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SPBS: Programs for non-parametric tests

โœ Scribed by A Giannangeli; M Recchia; M Rocchetti


Publisher
Elsevier Science
Year
1983
Weight
345 KB
Volume
16
Category
Article
ISSN
0010-468X

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โœฆ Synopsis


A new series of programs for non-parametric tests have been inserted in SPBS, a statistical package for biological sciences that applies biostatistical methods using microcomputer software [Comput. Prog. Biomed. 14 (1982) 7 20]. Programs presented here cover non-parametric tests for multiple comparisons between two or more groups of paired or independent data. Biostatistics Minicomputer software Statistical programs Non-parametric tests YES TAPE i,+: DATA PRI NTOUT DATA ] CORRECTI ON (OPTI ONAL) DATA RECORDI NG (OPTI ONAL) KEYBOARD DATA PROCESSING PRINTOUT OF RESULTS OTHER CALL PROGRAMS


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