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Multivariate normalitySets of experimentally determined or routinely observed data provide information about the past, present and, hopefully, future sets of similarly produced data. An infinite set of statistical models exists which may be used to describe the data sets. The normal distribution is one model. If it serves at all, it serves well. If a data set, or a transformation of the set, representative of a larger population can be described by the normal distribution, then valid statistical inferences can be drawn. There are several tests which may be applied to a data set to determine whether the univariate normal model adequately describes the set. The chi-square test based on Pearson's work in the late nineteenth and early twentieth centuries is often used. Like all tests, it has some weaknesses which are discussed in elementary texts. Extension of the chi-square test to the multivariate normal model is provided. Tables and graphs permit easier application of the test in the higher dimensions. Several examples, using recorded data, illustrate the procedures. Tests of maximum absolute differences, mean sum of squares of residuals, runs and changes of sign are included in these tests. Dimensions one through five with selected sample sizes 11 to 101 are used to illustrate the statistical tests developed.
Document ID
19760019843
Acquisition Source
Legacy CDMS
Document Type
Other - NASA Technical Note (TN)
Authors
Crutcher, H. L.
(NOAA Asheville, N. C., United States)
Falls, L. W.
(NASA Marshall Space Flight Center Huntsville, AL, United States)
Date Acquired
September 3, 2013
Publication Date
May 1, 1976
Subject Category
Statistics And Probability
Report/Patent Number
NASA-TN-D-8226
Accession Number
76N26931
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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