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Empirical investigation of consensus clustering for large ECG data sets

conference contribution
posted on 2012-01-01, 00:00 authored by A Kelarev, A Stranieri, John YearwoodJohn Yearwood, H Jelinek
This article investigates a novel machine learning approach applying consensus clustering in conjunction with classification for the data mining of very large and highly dimensional ECG data sets. To obtain robust and stable clusterings, consensus functions can be applied for clustering ensembles combining a multitude of independent initial clusterings. Direct applications of consensus functions to highly dimensional ECG data sets remain computationally expensive and impracticable. We introduce a multistage scheme including various procedures for dimensionality reduction, consensus clustering of randomized samples, followed by the use of a fast supervised classification algorithm. Applying the Hybrid Bipartite Graph Formulation combined with rank ordering and SMO we obtained an area under the receiver operating curve of 0.987. The performance of the classification algorithm at the final stage is crucial for the effectiveness of this technique. It can be regarded as an indication of the reliability, quality and stability of the combined consensus clustering.

History

Event

IEEE Computer Society. Conference (25th : 2012 : Rome, Italy)

Series

IEEE Computer Society Conference

Pagination

1 - 4

Publisher

Institute of Electrical and Electronics Engineers

Location

Rome, Italy

Place of publication

Piscataway, N.J.

Start date

2012-06-20

End date

2012-06-22

ISSN

1063-7125

ISBN-13

9781467320511

Language

eng

Publication classification

E Conference publication; E1.1 Full written paper - refereed

Copyright notice

2012, IEEE

Editor/Contributor(s)

P Soda, F Tortorella, S Antani, M Pechenizkiy, M Cannataro, A Tsymbal

Title of proceedings

CBMS 2012 : Proceedings of the 2012 25th International Symposium on Computer-Based Medical Systems