# Ideas for optimization algorithm for Fantasy Football

So, this is a bit different than standard fantasy football. What I have is a list of players, their average "points per game" (PPG) and their salary. I want to maximize points per game under the constraint that my team does not exceed a salary cap. A team consists of 1 QB, 1 TE, 3 WRs, and 2 RBs. So, if we have 15 of each position we have 15X15 X(15 c 3)X(15 c 2) = 10749375 possible teams.

Pretty computationally complex. I can use a bit of branch and bound i.e. once a team has surpassed the salary cap I can trim the tree, but even with that the algorithm is still pretty slow. I tried another option where I used a "genetic algorithm" i.e. made 10 random teams, picked the best one and "mutated" it (randomly changing some of the players) into another 10 teams and then picked of those and then looped through a bunch of times until the points per game of the "best team" stopped getting better.

There must be a better way to do this. I'm not a computer scientist and I've only taken an intro course in algorithmics. Programmers - what are your thoughts? I have a feeling that some sort of application of dynamic programming could help.

Thanks

-
I did this last year for the EPL (based on previous seasons performance) and it still didn't help me win, but did throw up some options I didn't expect. Will hunt out my code. –  nzcoops Sep 29 '11 at 3:41
10 million possible combinations isn't that much these days. :) –  Hong Ooi Sep 29 '11 at 4:08
I can't message you, go to my page and ping me an email and I'll send you an example of something I did. –  nzcoops Sep 29 '11 at 4:57

I think a genetic algorithm, intelligently implemented, will yield an acceptable result for you. You might want to use a metric like points per salary dollar rather than straight PPG to decide the best team. This way you are inherently measuring value added. Also, you should consider running the full algorithm/mutation to satisfactory completion numerous times so that you can identity what players consistently show up in the final outcomes. These players then should be valued above others.

Of course the problem with the genetc approach Is that you need a good mutation algorithm and that is highly personal for how you want to implement it.

-

Look up integer programming on the Optimization Task View.

-

Take i as the current number of players out of n players and j to be the current remaining salary that is left. Take m[i, j] to be the dynamic set of solutions.

``````Then m[i, 0] = 0, m[0, j] = 0
and

m[i, j] = m[i - 1, j] if salary for player i is greater than j

else

m[i, j] = max ( m[i - 1, j], m[i - 1, j - salary of player i] + PPG of player i)
``````

Sorry that I don't know R but I'm good with algorithms so I hope this helps.

A further optimization you can make is that you really only need 2 rows of m[i, j] because the DP solution only uses the current row and the last row (you can save memory this way)

-