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Scharl, Theresa and Leisch, Friedrich (2008): Visualizing Gene Clusters using Neighborhood Graphs in R. Department of Statistics: Technical Reports, No.16

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Abstract

The visualization of cluster solutions in gene expression data analysis gives practitioners an understanding of the cluster structure of their data and makes it easier to interpret the cluster results. Neighborhood graphs allow for visual assessment of relationships between adjacent clusters. The number of clusters in gene expression data is for biological reasons rather large. As a linear projection of the data into 2 dimensions does not scale well in the number of clusters there is a need for new visualization techniques using non-linear arrangement of the clusters. The new visualization tool is implemented in the open source statistical computing environment R. It is demonstrated on microarray data from yeast.

Item Type:Paper (Technical Report)
Keywords:Cluster analysis, graphs, microarray data, R
Subjects:Mathematics, Computer Science and Statistics > Statistics > Technical Reports
URN:urn:nbn:de:bvb:19-epub-2110-3
Language:English
ID Code:2110
Deposited On:01. Feb 2008 09:20
Last Modified:28. Jun 2010 14:37
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