Diff for "EffectSize" - CBU statistics Wiki
location: Diff for "EffectSize"
Differences between revisions 3 and 4
Revision 3 as of 2007-03-13 14:44:49
Size: 782
Comment:
Revision 4 as of 2007-03-13 15:06:28
Size: 1194
Comment:
Deletions are marked like this. Additions are marked like this.
Line 7: Line 7:
$$x|A \qquad ~ \qquad N(\mu_A,\sigma_S^2)$$

$$\mu_1$$
The samples are assumed to be independently and normally distributed with the same variance: $${x_i|i=1\ldots n_A} ~ \textrm{(i.i.d.)} \qquad N(\mu_A,\sigma^2)$$ and
$${y_i:i=1\ldots n_B} ~ \textrm{(i.i.d.)} \qquad N(\mu_B,\sigma^2)$$. Effect Size as defined by Cohen is the difference between the two condition means divided by the common standard deviation. (There are obvious connections with the definition of the classical Signal Dection Thoery paramter $$d'$$.

Effect Size

The purpose of the various meansures of effect size is to provide a statistically valid reflection of the size of the effect of some feature of an experiment. As such it is a rather loose concept. However there is an underlying assumption that this is taking place in some parametric design, and that the effect of the feature of interest (or manipulation) can be measured by some estimable function of the parameters.

This is certainly the case in the paradigmatic case for the evaluation effect size" the two-conditions, two-groups design. Suppose that a test $$\mathbf{T}$$ is administered to two groups of sizes $$n_A$$ and $$n_B$$ in two conditions $$A$$ and $$B$$.

The samples are assumed to be independently and normally distributed with the same variance: $${x_i|i=1\ldots n_A} ~ \textrm{(i.i.d.)} \qquad N(\mu_A,\sigma^2)$$ and $${y_i:i=1\ldots n_B} ~ \textrm{(i.i.d.)} \qquad N(\mu_B,\sigma^2)$$. Effect Size as defined by Cohen is the difference between the two condition means divided by the common standard deviation. (There are obvious connections with the definition of the classical Signal Dection Thoery paramter $$d'$$.

None: EffectSize (last edited 2013-03-08 10:17:40 by localhost)