Synergies of Soft Computing and Statistics for Intelligent Data Analysis

Synergies of Soft Computing and Statistics for Intelligent Data Analysis

  • Rudolf Kruse
  • Michael R. Berthold
  • Christian Moewes
  • María Ángeles Gil
  • Przemysław Grzegorzewski
  • Olgierd Hryniewicz
Publisher:Springer Science & Business MediaISBN 13: 9783642330421ISBN 10: 3642330428

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Know about the book -

Synergies of Soft Computing and Statistics for Intelligent Data Analysis is written by Rudolf Kruse and published by Springer Science & Business Media. It's available with International Standard Book Number or ISBN identification 3642330428 (ISBN 10) and 9783642330421 (ISBN 13).

In recent years there has been a growing interest to extend classical methods for data analysis. The aim is to allow a more flexible modeling of phenomena such as uncertainty, imprecision or ignorance. Such extensions of classical probability theory and statistics are useful in many real-life situations, since uncertainties in data are not only present in the form of randomness --- various types of incomplete or subjective information have to be handled. About twelve years ago the idea of strengthening the dialogue between the various research communities in the field of data analysis was born and resulted in the International Conference Series on Soft Methods in Probability and Statistics (SMPS). This book gathers contributions presented at the SMPS'2012 held in Konstanz, Germany. Its aim is to present recent results illustrating new trends in intelligent data analysis. It gives a comprehensive overview of current research into the fusion of soft computing methods with probability and statistics. Synergies of both fields might improve intelligent data analysis methods in terms of robustness to noise and applicability to larger datasets, while being able to efficiently obtain understandable solutions of real-world problems.