Since time is important factor in gaming searching this game space is highly undesirable
Imperfect Decisions
Why is it Imperfect?
Many game produce very large search trees.
Without knowledge of the terminal states the program is taking a guess as to which path to take.
Cutoffs must be implemented due to time restrictions, either buy computer or game situations.
Evaluation Functions
A function that returns an estimate of the expected utility of the game from a given position.
Given the present situation give an estimate as to the value of the next move.
The performance of a game-playing program is dependant on the quality of the evaluation functions.
How to Judge Quality
Evaluation functions must agree with the utility functions on the terminal states.
It must not take too long ( trade off between accuracy and time cost).
Should reflect actual chance of winning.
Design
Different evaluation functions must depend on the nature of the game.
Encode the quality of a position in a number that is representable within the framework of the given language.
Design a heuristic for value to the given position of any object in the game.
Different Types
Material Advantage Evaluation Functions
Values of the pieces are judge independent of other pieces on the board. A value is returned base on the material value of the computer minus the material value of the player.
Chess : Material Value – each piece on the board is worth some value ( Pawn = , Knights = 3 …etc) www.imsa.edu/~stendahl/comp/txt/gnuchess.txt
Othello : Value given to # of certain color on the board and # of colors that will be converted lglwww.epfl.ch/~wolf/java/html/Othello-desc.html
Different Types
Use probability of winning as the value to return.
If A has a 100% chance of winning then its value to return is 1.00
Cutoff Search
Cutting of searches at a fixed depth dependant on time
The deeper the search the more information is available to the program the more accurate the evaluation functions
Iterative deepening – when time runs out return the program returns the deepest completed search.
Is searching a node deeper better than searching more nodes?
Consequences
Evaluation function might return an incorrect value.
If the search in cutoff and the next move results involves a capture then the value that is return maybe incorrect.
Horizon problem
Moves that are pushed deeper into the search trees may result in an oversight by the evaluation function.
Improvements to Cutoff
Evaluation functions should only be applied to quiescent position.
Quiescent Position : Position that are unlikely to exhibit wild swings in value in the near future.
Non quiescent position should be expanded until on is reached. This extra search is called a Quiescence search.
Will provide more information about that one node in the search tree but may result in the lose of information about the other nodes.
Alpha-Beta Pruning
Pruning
What is pruning?
The process of eliminating a branch of the search tree from consideration without examining it.
Why prune?
To eliminate searching nodes that are potentially unreachable.
To speedup the search process.
Alpha-Beta Pruning
A particular technique to find the optimal solution according to a limited depth search using evaluation functions.
Returns the same choice as minimax cutoff decisions, but examines fewer nodes.
Gets its name from the two variables that are passed along during the search which restrict the set of possible solutions.
Definitions
Alpha – the value of the best choice so far along the path for MAX.
Beta – the value of the best choice (lowest value) so far along the path for MIN.
Implementation
Set root node alpha to negative infinity and beta to positive infinity.
Search depth first, propagating alpha and beta values down to all nodes visited until reaching desired depth.
Apply evaluation function to get the utility of this node.
If parent of this node is a MAX node, and the utility calculated is greater than parents current alpha value, replace this alpha value with this utility.
Implementation (Cont’d)
If parent of this node is a MIN node, and the utility calculated is less than parents current beta value, replace this beta value with this utility.
Based on these updated values, it compares the alpha and beta values of this parent node to determine whether to look at any more children or to backtrack up the tree.
Continue the depth first search in this way until all potentially better paths have been evaluated.
Example: Depth = 4
Effectiveness
The effectiveness depends on the order in which the search progresses.
If b is the branching factor and d is the depth of the search, the best case for alpha-beta is O(bd/2), compared to the best case of minimax which is O(bd).
Problems
If there is only one legal move, this algorithm will still generate an entire search tree.
Designed to identify a “best” move, not to differentiate between other moves.
Overlooks moves that forfeit something early for a better position later.
Evaluation of utility usually not exact.
Assumes opponent will always choose the best possible move.
Games that Include an Element of Chance
Chance Nodes
Many games that unpredictable outcomes caused by such actions as throwing a dice or randomizing a condition.
Such games must include chance nodes in addition to MIN and MAX nodes.
For each node, instead of a definite utility or evaluation, we can only calculate an expected value.
Inclusion of Chance Nodes
Calculating Expected Value
For the terminal nodes, we apply the utility function.
We can calculate the expected value of a MAX move by applying an expectimax value to each chance node at the same ply.
After calculating the expected value of a chance node, we can apply the normal minimax-value formula.
Expectimax Function
Provided we are at a chance node preceding MAX’s turn, we can calculate the expected utility for MAX as follows:
Let di be a possible dice roll or random event, where P(di) represents the probability of that event occurring.
If we let S denote the set of legal positions generated by each dice roll, we have the expectimax function defined as follows:
expectimax(C) = ΣiP(di) maxs єS(utility(s))
Where the function maxs єS will return the move MAX will pick out of all the choices available.
Alternately, you can generate an expextimin function for chance nodes preceding MIN’s move.
Together they are called the expectiminimax function.
Application to an Example
Chance Nodes: Differences
For minimax, any order-preserving transformation of leaves do not affect the decision.
However, when chance nodes are introduced, only positive linear transformations will keep the same decision.
Complexity of Expectiminimax
Where minimax does O(bm), expectiminimax will take O(bmnm), where n is the number of distinct rolls.
The extra cost makes it unrealistic to look too far ahead.
How much this effects our ability to look ahead depends on how many random events that can occur (or possible dice rolls).
Wrapping Things Up
Things to Consider
Calculating optimal decisions are intractable in most cases, thus all algorithms must make some assumptions and approximations.
The standard approach based on minimax, evaluation functions, and alpha-beta pruning is just one way of doing things.
These search techniques do not reflect how humans actually play games.
Demonstrating A Problem
Given this two-ply tree, the minimax algorithm will select the right-most branch, since it forces a minimum value of no less than 100.
This relies on the assumption that 100, 101, and 102 are in fact actually better than 99.
Summary
We defined the game in terms of a search.
Discussion of two-player games given perfect information (minimax).
Using cut-off to meet time constraints.
Optimizations using alpha-beta pruning to arrive at the same conclusion as minimax would have.