DocumentCode :
3623656
Title :
Rough Discretization of Gene Expression Data
Author :
Dominik Slezak;Jakub Wroblewski
Author_Institution :
Infobright Inc.
Volume :
2
fYear :
2006
Firstpage :
265
Lastpage :
267
Abstract :
We adapt the rough set-based approach to deal with the gene expression data, where the problem is a huge amount of genes (attributes) a?A versus small amount of experiments (objects) u?U. We perform the gene reduction using standard rough set methodology based on approximate decision reducts applied against specially prepared data. We use rough discretization - Every pair of objects (x,y)xU yields a new object, which takes values "\ge a(x)" if and only if a(y)\ge a(x); and "\le a(x)" otherwise; over original genes-attributes aA. In this way: 1) We work with desired, larger number of objects improving credibility of the obtained reducts; 2) We produce more decision rules, which vote during classification of new observations; 3) We avoid an issue of discretization of real-valued attributes, difficult and leading to unpredictable results in case of any data sets having much more attributes than objects. We illustrate our method by analysis of the gene expression data related to breast cancer.
Keywords :
"Gene expression","Breast cancer","DNA","Set theory","Costs","Fluorescence","Information technology","Computer science","Voting","Rough sets"
Publisher :
ieee
Conference_Titel :
Hybrid Information Technology, 2006. ICHIT ´06. International Conference on
Print_ISBN :
0-7695-2674-8
Type :
conf
DOI :
10.1109/ICHIT.2006.253621
Filename :
4021226
Link To Document :
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