Computer Science – Learning
Scientific paper
Sep 2007
adsabs.harvard.edu/cgi-bin/nph-data_query?bibcode=2007lncs.4702..573s&link_type=abstract
Lecture Notes in Computer Science, Vol. 4702, Knowledge Discovery in Databases: PKDD 2007. ISBN 978-3-540-74975-2. Springer: Ber
Computer Science
Learning
Machine Learning, Data Mining, Outlier Detection, High Redshift Quasars
Scientific paper
Recent results on robust density-based clustering have indicated that the uncertainty associated with the actual measurements can be exploited to locate objects that are atypical for a reason unrelated to measurement errors. In this paper, we develop a constrained robust mixture model, which, in addition, is able to nonlinearly map such data for visual exploration. Our robust visual mining approach aims to combine statistically sound density-based analysis with visual presentation of the density structure, and to provide visual support for the identification and exploration of "genuine" peculiar objects of interest that are not due to the measurement errors. In this model, an exact inference is not possible despite the latent space being discretised, and we resort to employing a structured variational EM. We present results on synthetic data as well as a real application, for visualising peculiar quasars from an astrophysical survey, given photometric measurements with errors.
Kaban Ata
Raychaudhury Somak
Sun Jianyong
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