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  5. A review on the multivariate statistical methods for dimensional reduction studies
 
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A review on the multivariate statistical methods for dimensional reduction studies

Journal
AIP Conference Proceedings
ISSN
0094243X
Date Issued
2017-05-19
Author(s)
Aik L.E.
Kiang L.C.
Mohamed Z.B.
Hong T.W.
DOI
10.1063/1.4983858
Handle (URI)
https://hdl.handle.net/20.500.14170/12418
Abstract
In this research study we have discussed multivariate statistical methods for dimensional reduction, which has been done by various researchers. The reduction of dimensionality is valuable to accelerate algorithm progression, as well as really may offer assistance with the last grouping/clustering precision. A lot of boisterous or even flawed info information regularly prompts a not exactly alluring algorithm progression. Expelling un-useful or dis-instructive information segments may for sure help the algorithm discover more broad grouping locales and principles and generally speaking accomplish better exhibitions on new data set.
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