# Conversion of minimax with alpha beta pruning to negamax

I've written a minimax algorithm with alpha beta pruning for the game Checkers, and now I'm trying to rewrite it using the negamax approach. I'm expecting the two to be equivalent, since negamax is just a technique to write the minimax. But for some reason my two algorithms behave differently. When I run them both on the same input, the negamax version seems to evaluate more states, so I think something must be wrong with the alpha beta pruning.

The code below shows both algorithms (`minimax` and `negamax` functions), and at the bottom the `play` function from which I call them. The `evaluate` function is the basic heuristic which I use to evaluate states in both algorithms.

Any help with spotting the error would be much appriciated.

``````#include "player.hpp"
#include <algorithm>
#include <limits>
#include <cstdlib>

namespace checkers
{

int evaluatedStates = 0;

int evaluate(const GameState &state)
{
// FIXME: Improve heuristics.
int redScore = 0;
int whiteScore = 0;
int piece = 0;
for (int i = 1; i <= 32; ++i)
{
piece = state.at(i);
if (piece & CELL_RED) {
++redScore;
if (piece & CELL_KING)
redScore += 2;   // King bonus.
} else if (piece & CELL_WHITE) {
++whiteScore;
if (piece & CELL_KING)
whiteScore += 2; // King bonus.
}
}
return state.getNextPlayer() == CELL_RED ? whiteScore - redScore : redScore - whiteScore;
}

int minimax(const GameState &state, int depth, int a, int b, bool max)
{
if (depth == 0 || state.isEOG()) {
++evaluatedStates;
return evaluate(state);
}
std::vector<GameState> possibleMoves;
state.findPossibleMoves(possibleMoves);
if (max) {
for (const GameState &move : possibleMoves) {
a = std::max(a, minimax(move, depth - 1, a, b, false));
if (b <= a)
return b; // β cutoff.
}
return a;
} else {
for (const GameState &move : possibleMoves) {
b = std::min(b, minimax(move, depth - 1, a, b, true));
if (b <= a)
return a; // α cutoff.
}
return b;
}
}

int negamax(const GameState &state, int depth, int a, int b)
{
if (depth == 0 || state.isEOG()) {
++evaluatedStates;
return evaluate(state);
}
std::vector<GameState> possibleMoves;
state.findPossibleMoves(possibleMoves);
for (const GameState &move : possibleMoves) {
a = std::max(a, -negamax(move, depth - 1, -b, -a));
if (b <= a)
return b; // β cutoff.
}
return a;
}

GameState Player::play(const GameState &pState, const Deadline &pDue)
{
GameState bestMove(pState, Move());

std::vector<GameState> possibleMoves;
pState.findPossibleMoves(possibleMoves);

int a = -std::numeric_limits<int>::max();
int b = std::numeric_limits<int>::max();
for (const GameState &move : possibleMoves) {
int v = negamax(move, 10, a, b);
//int v = minimax(move, 10, a, b, false);
if (v > a) {
a = v;
bestMove = move;
}
}
std::cerr << "Evaluated states: " << evaluatedStates << std::endl;
return bestMove;
}

/*namespace checkers*/ }
``````
-

## 1 Answer

Your `minimax()` and `negamax()` functions are correct. I assume that `state.getNextPlayer()` returns the player who has to move next. That means that your `evaluate()` and `negamax()` functions return a score from the perspective of that player.

However, the `minimax()` returns a score from the perspective of `max`. So if you try uncommenting `minimax()` in your `play()` function, that would lead to a bug

``````//int v = negamax(move, 10, a, b);
int v = minimax(move, 10, a, b, false); // assumes perspective of min player
^^^^^

if (v > a) {                            // assumes perspective of max player
a = v;
bestMove = move;
}
``````

Replacing the call to `minimax()` with a `true` parameter should solve it:

``````int v = minimax(move, 10, a, b, true); // assumes perspective of max player
``````
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Spot on. That was it. Thanks a lot, and your assumption about getNextPlayer() was correct. –  estan Sep 15 '13 at 21:14
glad to have been of help for a fellow checkers programmer :-) –  TemplateRex Sep 15 '13 at 21:15
btw, I think it would be slightly better to name it `playerToMoveNext()` –  TemplateRex Sep 16 '13 at 6:39