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Commercial Software
MacAnova
MacAnova is a free, noncommercial, interactive statistical analysis program for Macintosh,
DOS, and Unix written by Gary W. Oehle rt and Christopher Bingham, both of the School of
Statistics, University of Minnesota. MacAnova's strengths are analysis of variance and related
models, matrix, algebra, time series, and (to a lesser extent) uni- and multi-variate
exploratory statistics.
FTP:
ftp://umnstat.stat.umn.edu/pub/macanova/
E-mail: G. W. Oehlert: gary@stat.umn.edu
E-mail: C. Bingham: kb@stat.umn.edu
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