I am currenlty computing `glm`

models off a huge data data set. Both `glm`

and even `speedglm`

take days to compute.

I currently have around 3M observations and altogether 400 variables, only some of which are used for the regression. In my regression I use 4 integer independent variables (`iv1`

, `iv2`

, `iv3`

, `iv4`

), 1 binary independent variable as factor (`iv5`

), the interaction term (`x * y`

, where `x`

is an integer and `y`

is a binary dummy variable as factor). Finally, I have fixed effects along years `ff1`

and company ids `ff2`

. I have 15 years and 3000 conmpanies. I have introduced the fixed effects by adding them as factors. I observe that especially the 3000 company fixed effects make the computation very slow in `stats`

`glm`

and also `speedglm`

.

I therefore decided to try Microsoft R's `rxGlm`

(RevoScaleR), as this can address more threads and processor cores. Indeed, the speed of analysis is a lot faster. Also, I compared the results for a sub-sample to the one of standard `glm`

and they matched.

I used the following function:

```
mod1 <- rxGlm(formula = dv ~
iv1 + iv2 + iv3+
iv4 + iv5 +
x * y +
ff1 + ff2,
family = binomial(link = "probit"), data = dat,
dropFirst = TRUE, dropMain = FALSE, covCoef = TRUE, cube = FALSE)
```

However, I am facing a problem when trying to plot the interaction term using the `effects`

package. Upon calling the following function, I am receiving the following error:

```
> plot(effect("x*y", mod1))
Error in terms.default(model) : no terms component nor attribute
```

I assume the problem is that `rxGlm`

does not store the data needed to plot the interaction. I believe so because the `rxGlm`

object is a lot smaller than the `glm`

oject, hence likely containing less data (80 MB vs several GB).

I now tried to convert the `rxGlm`

object to `glm`

via `as.glm()`

. Still, the `effects()`

call does not yield a result and results in the following error messages:

```
Error in dnorm(eta) :
Non-numerical argument for mathematical function
In addition: Warning messages:
1: In model.matrix.default(mod, data = list(dv = c(1L, 2L, :
variable 'x for y' is absent, its contrast will be ignored
```

If I now compare an original glm to the "converted glm", I find that the converted glm contains a lot less items. E.g., it does not contain `effects`

and for contrasts it states only `contr.treatment`

for each variable.

I am now looking primarily for a way to transpose the `rxGlm`

output object in a format so I can use if with the `effect()`

function. If there is no way to do so, how can I get an interaction plot using functions within the `RevoScaleR`

package, e.g., `rxLinePlot()`

? `rxLinePlot()`

also plots reasonably quick, however, I have not yet found a way how to get typical interaction effect plots out of it. I want to avoid first calculating the full `glm`

model and then plot because this takes very long.