Introduction to partitioning-based clustering methods with a robust example
Julkaistu sarjassa
Reports of the Department of Mathematical Information Technology. Series C, Software engineering and computational intelligencePäivämäärä
2006Julkaisija
University of JyväskyläISBN
951-39-2467-XISSN Hae Julkaisufoorumista
1456-4378Metadata
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Clustering Incomplete Spectral Data with Robust Methods
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Yeast gene CMR1/YDL156W is consistently co-expressed with genes participating in DNA-metabolic processes in a variety of stringent clustering experiments
Abu-Jamous, Basel; Fa, Rui; Roberts, David; Nandi, Asoke (The Royal Society, 2013)The binarization of consensus partition matrices (Bi-CoPaM) method has, among its unique features, the ability to perform ensemble clustering over the same set of genes from multiple microarray datasets by using various ... -
Space partitioning of exchange-correlation functionals with the projector augmented-wave method
Levämäki, H.; Kuisma, Mikael; Kokko, K. (AIP Publishing LLC, 2019)We implement a Becke fuzzy cells type space partitioning scheme for the purposes of exchange-correlation within the GPAW projector augmented-wave method based density functional theory code. Space partitioning is needed ... -
Feature Ranking of Large, Robust, and Weighted Clustering Result
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