Suppose I have an interval (a,b), and a number of subintervals {(a_{i},b_{i})}_{i} whose union is all of (a,b). Is there an efficient way to choose a minimalcardinality subset of these subintervals which still covers (a,b)?

A greedy algorithm starting at a or b always gives the optimal solution. Proof: consider the set S_{a} of all the subintervals covering a. Clearly, one of them has to belong to the optimal solution. If we replace it with a subinterval (a_{max},b_{max}) from S_{a} whose right endpoint b_{max} is maximal in S_{a} (reaches furthest to the right), the remaining uncovered interval (b_{max},b) will be a subset of the remaining interval from the optimal solution, so it can be covered with no more subintervals than the analogous uncovered interval from the optimal solution. Therefore, a solution constructed from (a_{max},b_{max}) and the optimal solution for the remaining interval (b_{max},b) will also be optimal. So, just start at a and iteratively pick the interval reaching furthest right (and covering the end of previous interval), repeat until you hit b. I believe that picking the next interval can be done in log(n) if you store the intervals in an augmented interval tree. 


Sounds like dynamic programming. Here's an illustration of the algorithm (assume intervals are in a list sorted by ending time):
But it should also involve caching (memoisation). 


You mean so that the subintervals still overlap in such a way that (a,b) remains completely covered at all points? Maybe splitting up the subintervals themselves into basic blocks associated with where they came from, so you can list options for each basic block interval accounting for other regions covered by the subinterval also. Then you can use a search based on each subsubinterval and at least be sure no gaps are left. Could eliminate any collection of intervals that are entirely covered by another set of smaller number and work the problem after the preprocessing. Found a link to a journal but couldn't read it. :( This would be a hitting set problem and be NP_hard in general. 


There are two cases to consider: Case 1: There are no overlapping intervals after the finish time of an interval. In this case, pick the next interval with the smallest starting time and the longest finishing time. (amin, bmax). Case 2: There are 1 or more overlapping intervals with the last interval you're looking at. In this case, the start time doesn't matter because you've already covered that. So optimize for the finishing time. (a, bmax). Case 1 always picks the first interval as the first interval in the optimal set as well (the proof is the same as what @RafalDowgrid provided). 

