Article
caBIG™ VISDA: Modeling, visualization, and discovery for cluster analysis of genomic data
BMC Bioinformatics
01/2008;
Source: DOAJ
-
Citations (0)
-
Cited In (0)
Data provided are for informational purposes only. Although carefully collected, accuracy cannot be guaranteed.
The impact factor represents a rough estimation of the journal's impact factor and does not reflect the actual
current impact factor.
Publisher conditions are provided by RoMEO. Differing provisions from the publisher's actual policy or licence
agreement may be applicable.
Keywords
Bayesian theoretic criteria
cluster modeling
cluster number detection
clustering scheme
complementary building blocks
consequent subspace data modeling
dimensional genomic data clustering
full dimensional model
gene clustering
hierarchical mixture modeling
local cluster structures
low-dimensional visualization subspaces
model order selection scheme
multiple local visualization subspaces
poor local optima
random algorithm initialization
superior clustering accuracy
supervised/unsupervised data visualization
user/prior knowledge guidance
wherein phenotype labels