Basically I have a problem that goes something similar to this:
There is a garden of strawberry plants represented by a 2D, square array. Each plant(each element) has a number of strawberries. You start at the top left corner of the array, and you can only move to the right or down. I need to design a recursive method to calculate the paths through the garden and then output which one yields the most strawberries.
I think I have an understanding of really really simple recursion problems, but this problem has gone way over my head. I’m not really sure where to start or where to go as far as creating a recursive method.
Any help related to the code or helping me understand the concept behind this problem is greatly appreciated. Thanks.
Like dasblinkenlight said, the most efficient way to do this is using a memoization or dynamic programming technique. I tend to prefer dynamic programming, but I’ll use pure recursion here.
The answer centers around the answer to one fundamental question: “If I’m in the square in row r and column c on my field, how can I evaluate the path from the top left to here such that the number of strawberries is maximized?”
The key to realize is that there’s only two ways to get in the plot in row r and column c: either I can get there from above, using the plot in row r-1 and column c, or I can get there from the side, using the plot in row r and column c-1. After that, you just need to make sure you know your base cases…which means, fundamentally, my purely recursive version would be something like:
Call max(r-1, c-1) to get your answer. Notice there’s a lot of inefficiency here; you’ll do much better by using dynamic programming (which I’ll provide below) or memoization (which has already been defined). The thing to remember, though, is that both the DP and memoization techniques are simply more efficient ways that come from the recursive principles used here.
DP:
In both cases, if you want to recreate the actual path, just keep a 2D table of booleans that corresponds with “Did I come from above or to the left”? If the most strawberry path comes from above, put true, otherwise put false. That can allow you to retrace the patch after the calculation.
Notice that this is still recursive in principal: at each step, we’re looking back at our previous results. We just happen to be caching our previous results so we don’t waste a bunch of work, and we’re attacking the subproblems in an intelligent order so that we can always solve them. For more on dynamic programming, see Wikipedia.