I'm running the following logistic regression model in R and one of the important predictors is `our_bid`

, which is a numeric and continuous variable that ranges from 0.30 to 0.80. When I attempt to draw the probability curve for the model using the effects package, I was expecting that I could predict the response variable based on `our_bid`

from 0.00 to 2.00. Even though those values aren't present in my data set, I thought I could use the model to predict on values outside the values currently that are in `our_bid`

.

```
mod1 = glm(factor(won_ping) ~ our_bid +
age_of_oldest_driver2 +
credit_type2 +
coverage_type2 +
home_owner2 +
state2 +
currently_insured2 +
hour_of_day4 +
vehicle_driver_score,
data=dat, family=binomial(link="logit"))
Predict.Plot(mod1, pred.var = "our_bid", our_bid = 250, age_of_oldest_driver2 = "22 to 25",
credit_type2 = "FAIR", coverage_type2 = "BASIC", home_owner2 = "1",
state2 = "top", currently_insured2 = "1", hour_of_day4 = "1pm to 7pm",
vehicle_driver_score = "0", plot.args = "list(xlim=c(0,100))", type = "response")
```

This results in the following plot, which doesn't give all the predicted values from 0 to 1.00. I'm not sure why I'm not able to use the statistical model to predict outside the bounds of the values in that variable (`our_bid`

).

`effects`

package in your code. Would you mind pointing it out? – Max Sep 10 '12 at 20:34