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Fusion Methods for Time-Series Classification

by Krisztian Buza (Author)
©2012 Thesis XII, 144 Pages

Summary

Time-series classification is the common theoretical background of many recognition tasks performed by computers, such as handwriting recognition, speech recognition or detection of abnormalities in electrocardiograph signals. In this book, the state-of-the-art in time-series classification is surveyed and five new techniques are presented. Four out of them aim at making the recognition more accurate, while the proposed instance-selection algorithm speeds up time-series classification. Besides time-series classification tasks, potential applications of the proposed techniques include problems from various domains, e.g. web science or medicine.

Details

Pages
XII, 144
Year
2012
ISBN (Hardcover)
9783631630853
Language
English
Keywords
Individual Quality Estimation Zeitreihenklassifikation (Informatik Maschinelles Lernen Erkennungsalgorithmen (Informatik)
Published
Frankfurt am Main, Berlin, Bern, Bruxelles, New York, Oxford, Wien, 2011. XIV, 144 pp., 1 coloured fig., num. tables and graphs

Biographical notes

Krisztian Buza (Author)

Krisztian Antal Buza obtained his diploma at the Budapest University of Technology and Economics in 2007, and his PhD at the University of Hildesheim in 2011. His work on time-series classification was honored by the Best Paper Award at the renowned conference on Computational Science and Engineering of the Institute of Electrical and Electronics Engineers (IEEE) in 2010.

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Title: Fusion Methods for Time-Series Classification