Applied Biostatistics for the Health Sciences. Richard J. Rossi

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      The coefficient of variation is also sometimes represented as a percentage in which case

CV equals StartFraction sigma Over Math bar pipe bar symblom mu Math bar pipe bar symblom EndFraction times 100 percent-sign

      Because the standard deviation and the mean have the same units of measurement, the coefficient of variation is a unitless parameter. That is, the coefficient is unaffected by changes in the units of measurement. For example, if a variable X is measured in inches and the coefficient of variation is CV = 2, then coefficient of variation will also be 2 when the units of measurement are converted to centimeters. The coefficient of variation can also be used to compare the relative variability in two different and unrelated populations; the standard deviation can only be used to compare the variability in two different populations based on similar variables.

       Example 2.18

Variable µ σ
I 100 25
II 10 5
III 0.10 0.05

      1 Determine the value of the coefficient of variation for population I.

      2 Determine the value of the coefficient of variation for population II.

      3 Determine the value of the coefficient of variation for population III.

      4 Compare the relative variability of each variable.

       Solutions

      1 The value of the coefficient of variation for population I is CVI=25100=0.25.

      2 The value of the coefficient of variation for population II is CVII=510=0.5.

      3 The value of the coefficient of variation for population III is CVIII=0.050.10=0.5.

      4 Populations II and III are relatively more variable than population I even though the standard deviations for populations II and III are smaller than the standard deviation of population I. Populations II and III have the same amount of relative variability even though the standard deviation of population III is one-hundredth that of population II.

      2.2.7 Parameters for Bivariate Populations

      In most biomedical research studies, there are many variables that will be recorded on each individual in the study. A multivariate distribution can be formed by jointly tabulating, charting, or graphing the values of the variables over the N units in the population. For example, the bivariate distribution of two variables, say X and Y, is the collection of the ordered pairs

left-parenthesis upper X 1 comma upper Y 1 right-parenthesis comma left-parenthesis upper X 2 comma upper Y 2 right-parenthesis comma left-parenthesis upper X 3 comma upper Y 3 right-parenthesis comma ellipsis comma left-parenthesis upper X Subscript upper N Baseline comma upper Y Subscript upper N Baseline right-parenthesis period

      These N ordered pairs form the units of the bivariate distribution of X and Y and their joint distribution can be displayed in a two-way chart, table, or graph.

      When the two variables are qualitative, the joint proportions in the bivariate distribution are often denoted by pab, where

p Subscript a b Baseline equals proportion of pairs in population where upper X equals a and upper Y equals b

      Figure 2.21 The joint distribution of blood type and Rh factor according to the American Red Cross.

Blood Type Rh Factor
+
O 38% 7%
A 34% 6%
B 9% 2%
AB 3% 1%

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