Algorithm Types Reference
Agglomerative HCT Investigate any correlation among discriminator genes in hereditary breast cancer [11]
E-cast Uses a dynamic threshold [12]
Non-HCT (CAST) Clustering gene expression patterns. [13]
Bayesian Biclustering Searches for local patterns of gene expression [14]
FABIA Accounts for linear dependencies between gene expression and conditions [15]
QUBIC Combination of qualitative measures of gene expression data and a combinatorial optimization technique [16]
CPB A comparative analysis of biclustering algorithms for gene expression data [17]
Combinatorial Clustering Three classification techniques comparison, k-NN,SVM and AdaBoost [18]
Worst-Case Worst-Case Analysis of Selective Sampling for Linear Classification [19]
COALESCE Co-regulated and sequence-level regulatory motifs [20]
Cheng and Church Biclustering of expression data [21]
Plaid A tool for exploratory analysis of multivariate data [22]
BiMax Sharing compatible expression patterns across subsets of samples [23]
xMOTIFs A conserved gene expression motif [24]
OPSM Capturing the general tendency of gene expressions across a subset of conditions [25]
Spectral MEQPSO Global convergence towards an optimal solution [26]
ISA Overlapping transcription modules [27]
Table 5: Related clusterıng algorıthms.