ProbCut

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ProbCut, a selective search enhancement of the alpha-beta algorithm created in 1994 by Michael Buro as introduced in his Ph.D. thesis. It permits to exclude probably irrelevant subtrees from beeing searched deeply. ProbCut and its improved variant Multi–ProbCut (MPC) have been shown to be effective in Othello and Shogi, and a technique similar to ProbCut is used in the checkers program Chinook. Schaeffer et al. (1992) described their approach in a footnode: Chinook performs forward cuts in positions with a material deficit, where a shallow search does not show an escape. ProbCut is a generalization of this method in that it is game independent. It was tested by incorporating it in Buro's already strong Othello program Logistello and increased the program's playing strength. Despite some promising results reported by Albert Xin Jiang and Michael Buro with Crafty, it seemed not that successful in chess programs which already perform Null Move Pruning and Late Move Reductions, until Stockfish prooved otherwise as implemened by Gary Linscott.

=The Idea= ProbCut is based on the idea that the result v of a shallow search with depth d is a rough estimate of the result v of a deeper search with depth d > d'. A way to model this relationship is by means of a linear model: v = a*v' + b + e where e is a normally distributed error variable with mean 0 and standard deviation σ (sigma) or variance σ². If the evaluation function is relative stable, the slope a is about 1.0, offset b about 0.0 and a small variance σ². The cutoff condition of depth d v ≥ β becomes (v' + b - β)/σ ≥ -e/σ since -e/σ is normally distributed with mean 0 and variance 1 (and distribution function Φ, phi), the condition holds true with probability of at least p iff (v' + b - β)/σ ≥ Φ -1 (p) which is equivalent to v' ≥ (Φ -1 (p) * σ + β - b) / a

Similar for v ≤ α the condition becomes v' ≤ (-Φ -1 (p) * σ + α - b) / a

=Pseudo Code= This observation immediately leads to the implementation of the ProbCut alpha-beta extension for one depth and reduced depth pair using floats. Before sigma, a and b are estimated by linear regression likely for different game phases, the search depths d and d' < d and cut threshold must be chosen or be determined empirically, by checking the performance of the program with various parameter settings.

int alphaBetaProbCut(int α, int β, int depth) { const float T(1.5); const int DP(4); const int D(8);

if ( depth == 0 ) return evaluate;

if ( depth == D ) { int bound;

/* v >= β with prob. of at least p? yes => cutoff */ bound = round( ( T * σ + β - b) / a ); if ( alphaBetaProbCut( bound-1, bound, DP) >= bound ) return β;

/* v <= α with prob. of at least p? yes => cutoff */ bound = round( (-T * σ + α - b) / a ); if ( alphaBetaProbCut( bound, bound+1, DP) <= bound ) return α; }  /* the remainder of alpha-beta goes here */ ... } =Multi–ProbCut= Multi–ProbCut (MPC) enhances ProbCut by
 * Allowing different regression parameters and cut thresholds for different stages of the game
 * Using more than one depth pair
 * Using internal iterative deepening for shallow searches

struct Param { int d;        /* shallow search depth */ float t;      /* cut threshold */ float a, b, σ; /* slope, offset, standard deviation */ } param[MAX_STAGE+1][MAX_HEIGHT+1][NUM_TRY];

int alphaBetaMPC(int α, int β, int depth) {  if ( depth == 0 ) return evaluate;

if ( depth <= MAX_D ) { for (int i=0; i < NUM_TRY; i++) { int bound; const Param &pa = param[stage][depth][i];

if (pa.d < 0 ) break; /* no more parameters available */

/* v >= β with prob. of at least p? yes => cutoff */ bound = round( ( pa.t * pa.σ + β - pa.b) / pa.a ); if ( alphaBetaMPC( bound-1, bound, pa.d) >= bound ) return β;

/* v <= α with prob. of at least p? yes => cutoff */ bound = round( (-pa.t * pa.σ + α - pa.b) / pa.a ); if ( alphaBetaMPC( bound, bound+1, pa.d) <= bound ) return α; }  }   /* the remainder of alpha-beta goes here */ ... }

=ProbeCut or MPC in Chess= In 2003, Albert Xin Jiang implemented ProbCut and MPC in Crafty by Robert Hyatt. In his thesis he introductory elaborates on ProbCut in Chess : There has been no report of success for ProbCut or MPC in chess thus far. There are at least two reasons for this:

In his research, Albert Xin Jiang further determined following parameters by linear regression. The about 2700 positions were chosen randomly from some computer chess tournament games and some of Crafty’s games against human grandmasters on internet chess servers: v' versus v for depth pair (4,8)

Linear regression results. The evaluation function’s scale is 100 = one pawn. r is the regression correlation coefficient, a measure of how good the data fits the linear model:

While ProbCut did not result in better playing strength of Crafty, Albert Xin Jiang and Michael Buro report an improvement with MPC while playing two times three 64-game matches with three Crafty versions and two time controls versus Dieter Bürssner's program Yace :

However, Robert Hyatt first stated results were inconclusive, and later that MPC was somewhat worse in every test he tried , also confirmed by Robert Allgeuer, who performed Crafty MPC tests with following conclusion in CCC : My tests indicate that the overall playing strength of Crafty 18.15 remains more or less unchanged by the addition of Multi-ProbCut. However, the characteristic of the engine changes significantly due to ProbCut: Even though nominal search depth is increased by one to two plies, tactical strength is severely reduced.

Furthermore with ProbCut match results become more unpredictable and inconsistent: Apparently there are types of opponents against which ProbCut works very well and results in significantly improved results, but there are also other opponents (the tactically stronger ones?) where ProbCut has exactly the opposite effect.

=See also=
 * Enhanced Forward Pruning
 * Futility Pruning
 * Late Move Reductions
 * Match Statistics
 * Multi-Cut
 * Null Move Pruning

=Publications=
 * Michael Buro (1994). Techniken für die Bewertung von Spielsituationen anhand von Beispielen. Ph.D. Thesis. Paderborn University, Paderborn, Germany. (German), pdf
 * Michael Buro (1995). ProbCut: An Effective Selective Extension of the Alpha-Beta Algorithm. ICCA Journal, Vol. 18, No. 2, pp. 71-76, pdf
 * Michael Buro (1997). Experiments with Multi-ProbCut and a New High-quality Evaluation Function for Othello. Technical Report No. 96, NEC Research Institute, Princeton, N.J. pdf
 * Michael Buro (2000). Experiments with Multi-ProbCut and a new High-Quality Evaluation Function for Othello. Games in AI Research (eds. Jaap van den Herik and Hiroyuki Iida), pp. 77-96. Universiteit Maastricht, Maastricht, The Netherlands. ISBN 90-621-6416-1.
 * Kazutomo Shibahara, Nobuo Inui, Yoshiyuki Kotani (2002). Effect of ProbCut in Shogi - by changing parameters according to position category. 7th Game Programming Workshop
 * Michael Buro (2002). Multi-ProbCut Search. slides as pdf
 * Albert Xin Jiang (2003). Implementation of Multi-ProbCut in Chess. CPSC 449 Thesis, pdf
 * Albert Xin Jiang, Michael Buro (2003). First Experimental Results of ProbCut Applied to Chess. Advances in Computer Games 10, pdf
 * Maarten Schadd, Mark Winands, Jos Uiterwijk (2009). ChanceProbCut: Forward Pruning in Chance Nodes. in IEEE Symposium on Computational Intelligence and Games (CIG 2009), pdf

=Forum Posts=
 * whats probcut? by vitor, CCC, August 29, 1999
 * muliti probcut by Martin Fierz, CCC, July 04, 2001
 * Multi-ProbCut and Crafty : does it work ? by Frédéric Louguet, CCC, June 28, 2003
 * Crafty MPC tests (long post) by Robert Allgeuer, CCC, October 18, 2003
 * ProbCut: An Effective Selective Extension of the Alpha-Beta Algorithm by Albert Silver, CCC, July 21, 2004
 * Re: Possible search improvment by Ryan Benitez, CCC, June 17, 2009 » History Leaf Pruning
 * Bad Pruning by Onno Garms, CCC, March 13, 2011
 * Probcut by Gary, CCC, May 24, 2013 » Stockfish

=External Links=
 * Writing an Othello program by Gunnar Andersson
 * SmartGame Library: SgProbCut.h File Reference, Fuego Documentation

=References=

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