1935
DOI: 10.2307/2849467
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Monumenti Paleografici Veronesi. E. Carusi , W. M. Lindsay

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“…Table I11 shows the parameters obtained when the total x2 statistic was minimized and Table N shows sis and by Pearson and Spearman correlations for the noncensored data. On the suggestion that women may be better modeled as a mixture of two statistical populations, (14) we then fit two superposed bivariate normal distributions to the adjusted data by having the Solver Utility simultaneously adjust the 11 parameters in a two-distribution model to minimize the total x2 statistic. (The two-distribution model has five parameters for each of the bivariate normal distributions and one parameter for the proportion of the first distribution in the mixture.)…”
Section: Results For the Bivariate Distributionsmentioning
confidence: 99%
“…Table I11 shows the parameters obtained when the total x2 statistic was minimized and Table N shows sis and by Pearson and Spearman correlations for the noncensored data. On the suggestion that women may be better modeled as a mixture of two statistical populations, (14) we then fit two superposed bivariate normal distributions to the adjusted data by having the Solver Utility simultaneously adjust the 11 parameters in a two-distribution model to minimize the total x2 statistic. (The two-distribution model has five parameters for each of the bivariate normal distributions and one parameter for the proportion of the first distribution in the mixture.)…”
Section: Results For the Bivariate Distributionsmentioning
confidence: 99%
“…The similarity between the tumour sub-regions found with the two datasets was evaluated using the adjusted Rand index (aRI). 40 …”
Section: Methodsmentioning
confidence: 99%