about
Microarray missing data imputation based on a set theoretic framework and biological knowledgeDominant spectral component analysis for transcriptional regulations using microarray time-series data.Cluster analysis of gene expression data based on self-splitting and merging competitive learning.Seed-based biclustering of gene expression data.Spectral estimation in unevenly sampled space of periodically expressed microarray time series dataA new geometric biclustering algorithm based on the Hough transform for analysis of large-scale microarray data.Discovering biclusters in gene expression data based on high-dimensional linear geometries.Identification of coherent patterns in gene expression data using an efficient biclustering algorithm and parallel coordinate visualization.Multiconstrained gene clustering based on generalized projections.Missing value imputation for gene expression data: computational techniques to recover missing data from available information.Parallelized evolutionary learning for detection of biclusters in gene expression data.Recent patents on biclustering algorithms for gene expression data analysis.Computational modeling of kinesin stepping.General retinal vessel segmentation using regularization-based multiconcavity modeling.Neurocognitive dysfunction and grey matter density deficit in children with obstructive sleep apnoea.A stochastic automaton model for simulating kinesin processivity.An adaptive spatial fuzzy clustering algorithm for 3-D MR image segmentation.Eukaryotic promoter prediction based on relative entropy and positional information.Brain symmetry plane detection based on fractal analysis.Classification of short human exons and introns based on statistical features.An interactive user interface prototype design for enhancing on-site museum and art gallery experience through digital technologyMicroarray Gene Expression Data AnalysisEffective statistical features for coding and non-coding DNA sequence classification for yeast, C. elegans and humanAggregation of Classifiers: A Justifiable Information Granularity Approach
P50
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P50
description
hulumtues
@sq
researcher
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ricercatore
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հետազոտող
@hy
name
Alan Wee-chung Liew
@ast
Alan Wee-chung Liew
@en
Alan Wee-chung Liew
@es
Alan Wee-chung Liew
@nl
type
label
Alan Wee-chung Liew
@ast
Alan Wee-chung Liew
@en
Alan Wee-chung Liew
@es
Alan Wee-chung Liew
@nl
prefLabel
Alan Wee-chung Liew
@ast
Alan Wee-chung Liew
@en
Alan Wee-chung Liew
@es
Alan Wee-chung Liew
@nl
P214
P244
P1053
F-6988-2011
P106
P1153
7005648281
P21
P214
P244
n2008057729
P31
P3829
P496
0000-0001-6718-7584
P5361
LiewAlanWee-Chung1968-
P734
P735
P7859
lccn-n2008057729