Abstract
AbstractThe three tests in profile analysis: test of parallelism, test of level and test of flatness are modified so that high-dimensional data can be analysed. Using specific scores, dimension reduction is performed and the exact null distributions are derived for the three hypotheses.
Funder
Swedish University of Agricultural Sciences
Publisher
Springer Science and Business Media LLC
Subject
Statistics and Probability
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