260 PART 5 Looking for Relationships with Correlation and Regression
»
» There’s one row for the constant term labeled Intercept.»
» The first column usually lists the regression coefficients (under Coeff. in
Figure 18-4a).»
» The second column usually lists the standard error (SE) of each coefficient
(under StdErr in Figure 18-4a).»
» A p-value column indicates whether the coefficient is statistically significantly
different from 0. This column may be labeled Sig or Signif or Pr(> lzl), but in
Figure 18-4a, it is labeled p-value.
For each predictor variable, the output should also provide the odds ratio (OR) and
its 95 percent confidence interval. These are usually presented in a separate table
as they are in Figure 18-4a under Odds Ratios and 95% Confidence Intervals.
Predicting probabilities with the
fitted logistic formula
The output may include the fitted logistic formula. At the bottom of Figure 18-4a,
the formula is shown as:
Prob Death = 1/ 1 + Exp - -4.828 + 0.01146 * Dose
You can write out the formula manually by inserting the value of the regression
coefficients from the regression table into the logistic formula. The final model
produced by the logistic regression program from the data in Table 18-1 and the
resulting logistic curve are shown in Figure 18-5.
Once you have the fitted logistic formula, you can predict the probability of having
the outcome if you know the value of the predictor variable. For example, if an
individual is exposed to 500 REM of radiation, the probability of the outcome is
given by this formula: Probability of Death
1
1
4 828
0 01146
500
/
_
,
.
(
)
e
, which
equals 0.71. An individual exposed to 500 REM of radiation has a predicted proba-
bility of 0.71 — or a 71 percent chance — of dying shortly thereafter. The predicted
probabilities for each individual are shown in the data listed in Figure 18-4b. You
can also calculate some points of special significance on a logistic curve, as you
find out in the following sections.
Be careful with your algebra when evaluating these formulas! The a coefficient in
a logistic regression is often a negative number, and subtracting a negative num-
ber is like adding its absolute value.