I recently switched to R, and I love it. But one of the things I miss the most is being able to generate predicted model responses holding certain variables at preset levels (the mean, 90th percentile, etc). This comes in enormously handy when trying to discern the effect of interaction terms, transformed variables, etc.

I can do this easily in Stata using the `adjust`

command. I've tried and tried to figure out how to do it in R, but one of the big pitfalls of using a language named R (for which there is also a statistic R) and searching for terms like "Adjust" are that I can only seem to find hits on adjusted R squared. It's beyond frustrating.

So, at the risk of asking a really easy question, does anyone know how to do this? I've looked into predictive margins, and that seems like at least a related type of method, but its implementation usually involves standardizing the explanatory variables in some way.