DocumentCode
1706804
Title
Estimating neuronal variable importance with Random Forest
Author
Oh, Jong ; Laubach, Mark ; Luczak, Artur
Author_Institution
John B. Pierce Lab., Yale Univ., New Haven, CT, USA
fYear
2003
Firstpage
33
Lastpage
34
Abstract
We describe a novel application of a new method for data mining, Random Forest, for the analysis of data sets acquired with neuronal ensemble recording methods. Random Forest is used here to measure the relative importance of each input variable in the data. The technique is fast and can greatly reduce the number of variables with little compromise, especially for highly redundant data like neural ensemble spike trains. It also naturally preserves the identifiability of the original Information source unlike other techniques, for example the principal component analysis that mixes up the content of the variables irrecoverably and projects it into different set of variables.
Keywords
bioelectric potentials; brain; data mining; principal component analysis; Random Forest; data mining; data sets; highly redundant data like neural ensemble spike trains; input variable; neuronal ensemble recording methods; neuronal variable importance; principal component analysis; Bagging; Data analysis; Error analysis; Input variables; Laboratories; Machine learning algorithms; Neurons; Radio frequency; Sampling methods; Signal processing algorithms;
fLanguage
English
Publisher
ieee
Conference_Titel
Bioengineering Conference, 2003 IEEE 29th Annual, Proceedings of
Print_ISBN
0-7803-7767-2
Type
conf
DOI
10.1109/NEBC.2003.1215978
Filename
1215978
Link To Document