Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# minimax algorithm returning different value with alpha beta pruning

I am writing Minimax algorithm for Chess.

I get different final result values for minimax with out alpha beta pruning and minimax with alpha beta pruning.

My pseudo code is below. Can anyone help me?

miniMax()

``````public int miniMax(int depth, Board b, boolean maxPlayer) {
if(depth == 0)
return evaluateBoard(b);
if(maxPlayer) {
int bestMoveVal = 0;
for( each Max player's moves) {
// make a move on a temp board
int eval = miniMax(depth - 1, tempBoard, false);
bestMoveVal = Math.max(bestMoveVal, eval);
}
return bestMoveVal;
}
else {
int bestMoveVal = 0;
for (each Min player's moves) {
// make a move on a temp board.
int eval = miniMax(depth - 1, tempBoard, true);
bestMoveVal = Math.max(bestMoveVal, eval);
}
return bestMoveVal;
}
}
``````

alphabeta()

``````public int alphabeta(int depth, Board b, int alpha, int beta, boolean maxPlayer) {
if(depth == 0)
return evaluateBoard(b);
if(maxPlayer) {
for(each max player's moves) {
// make a move on a temp board
int eval = alphabeta(depth - 1, temp, alpha, beta, false);
alpha = Math.max(alpha, eval);
if(beta <= alpha) //beta cut off;
break;
}
return alpha;
}
else {
for(each of min's moves) {
// make a move on a temp board
int eval = alphabeta(depth - 1, temp, alpha, beta, false);
beta = Math.min(beta, eval);
if(beta <= alpha)
break; // alpha cut off;
}
return beta;
}
}
``````

Board represents a the board. For every move, I make the move on a copy of the passed Board object and then pass this temporary Board onto to further calls.

evaluateBoard(Board b) takes in a Board and calculates a score based on the given Board scenario.

-
in minimax the min player should call the min function. – perreal Jul 19 '14 at 2:54

An big problem in your code is that `alphabeta` is not recursive, as it should be. It calls `miniMax`.
The recursive calls in `alphabeta` should call `alphabeta`, otherwise it is fundamentally wrong. That is to say, the alpha-beta pruning is applied at each depth level, not only the top level.
In the `minMax` function you have `bestMoveVal = Math.max(bestMoveVal, eval);` for both the minimizing and maximizing player.