好的,所以我为机器人编写了以下代理来玩井字游戏。我使用了传统的极小极大算法而没有修剪。问题是它非常适合 3x3 板。
但是当我在 4x4 板上运行它时,它会卡住计算。我不明白为什么。我正在向代理传递一个 numpy 数组perspectiveState,其中 0 表示空,1 表示代理移动,-1 表示对手移动。它返回其下一步 (1) 的位置。
控制流从turn()调用minimax()函数的函数开始。
我在这里做错了什么?
class MiniMaxAgent:
def isMovesLeft(self, perspectiveState):
size = perspectiveState.shape[0]
#print('!!', np.abs(perspectiveState).sum())
if np.abs(perspectiveState).sum() == size*size:
return False
return True
def evaluate(self, perspectiveState):
size = perspectiveState.shape[0]
rsum = perspectiveState.sum(axis=0)
csum = perspectiveState.sum(axis=1)
diagSum = perspectiveState.trace()
antiDiagSum = np.fliplr(perspectiveState).trace()
if size in rsum or size in csum or size == diagSum or size == antiDiagSum:
return 10
if -1*size in rsum or -1*size in csum or -1*size == diagSum or -1*size == antiDiagSum:
return -10
return 0
def minimax(self, perspectiveState, isMax):
score = self.evaluate(perspectiveState)
if score == 10:
return score
if score == -10:
return score
if not self.isMovesLeft(perspectiveState):
return 0
if isMax:
best = -1000
for i in range(perspectiveState.shape[0]):
for j in range(perspectiveState.shape[0]):
if perspectiveState[i,j]==0:
perspectiveState[i,j] = 1
#print('@', isMax)
best = max(best, self.minimax(perspectiveState, not isMax))
perspectiveState[i,j] = 0
#print('#', best)
return best
else:
best = 1000;
for i in range(perspectiveState.shape[0]):
for j in range(perspectiveState.shape[0]):
if perspectiveState[i,j]==0:
perspectiveState[i,j] = -1
#print('@', isMax)
best = min(best, self.minimax(perspectiveState, not isMax))
perspectiveState[i,j] = 0
#print('#', best)
return best
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