open-source and the detailed code used throughout the book is freely accessible. The target readerships are students of (computer) science and engineering as well as scientific practitioners in industry and academia who deserve an illustrative introduction. Readers with programming skills may easily port or customize the provided code. "'From curve fitting to machine learning' is ... a useful book. ... It contains the basic formulas of curve fitting and related subjects and throws in, what is missing in so many books, the code to reproduce the results. All in all this is an interesting and useful book both for novice as well as expert readers. For the novice it is a good introductory book and the expert will appreciate the many examples and working code." Leslie A. Piegl (Review of the first edition, 2012).
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spelling cern-21517042021-04-21T19:42:35Zdoi:10.1007/978-3-319-32545-3http://cds.cern.ch/record/2151704engZielesny, AchimFrom curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligenceEngineeringThis successful book provides in its second edition an interactive and illustrative guide from two-dimensional curve fitting to multidimensional clustering and machine learning with neural networks or support vector machines. Along the way topics like mathematical optimization or evolutionary algorithms are touched. All concepts and ideas are outlined in a clear cut manner with graphically depicted plausibility arguments and a little elementary mathematics. The major topics are extensively outlined with exploratory examples and applications. The primary goal is to be as illustrative as possible without hiding problems and pitfalls but to address them. The character of an illustrative cookbook is complemented with specific sections that address more fundamental questions like the relation between machine learning and human intelligence. All topics are completely demonstrated with the computing platform Mathematica and the Computational Intelligence Packages (CIP), a high-level function library developed with Mathematica's programming language on top of Mathematica's algorithms. CIP is open-source and the detailed code used throughout the book is freely accessible. The target readerships are students of (computer) science and engineering as well as scientific practitioners in industry and academia who deserve an illustrative introduction. Readers with programming skills may easily port or customize the provided code. "'From curve fitting to machine learning' is ... a useful book. ... It contains the basic formulas of curve fitting and related subjects and throws in, what is missing in so many books, the code to reproduce the results. All in all this is an interesting and useful book both for novice as well as expert readers. For the novice it is a good introductory book and the expert will appreciate the many examples and working code." Leslie A. Piegl (Review of the first edition, 2012).Springeroai:cds.cern.ch:21517042016
spellingShingle Engineering
Zielesny, Achim
From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title_full From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title_fullStr From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title_full_unstemmed From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title_short From curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
title_sort from curve fitting to machine learning: an illustrative guide to scientific data analysis and computational intelligence
topic Engineering
url https://dx.doi.org/10.1007/978-3-319-32545-3
http://cds.cern.ch/record/2151704
work_keys_str_mv AT zielesnyachim fromcurvefittingtomachinelearninganillustrativeguidetoscientificdataanalysisandcomputationalintelligence