Guide to intelligent data science : how to intelligently make use of real data / Michael R. Berthold, Christian Borgelt, Frank Höppner, Frank Klawonn, Rosaria Silipo.
2020
QA276
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Title
Guide to intelligent data science : how to intelligently make use of real data / Michael R. Berthold, Christian Borgelt, Frank Höppner, Frank Klawonn, Rosaria Silipo.
Author
Edition
2nd ed.
ISBN
9783030455743 (electronic book)
3030455742 (electronic book)
9783030455736
3030455742 (electronic book)
9783030455736
Publication Details
Cham : Springer, 2020.
Language
English
Description
1 online resource (427 p.).
Item Number
10.1007/978-3-030-45
Call Number
QA276
Dewey Decimal Classification
519.5
Summary
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. Prof. Dr. Michael R. Berthold is Professor for Bioinformatics and Information Mining at the University of Konstanz. Prof. Dr. Christian Borgelt is Professor for Data Science at the Paris Lodron University of Salzburg. Prof. Dr. Frank Höppner is Professor of Information Engineering at Ostfalia University of Applied Sciences. Prof. Dr. Frank Klawonn is Professor for Data Analysis and Pattern Recognition at the same institution and head of the Biostatistics Group at the Helmholtz Centre for Infection Research. Dr. Rosaria Silipo is a Principal Data Scientist and Head of Evangelism at KNIME AG.
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Description based on print version record.
Series
Texts in computer science.
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Table of Contents
Introduction
Practical Data Analysis: An Example
Project Understanding
Data Understanding
Principles of Modeling
Data Preparation
Finding Patterns
Finding Explanations
Finding Predictors
Evaluation and Deployment
The Labelling Problem
Appendix A: Statistics
Appendix B: KNIME.
Practical Data Analysis: An Example
Project Understanding
Data Understanding
Principles of Modeling
Data Preparation
Finding Patterns
Finding Explanations
Finding Predictors
Evaluation and Deployment
The Labelling Problem
Appendix A: Statistics
Appendix B: KNIME.