Authors
Tolulope T Sajobi, Lisa M Lix, Bolanle M Dansu, William Laverty, Longhai Li
Publication date
2012/9/1
Journal
Computational Statistics & Data Analysis
Volume
56
Issue
9
Pages
2782-2794
Publisher
North-Holland
Description
Discriminant analysis (DA) procedures based on parsimonious mean and/or covariance structures have recently been proposed for repeated measures data. However, these procedures rest on the assumption of a multivariate normal distribution. This study examines repeated measures DA (RMDA) procedures based on maximum likelihood (ML) and coordinatewise trimming (CT) estimation methods and investigates bias and root mean square error (RMSE) in discriminant function coefficients (DFCs) using Monte Carlo techniques. Study parameters include population distribution, covariance structure, sample size, mean configuration, and number of repeated measurements. The results show that for ML estimation, bias in DFC estimates was usually largest when the data were normally distributed, but there was no consistent trend in RMSE. For non-normal distributions, the average bias of CT estimates for …
Total citations
20132014201520162017201820192020202120222023134111121
Scholar articles
TT Sajobi, LM Lix, BM Dansu, W Laverty, L Li - Computational Statistics & Data Analysis, 2012