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Making use of data is not anymore a niche project but central to
almost every project. With access to massive compute resources and
vast amounts of data, it seems at least in principle possible to
solve any problem. However, successful data science projects result
from the intelligent application of: human intuition in combination
with computational power; sound background knowledge with
computer-aided modelling; and critical reflection of the obtained
insights and results. Substantially updating the previous edition,
then entitled Guide to Intelligent Data Analysis, this core
textbook continues to provide a hands-on instructional approach to
many data science techniques, and explains how these are used to
solve real world problems. The work balances the practical aspects
of applying and using data science techniques with the theoretical
and algorithmic underpinnings from mathematics and statistics.
Major updates on techniques and subject coverage (including deep
learning) are included. Topics and features: guides the reader
through the process of data science, following the interdependent
steps of project understanding, data understanding, data blending
and transformation, modeling, as well as deployment and monitoring;
includes numerous examples using the open source KNIME Analytics
Platform, together with an introductory appendix; provides a review
of the basics of classical statistics that support and justify many
data analysis methods, and a glossary of statistical terms;
integrates illustrations and case-study-style examples to support
pedagogical exposition; supplies further tools and information at
an associated website. This practical and systematic
textbook/reference is a "need-to-have" tool for graduate and
advanced undergraduate students and essential reading for all
professionals who face data science problems. Moreover, it is a
"need to use, need to keep" resource following one's exploration of
the subject.
Making use of data is not anymore a niche project but central to
almost every project. With access to massive compute resources and
vast amounts of data, it seems at least in principle possible to
solve any problem. However, successful data science projects result
from the intelligent application of: human intuition in combination
with computational power; sound background knowledge with
computer-aided modelling; and critical reflection of the obtained
insights and results. Substantially updating the previous edition,
then entitled Guide to Intelligent Data Analysis, this core
textbook continues to provide a hands-on instructional approach to
many data science techniques, and explains how these are used to
solve real world problems. The work balances the practical aspects
of applying and using data science techniques with the theoretical
and algorithmic underpinnings from mathematics and statistics.
Major updates on techniques and subject coverage (including deep
learning) are included. Topics and features: guides the reader
through the process of data science, following the interdependent
steps of project understanding, data understanding, data blending
and transformation, modeling, as well as deployment and monitoring;
includes numerous examples using the open source KNIME Analytics
Platform, together with an introductory appendix; provides a review
of the basics of classical statistics that support and justify many
data analysis methods, and a glossary of statistical terms;
integrates illustrations and case-study-style examples to support
pedagogical exposition; supplies further tools and information at
an associated website. This practical and systematic
textbook/reference is a "need-to-have" tool for graduate and
advanced undergraduate students and essential reading for all
professionals who face data science problems. Moreover, it is a
"need to use, need to keep" resource following one's exploration of
the subject.
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Advances in Intelligent Data Analysis XII - 12th International Symposium, IDA 2013, London, UK, October 17-19, 2013, Proceedings (Paperback, 2013 ed.)
Allan Tucker, Frank Hoeppner, Arno Siebes, Stephen Swift
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R1,595
Discovery Miles 15 950
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Ships in 10 - 15 working days
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This book constitutes the refereed conference proceedings of the
12th International Conference on Intelligent Data Analysis, which
was held in October 2013 in London, UK. The 36 revised full papers
together with 3 invited papers were carefully reviewed and selected
from 84 submissions handling all kinds of modeling and analysis
methods, irrespective of discipline. The papers cover all aspects
of intelligent data analysis, including papers on intelligent
support for modeling and analyzing data from complex, dynamical
systems.
Each passing year bears witness to the development of ever more
powerful computers, increasingly fast and cheap storage media, and
even higher bandwidth data connections. This makes it easy to
believe that we can now - at least in principle - solve any problem
we are faced with so long as we only have enough data. Yet this is
not the case. Although large databases allow us to retrieve many
different single pieces of information and to compute simple
aggregations, general patterns and regularities often go
undetected. Furthermore, it is exactly these patterns, regularities
and trends that are often most valuable. To avoid the danger of
"drowning in information, but starving for knowledge" the branch of
research known as data analysis has emerged, and a considerable
number of methods and software tools have been developed. However,
it is not these tools alone but the intelligent application of
human intuition in combination with computational power, of sound
background knowledge with computer-aided modeling, and of critical
reflection with convenient automatic model construction, that
results in successful intelligent data analysis projects. Guide to
Intelligent Data Analysis provides a hands-on instructional
approach to many basic data analysis techniques, and explains how
these are used to solve data analysis problems. Topics and
features: guides the reader through the process of data analysis,
following the interdependent steps of project understanding, data
understanding, data preparation, modeling, and deployment and
monitoring; equips the reader with the necessary information in
order to obtain hands-on experience of the topics under discussion;
provides a review of the basics of classical statistics that
support and justify many data analysis methods, and a glossary of
statistical terms; includes numerous examples using R and KNIME,
together with appendices introducing the open source software;
integrates illustrations and case-study-style examples to support
pedagogical exposition. This practical and systematic
textbook/reference for graduate and advanced undergraduate students
is also essential reading for all professionals who face data
analysis problems. Moreover, it is a book to be used following
one's exploration of it. Dr. Michael R. Berthold is
Nycomed-Professor of Bioinformatics and Information Mining at the
University of Konstanz, Germany. Dr. Christian Borgelt is Principal
Researcher at the Intelligent Data Analysis and Graphical Models
Research Unit of the European Centre for Soft Computing, Spain. Dr.
Frank Hoeppner is Professor of Information Systems at Ostfalia
University of Applied Sciences, Germany. Dr. Frank Klawonn is a
Professor in the Department of Computer Science and Head of the
Data Analysis and Pattern Recognition Laboratory at Ostfalia
University of Applied Sciences, Germany. He is also Head of the
Bioinformatics and Statistics group at the Helmholtz Centre for
Infection Research, Braunschweig, Germany.
Each passing year bears witness to the development of ever more
powerful computers, increasingly fast and cheap storage media, and
even higher bandwidth data connections. This makes it easy to
believe that we can now - at least in principle - solve any problem
we are faced with so long as we only have enough data. Yet this is
not the case. Although large databases allow us to retrieve many
different single pieces of information and to compute simple
aggregations, general patterns and regularities often go
undetected. Furthermore, it is exactly these patterns, regularities
and trends that are often most valuable. To avoid the danger of
"drowning in information, but starving for knowledge" the branch of
research known as data analysis has emerged, and a considerable
number of methods and software tools have been developed. However,
it is not these tools alone but the intelligent application of
human intuition in combination with computational power, of sound
background knowledge with computer-aided modeling, and of critical
reflection with convenient automatic model construction, that
results in successful intelligent data analysis projects. Guide to
Intelligent Data Analysis provides a hands-on instructional
approach to many basic data analysis techniques, and explains how
these are used to solve data analysis problems. Topics and
features: guides the reader through the process of data analysis,
following the interdependent steps of project understanding, data
understanding, data preparation, modeling, and deployment and
monitoring; equips the reader with the necessary information in
order to obtain hands-on experience of the topics under discussion;
provides a review of the basics of classical statistics that
support and justify many data analysis methods, and a glossary of
statistical terms; includes numerous examples using R and KNIME,
together with appendices introducing the open source software;
integrates illustrations and case-study-style examples to support
pedagogical exposition. This practical and systematic
textbook/reference for graduate and advanced undergraduate students
is also essential reading for all professionals who face data
analysis problems. Moreover, it is a book to be used following
one's exploration of it. Dr. Michael R. Berthold is
Nycomed-Professor of Bioinformatics and Information Mining at the
University of Konstanz, Germany. Dr. Christian Borgelt is Principal
Researcher at the Intelligent Data Analysis and Graphical Models
Research Unit of the European Centre for Soft Computing, Spain. Dr.
Frank Hoeppner is Professor of Information Systems at Ostfalia
University of Applied Sciences, Germany. Dr. Frank Klawonn is a
Professor in the Department of Computer Science and Head of the
Data Analysis and Pattern Recognition Laboratory at Ostfalia
University of Applied Sciences, Germany. He is also Head of the
Bioinformatics and Statistics group at the Helmholtz Centre for
Infection Research, Braunschweig, Germany.
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