Title
Improved robustness in time series analysis of gene expression data by polynomial model based clustering
Abstract
Microarray experiments produce large data sets that often contain noise and considerable missing data. Typical clustering methods such as hierarchical clustering or partitional algorithms can often be adversely affected by such data. This paper introduces a method to overcome such problems associated with noise and missing data by modelling the time series data with polynomials and using these models to cluster the data. Similarity measures for polynomials are given that comply with commonly used standard measures. The polynomial model based clustering is compared with standard clustering methods under different conditions and applied to a real gene expression data set. It shows significantly better results as noise and missing data are increased.
Year
DOI
Venue
2006
10.1007/11875741_1
CompLife
Keywords
DocType
Volume
considerable missing data,microarray experiment,large data set,standard measure,time series analysis,typical clustering method,standard clustering method,hierarchical clustering,polynomial model,time series data,real gene expression data,missing data,improved robustness
Conference
4216
ISSN
ISBN
Citations 
0302-9743
3-540-45767-4
0
PageRank 
References 
Authors
0.34
3
7
Name
Order
Citations
PageRank
Michael Hirsch12119.59
Allan Tucker210814.47
Stephen Swift342731.32
Nigel Martin4313.68
Christine A. Orengo51344159.31
P Kellam6456.75
Xiaohui Liu75042269.99