Is this problem np-complete?

Say there is a line of x bins filled with trinkets (random amount), in plain-sight (you can see how many trinkets there are in each bin). Now there are two players who can when it's their turn pick a bin from either end. They cannot forgo a turn. Come up with a strategy for a player to get the maximum amount of trinkets.

x is even.

Is this a np-complete problem? Is it similar to boolean SAT?

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Do you really want to create a strategy, that can compete against arbitrary opponents or do you want to create for a given trinket line the sequence of moves (of player one and player two), such that player one gets the maximum possible amount of trinkets? –  phimuemue Jun 25 '10 at 9:08
@phimuemue - Essentially if I were player1, what is the strategy I need to follow to win. Given player 2 does any sort of move. Most likely though he will playing to his advantage as well. I think you need to enumerate all the possible paths and find the reward of that path. And the player just keeps taking that path. –  user376070 Jun 25 '10 at 9:31
It's not really meaningful to ask if a game (in the game-theoretic sense, which this is) is NP-complete. You can ask if a particular strategy is NP-complete, though. –  Nick Johnson Jun 25 '10 at 9:41
It is also meaniningful to ask if a game is NP-Complete. It could mean: given a state of the game, can you decide in polynomial time if the first player surely wins/there is a draw etc and what should the move be which maximizes your chances of winning. I believe people talk about games being NP-Complete all the time. –  Aryabhatta Jun 25 '10 at 13:15

It is very simple problem, and it is not NP complete. Here is short description of algorithm, it is based on dynamic programming.

Can[i] - array which stores number of trinkets.
F[i,j] - array determining what is best move if only cans from i to j are avaible. 0 means take from the left side, 1 means take from the right side.
G[i,j] - array where 'goodness' of move is stored.

``````for (i=1 to n) F[i,i] = 0
for (i=1 to n) G[i,i] = Can[i]

for (i=1 to n-1)
for (j=1 to n-i)
tmp1 = Can[j] - G[j+1,j+i]
tmp2 = Can[j+i] - G[j,j+i-1]
if (tmp1>tmp2)
{
F[j,j+i] = 0;
G[j,j+i] = tmp1;
}
else
{
F[j,j+1] = 1;
G[j,j+i] = tmp2;
}
``````

Sorry for lack of comments, but if you read some articles about dynamic programming You will get it without any problem.

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No, it's easily solvable with dynamic programming in `O(x^2)`. Look at problem 10 here.

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This problem seems to be perfect for alpha-beta-pruning, as it's easy to derive a lower bound for your points. Assume the player faces an even number of bins. Then he can play in a way either to get all bins on even or all on odd positions:

Say we have 1 0 1 0 1 0, then he can take the 1 on the left, and whatever the opponent does, he just keeps picking up the 1's.

So an easy to calculate lower bound is the maximum of the sum of all bins on even positions and the sum of all bins on odd positions.

For the "odd" player you can just take the sum of the (length+1)/2 smallest values, which is not as good as the bound for the "even" player, but as well easy to calculate.

I think with these bounds the search tree will be sparse for practical applications (I guess you can always find "pathological" counter-examples for this type of problem, though) so the solution should be quite fast.

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