24.3 Two independent means: Notation
Since two groups are being compared, distinguishing between the statistics for the two groups (say, Group A and Group B) is important. One way is to use subscripts (Table 24.1).
Group A | Group B | |
---|---|---|
Population means: | \(\mu_A\) | \(\mu_B\) |
Sample means: | \(\bar{x}_A\) | \(\bar{x}_B\) |
Standard deviations: | \(s_A\) | \(s_B\) |
Standard errors: | \(\displaystyle\text{s.e.}(\bar{x}_A) = \frac{s_A}{\sqrt{n_A}}\) | \(\displaystyle\text{s.e.}(\bar{x}_B) = \frac{s_B}{\sqrt{n_B}}\) |
Sample sizes: | \(n_A\) | \(n_B\) |
Using this notation, the difference between population means, the parameter of interest, is \(\mu_A-\mu_B\). As usual, the population values are unknown, so this parameter is estimated using the statistic \(\bar{x}_A-\bar{x}_B\).
Notice that Table 24.1 does not include a standard deviation or a sample size for the difference between means; they make no sense in this context.
For example, if Group A has 15 individuals, and Group B has 45 individuals, and we wish to study the difference \(\bar{x}_A - \bar{x}_B\). what is the sample size be? Certain not \(15-45=-30\).
On the other hand, the standard error of the difference between the means does make sense: it measures how much the value of \(\bar{x}_A - \bar{x}_B\) varies from sample to sample.
For the reaction-time data, we will use the subscripts \(P\) for phone-users group, and \(C\) for the control group. That means that the two sample means would be denoted as \(\bar{x}_P\) and \(\bar{x}_C\), and the difference between them as \(\bar{x}_P - \bar{x}_C\).