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Distribution based truncation for variable selection in subspace methods for multivariate regression
Author(s):
Kristian Liland
,
Martin Høy
,
Harald Martens
,
Solve Sæbø
,
KH Liland
,
M. Høy
,
H MARTENS
,
S Sæbø
,
H Martens
Publication date:
2013
Journal:
Chem. Intell. Lab. Syst.
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Renewable Energy – Distribution Grid
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DOI::
10.1016/j.chemolab.2013.01.008
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