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Learning in Non-Stationary Environments: Methods and Applications

✍ Scribed by Moamar Sayed-Mouchaweh, Edwin Lughofer (auth.), Moamar Sayed-Mouchaweh, Edwin Lughofer (eds.)


Publisher
Springer-Verlag New York
Year
2012
Tongue
English
Leaves
421
Edition
1
Category
Library

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✦ Synopsis


Recent decades have seen rapid advances in automatization processes, supported by modern machines and computers. The result is significant increases in system complexity and state changes, information sources, the need for faster data handling and the integration of environmental influences. Intelligent systems, equipped with a taxonomy of data-driven system identification and machine learning algorithms, can handle these problems partially. Conventional learning algorithms in a batch off-line setting fail whenever dynamic changes of the process appear due to non-stationary environments and external influences.

Learning in Non-Stationary Environments: Methods and Applications offers a wide-ranging, comprehensive review of recent developments and important methodologies in the field. The coverage focuses on dynamic learning in unsupervised problems, dynamic learning in supervised classification and dynamic learning in supervised regression problems. A later section is dedicated to applications in which dynamic learning methods serve as keystones for achieving models with high accuracy.

Rather than rely on a mathematical theorem/proof style, the editors highlight numerous figures, tables, examples and applications, together with their explanations.

This approach offers a useful basis for further investigation and fresh ideas and motivates and inspires newcomers to explore this promising and still emerging field of research.

✦ Table of Contents


Front Matter....Pages i-xii
Prologue....Pages 1-17
Front Matter....Pages 19-19
Incremental Statistical Measures....Pages 21-55
A Granular Description of Data: A Study in Evolvable Systems....Pages 57-75
Incremental Spectral Clustering....Pages 77-99
Front Matter....Pages 101-101
Semisupervised Dynamic Fuzzy K -Nearest Neighbors....Pages 103-124
Making Early Predictions of the Accuracy of Machine Learning Classifiers....Pages 125-151
Incremental Classifier Fusion and Its Applications in Industrial Monitoring and Diagnostics....Pages 153-184
Instance-Based Classification and Regression on Data Streams....Pages 185-201
Front Matter....Pages 203-203
Flexible Evolving Fuzzy Inference Systems from Data Streams (FLEXFIS++)....Pages 205-245
Sequential Adaptive Fuzzy Inference System for Function Approximation Problems....Pages 247-270
Interval Approach for Evolving Granular System Modeling....Pages 271-300
Front Matter....Pages 301-301
Dynamic Learning of Multiple Time Series in a Nonstationary Environment....Pages 303-347
Optimizing Feature Calculation in Adaptive Machine Vision Systems....Pages 349-374
Online Quality Control with Flexible Evolving Fuzzy Systems....Pages 375-406
Identification of a Class of Hybrid Dynamic Systems....Pages 407-427
Back Matter....Pages 429-440

✦ Subjects


Computational Intelligence; Data Mining and Knowledge Discovery; Pattern Recognition


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