On methods in the analysis of profile data

@article{Greenhouse1959OnMI,
  title={On methods in the analysis of profile data},
  author={Samuel W. Greenhouse and Seymour Geisser},
  journal={Psychometrika},
  year={1959},
  volume={24},
  pages={95-112}
}
This paper is concerned with methods for analyzing quantitative, non-categorical profile data, e.g., a battery of tests given to individuals in one or more groups. It is assumed that the variables have a multinormal distribution with an arbitrary variance-covariance matrix. Approximate procedures based on classical analysis of variance are presented, including an adjustment to the degrees of freedom resulting in conservativeF tests. These can be applied to the case where the variance-covariance… 

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