# Design of Evaluation function for Alpha beta pruning [closed]

I am designing a game of chess and the AI behind it implementing a search tree with alpha-beta pruning. I have a difficulty in designing the evaluation function for the game.

How does one go about designing an evaluation function for ANY sort of game?

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## closed as not a real question by jusio, djechlin, Fahim Parkar, evilone, ppeterkaDec 1 '12 at 8:27

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center. If this question can be reworded to fit the rules in the help center, please edit the question.

smells like homework. usually best to include this in your question lest people frown upon you. also, you have to show that you've given this at least some effort ;) –  Mark Dec 1 '12 at 5:51

One popular strategy for constructing evaluation functions is as a weighted sum of various factors that are thought to influence the value of a position. For instance, an evaluation function for chess might take the form

``````c1 * material + c2 * mobility + c3 * king safety + c4 * center control + ...
``````

Such as

``````f(P) = 200(K-K') + 9(Q-Q') + 5(R-R') + 3(B-B'+N-N') + (P-P') - 0.5(D-D'+S-S'+I-I') + 0.1(M-M') + ...
``````

in which:

``````K, Q, R, B, N, P are the number of white kings, queens, rooks, bishops, knights and pawns on the board.
D, S, I are doubled, backward and isolated white pawns.
M represents white mobility (measured, say, as the number of legal moves available to White).
``````

source

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