I'm using the statsmodel package to run a probit model, problem is that at 0 the model always predicts 0.5. I followed directions I found online to add a constant array into my input data using statsmodels.api.add_constant(), but then doing model.fit().predict() returns errors, does anybody know what I might be doing wrong?

x is a vector containing my input data and y is my response vector.

I also use sm for statsmodels.api and p for probit

```
X=sm.add_constant(x)
model=p(y,X).fit()
```

I then run model.predict(sm.add_constant(.5)) and I get

```
ValueError: shapes (1,1) and (2,) not aligned: 1 (dim 1) != 2 (dim 0)
```

`x`

for`predict(x)`

?`sm.add_constant(.5)`

separately from predict. My guess is that it cannot take a scalar value, i.e. try`sm.add_constant([[.5]])`

`add_constant`

or in`predict`