I'm by no means an expert in OLAP, but just off the top of my head I can see some pretty fundamental roadblocks to creating this estimate. In particular, knowing the row counts and cardinalities of the dimension tables in isolation isn't nearly as important as the relationships between them.
Example: Imagine two low-cardinality dimensions with
m unique values respectively. Caching OLAP aggregates over the dimensions could produce anywhere from
n + m values to
n * m values depending on how closely the relationship between the dimensions resembles a pure bijection. Given just the information you provided, I'm pretty sure all you can safely say is that you'll end up with fewer than
3.64 * 10^34 values. This is obviously not very useful.
I'm pessimistic that you would be able to create any general algorithm that provides estimates efficiently enough that it wouldn't make more sense to just generate the cube and weigh it when you're done. I can think of theoretical methods you could apply if you had bitmap indices of all of your dimensions, but 1) you probably don't and 2) the implementation would be an adventure, and one that's more advanced than I can comfortably help you with.