Let Y be a binary random variable and X a scalar. Let β^ be the
maximum likelihood estimate of the slope in a logistic regression of Y on X
with intercept. Further let xˉ0 and xˉ1 be the average of sample
x values for cases with y=0 and y=1, respectively. Then under a condition that
rules out separable predictors, we show that sign(β^) = sign(xˉ1−xˉ0). More generally, if xi are vector valued then we show that
β^=0 if and only if xˉ1=xˉ0. This holds for logistic
regression and also for more general binary regressions with inverse link
functions satisfying a log-concavity condition. Finally, when xˉ1=xˉ0 then the angle between β^ and xˉ1−xˉ0 is less than
ninety degrees in binary regressions satisfying the log-concavity condition and
the separation condition, when the design matrix has full rank.Comment: 9 pages, 0 figure