Consider a graph of your elements R_{i}, with no edges. We now allow ourselves to add edges as follows:

- Add a directed edge between R
_{a}→R_{b}, annotated with the quotient R_{b}/R_{a}.

For example, we can draw an edge R_{1}→R_{3}, with a cost of multiplying by R_{1}/R_{3} = P3*P4/P1

Do this for all nodes, so you have |R|^{2} edges.

Now if you *only* used intermediate results, you could use a Minimum Spanning Tree algorithm to solve this. I believe the MST algorithms are very close to linear in the number of edges (a factor of Inverse Ackermann, grows slower than `log(log(log(...log(n)...)))`

); there may even be randomized linear time algorithms in the number of edges, e.g. http://www.akira.ruc.dk/~keld/teaching/algoritmedesign_f04/Artikler/07/Karger95.pdf Thus this basic algorithm will take |R|^{2} time.

However, you deprive yourself of truly optimal answers if you only use intermediate results, because it's possible to use "extemporary" expressions that we pull out of thin air to achieve better performance. For example you might consider this scenario:

```
R1 = {P2, P3, P4, P5}
R2 = {P1, P3, P4, P5}
R3 = {P1, P2, P4, P5}
R4 = {P1, P2, P3, P5}
R5 = {P1, P2, P3, P4}
```

The optimal solution is to calculate `P1*P2*P3*P4*P5`

, then divide by P_{i}, resulting in 9 operations. Whereas the above method would only do something like R1=P2*P3*P4*P5, then perform a multiplication and division each time to go R1→R2, R2→R3, R3→R4, R4→R5, resulting in 11 operations. (If we did not have division, we would also have 9 operations: b=P1*P2 c=b*P3 r5=c*P4 r4=c*P5, d=P4*P5, r3=b*d, e=P3*d, r1=e*P2, r2=e*P1. Though I think it would be possible to create situations where division was necessary, cannot seem to find one though; if I cannot find one, it might be the case that this is actually a simple polynomial-time problem.)

This method I will refer to as the "extemporary expression" method. If we choose to calculate an extemporary expression (a single sunk cost at the beginning), this will reduce the costs of all future calculations to traverse an edge *if we choose to use it* (because there might be a choice of how many extemporary expressions to use).

This brings us to a very minor sidenote:

```
Theorem:
You should have at least one intermediate expression of each
length up to the maximum size of any R.
Proof (induction):
To build up a product of size N, you will need to do
have a product of size N-1.
```

Noting this theorem, it turns out we were slightly wrong above. The optimal solution was to remember `P1*P2*P3`

and `P1*P2*P3*P4`

in the process of calculating `P1*P2*P3*P4*P5`

. Then we can get `R5`

for free (and `R4`

with just one multiplication via another means, unfortunately the same cost as before), reducing the total cost from 9 to 8. This leads us to a wild guess that performing http://en.wikipedia.org/wiki/Floyd%E2%80%93Warshall_algorithm with arbitrary edges might also yield the optimal solution, after a very long time.

Anyway, how do we incorporate such a system into our solution? We can't add a node, because that would mess up the MST algorithm. For each edge where multiply or dividing by the extemporary expression E would not make some P have more than a power p (e.g. for p=2 we allow intermediate extemporary expressions which create products like `P1 * P4^2 / P3`

but disallow something like `P2^3`

), we perform that multiplication and division on the edge, and create two new edges. (We might do this more than once, or at future dates.) We also do this for all subsets of the edge, which we'd memoize like above. The cost of this method, if you use the MST algorithm, is that the number of edges increases heavily, so maybe (|R| + #newedges)^{2} = (|R|^|P|)^{2} maybe in the worse case, significantly increasing the time it takes to find an optimal answer.

It thus seems like the more general problem is NP-hard, as a guess; please someone chime in if this is not the case. However you can perhaps use a heuristic for guessing useful extemporary expressions to use. For example, if you see a "large" subset of R with "a high density of common Ps", you might generate the tricknode that is the product of all the common Ps. If you do this for all "large/dense clumps of common Ps" you see among subsets of your Rs, then run the MST, you might get slightly better answers, without having to do the more general search. You could even run an algorithm to help detect such clumps, such as a hierarchical clustering algorithm.

(sidenote: You might also be able to apply math about lattices to this problem, since you can think of each set as a bit-vector, which together form the basis of a lattice.)