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Use of Hotelling's T^2: Outlier Diagnostics in Mixtures
2017
International Journal of Statistics and Probability
Given Gaussian observation vectors $[\seqcl{\BY}{n}]$ having a common mean and dispersion matrix, a pervading issue is to identify shifted observations of type $\{\BYi\!\to\!\BYi\!+\!\bdeli\}.$ Conventional usage enjoins Hotelling's $\Tisq$ diagnostics, derived and applied under the mutual independence of $[\seqcl{\BY}{n}]$. Independence often fails, yet the need to identify outliers nonetheless persists. Accordingly, the present study reexamines $\Tisq$ under dependencies to include
doi:10.5539/ijsp.v6n6p24
fatcat:cc44kojtavadrpjmrzoul2qega