the best approach is to use a "spatially enabled" data structure to store the list of locations to test. the distance in itself is computed using well-known formulas documented everywhere on the net (great circle distance, geographical distance, vincenty's formulae...)

the easiest such structure is the kd-tree: it allows to store a set of coordinates and to quickly find the nearest point to a given location. the structure is easy to grasp, the operations are quite easy to program (you may even find a library which does all this), and it is fast enough for mobile needs.

other than a kd-tree, your problem resolve to a nearest-neighbor search, which is well documented on wikipedia. you will find there plenty of data structures to store your locations, and to search for the nearest location.

in any case, do NOT perform a full-search (comparing your current location to the whole set of stored locations). the time complexity of such an algorithm depends heavily on the number of location you test, the less comparison you make, the faster you find a solution. a full-search involves too many comparison, and if the number of location is too high compared to the procesing power of your device, you will make a mobile device crawl down to a halt before finding the nearest location.