Wir verwenden Cookies und Analyse-Tools, um die Nutzerfreundlichkeit der Internet-Seite zu verbessern und für Marketingzwecke. Wenn Sie fortfahren, diese Seite zu verwenden, nehmen wir an, dass Sie damit einverstanden sind. Zur Datenschutzerklärung.
Feature weighting for clustering
Details
K-Means is arguably the most popular clustering algorithm; this is why it is of great interest to tackle its shortcomings. The drawback in the heart of this project is that this algorithm gives the same level of relevance to all the features in a dataset. This can have disastrous consequences when the features are taken from a database just because they are available. To address the issue of unequal relevance of the features we use a three-stage extension of the generic K-Means in which a third step is added to the usual two steps in a K-Means iteration: feature weighting update. We extend the generic K-Means to what we refer to as Minkowski Weighted K-Means method. We apply the developed approaches to problems in distinguishing between different mental tasks over high-dimensional EEG data.
Autorentext
Dr. Renato Amorim is a Visiting Research Fellow at Birkbeck, University of London UK. His research concentrates on clustering and feature selection for the analysis of data of complex structure.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659133145
- Sprache Englisch
- Auflage Aufl.
- Größe H220mm x B150mm x T12mm
- Jahr 2016
- EAN 9783659133145
- Format Kartonierter Einband
- ISBN 3659133140
- Veröffentlichung 16.02.2016
- Titel Feature weighting for clustering
- Autor Renato Cordeiro de Amorim
- Untertitel Using K-Means and the Minkowski metric
- Gewicht 280g
- Herausgeber LAP Lambert Academic Publishing
- Anzahl Seiten 176
- Genre Informatik