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Online Transitivity Clustering of Biological Data with Missing Values
2012
German Conference on Bioinformatics
Motivation: Equipped with sophisticated biochemical measurement techniques we generate a massive amount of biomedical data that needs to be analyzed computationally. One long-standing challenge in automatic knowledge extraction is clustering. We seek to partition a set of objects into groups such that the objects within the clusters share common traits. Usually, we have given a similarity matrix computed from a pairwise similarity function. While many approaches for biomedical data clustering
doi:10.4230/oasics.gcb.2012.57
dblp:conf/gcb/RottgerKVWB12
fatcat:jefnovuol5avfehuubgstq4qfi