Interpretation in Multiple Regression
interval for the amount is 0.09 to 1.05. (this is the case for parallel regression lines; if we still had the interaction variable we could not make this statement, since the interaction of the dummy*log(duration) cannot be held constant). In the model derivation, we said that the intercept plus the dummy variable coefficient
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