1 / 38

Switching Among Non-Weighting, Clause Weighting, and Variable Weighting in Local Search for SAT

Switching Among Non-Weighting, Clause Weighting, and Variable Weighting in Local Search for SAT. Wanxia Wei 1 , Chu Min Li 2 , and Harry Zhang 1 1 Faculty of Computer Science, University of New Brunswick, Canada 2 MIS, Universit'e de Picardie Jules Verne, France. Outline. Introduction

jonco
Download Presentation

Switching Among Non-Weighting, Clause Weighting, and Variable Weighting in Local Search for SAT

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Switching Among Non-Weighting, Clause Weighting, and Variable Weighting in Local Search for SAT Wanxia Wei1, Chu Min Li2, and Harry Zhang1 1 Faculty of Computer Science, University of New Brunswick, Canada 2 MIS, Universit'e de Picardie Jules Verne, France

  2. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  3. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  4. Intensification and Diversification • Intensification search strategies intend to improve solution quality [Hoos and Stűtzle 2004] • Diversification search strategies help achieve a reasonable coverage to avoid stagnation [Hoos and Stűtzle 2004]

  5. Non-weighting, Clause Weighting, and Variable weighting Local Search Algorithms • A non-weighting algorithm • not use any weighting and focuses on intensifying search • adaptG2WSATP[Li, Wei, and Zhang SAT 2007] adaptG2WSAT0 [Li, Wei, and Zhang 2007] adaptG2WSAT+ [Wei,Li, and Zhang 2007] • A clause weighting algorithm • uses clause weighting to diversify the search • Breakout [Morris AAAI 93] SAPS, RSAPS[Hutter, Tompkins, and Hoos CP 2002] gNovelty+ [Pham and Gretton 2007] • A variable weighting algorithm • uses variable weighting to diversify the search • VW [Prestwich SAT 2005]

  6. Single Local Search Algorithm or Heuristic • usually ineffective on many types of instance • allowing an algorithm to switch between heuristics • Unitwalk 0.98 [Hirsch and Kojevnikov AMAI 2005]: alternates between WalkSAT-like [Selman, Kautz, Cohen AAAI 94] and UnitWalk-like fragments of random walk • Hybrid[Wei,Li, and Zhang JSAT 2008]: switches between heuristicadaptG2WSATP and heuristicVW

  7. Weaknesses of Hybrid and RSAPS

  8. A New Switching Criterion • A new switching criterion • evenness or unevenness of distribution of clause weights • Another switching criterion • evenness or unevenness of distribution of variables weights [Wei,Li, and Zhang JSAT 2008] • A new local search algorithm NCVW • NCVW (Non-, Clause, and Variable Weighting) • switches among heuristic adaptG2WSAT+, heuristic RSAPS, and heuristic VWaccording to these two criteria

  9. Algorithm Heuristic Selection Problem • Work for NCVW • provides a solution to algorithm heuristic selection problem • SATZilla-2007 [Xu, Hutter, Hoos, and Leyton-Brown CP 2007] • per-instance solver portfolio for SAT • Difference between NCVW and SATZilla-2007 • NCVW chooses heuristics dynamically for an instance during search • SATzilla-2007 first chooses an algorithm for an instance and then runs this algorithm

  10. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  11. Algorithm adaptG2WSAT+ • combines use of promising decreasing variables [Li and Huang SAT 2005] and adaptive noise mechanism [Hoos AAAI 02]

  12. Algorithm RSAPS • uses clause weighting to help escape from local minima • scales weights of unsatisfied clauses and smoothes weights of all clauses probabilistically • modifies evaluation function

  13. Algorithm VW • uses variable weighting to guide local search out of local minima • weight of a variable • flip numbers of this variable • time when this variable is flipped • favors variables with lower variable weights

  14. Algorithm Hybrid • switches between heuristicadaptG2WSATPand heuristicVW according to evenness or unevenness of distribution of variable weights

  15. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  16. Clause Weighting • Local minimum • a subset of unsatisfied clauses • attractions for local search towards local minimum • A poorly diversified search in terms of clause weights • same local minima by same unsatisfied clauses with strong attractions • Purposes of clause weighting • quantify attraction of clause • modify evaluation function

  17. Two Hypotheses • Hybrid shows good performance usually when clause weights are generally balanced • RSAPS shows good performance usually when clause weights are unbalanced

  18. Experiments • RSAPS and Hybrid on two groups of instances • instances leading to balanced clauses weights par16-1, par16-2, par16-3, par16-4, and par16-5 in PARITY (Maxtries=100, cutoff = 109) • instances leading to unbalanced clauses weights f*3995, f*3997, f*3999, f*4001, and f*4003 in Ferry (Maxtries=100, cutoff = 108) • Clause weights defined by Breakout[Morris AAAI 93] • summations of local minima in which a clause is unsatisfied • Reporting cv, div, and suc • cv: coefficient of variation of distribution of clause weights • div: division of maximum clause weight by average clause weight • suc: success rate

  19. Higher coefficient of variation is, less balanced clause weights are • Weights for PARITY are more balanced than weights for Ferry avg: average of values in each column • Suggestions of above results • ignore clause weights and concentrate on intensifying search if clause weights are generally balanced • use clause weighting to diversify search otherwise • div over cv • whether clause weights are balanced ▪not time-consuming

  20. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  21. Evenness or Unevenness of Distribution of Clause Weights • Definition • If (max_clause_weight ave_clause_weight)  ( >1) the distribution of clause weights is uneven • Otherwise the distribution of clause weights is even • Unbalanced and balanced clause weights • A means to determine whether a search is undiversified in a step

  22. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  23. NCVW (SAT-formula F) A← randomly generated truth assignment; forflip←1 toMaxstepsdo ifA satisfies F then return A; if distribution of variable weights is uneven thenheuristic← VW; elseif distribution of clause weights is uneven thenheuristic← RSAPS; elseheuristic ← adaptG2WSAT+; y ← use heuristic to choose a variable; if(y is a variable) thenA ← A with y flipped; update vw, max_vw, and ave_vw; if ((heuristic = RSAPS and (y is not a variable)) then update cw, max_cw, and ave_cw;

  24. Three Objectives in NCVW • Objective 1: Ensure every variable has an equal chance of being flipped Way 1: Choose heuristicVW when distribution of variable weights is uneven • Objective 2: Avoid same local minima Way 2: Choose heuristicRSAPS when distribution of clause weights is uneven • Objective 3: Intensify search Way 3: Chooses heuristicadaptG2WSAT+ when distributions of both variable and clause weights are even

  25. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  26. State-of-the-Art Algorithms to be Compared • RSAPS [Hutter, Tompkins, and Hoos CP 2002] one of the best local search algorithms in SAT 2004 competition • VW [Prestwich SAT 2005] silver medal in satisfiable random category in SAT 2005 competition • Hybrid[Wei,Li, and Zhang JSAT 2008] • adaptG2WSAT+ [Wei, Li, and Zhang 2007] bronze medal winner in satisfiable random category in SAT 2007 competition • adaptG2WSAT0 [Li, Wei, and Zhang 2007] silver medal in satisfiable random category in SAT 2007 competition • gNovelty+ [Pham and Gretton 2007] gold medal winner in satisfiable random category in SAT 2007 competition

  27. 11 Groups of Benchmark SAT Instances • SATLIB repository and SAT 2005 and 2007 competition benchmarks • A wide range of instances • structured instances from SATLIB repository • instances from industrial and crafted categories in SAT 2005 competition • hard random instances from SAT 2007 competition • Hard instances • widely used to evaluate local search algorithms

  28. 11 Groups of Benchmark SAT Instances (36 Instances) • Structured instances from SATLIB repository • ais12 from ais, bw_large.d in Blocksworld, e0ddr2*1 in Beijing • g250.29 in GCP, qg2-8 and qg7-13 in QG, par16-1 to par16-5 (5 ins) in PARITY • Industrial instances from SAT 2005 competition • f*3995, f*3997, f*3999, f*4001, and f*4003 in Ferry • Crafted instances from SAT 2005 competition • g*1334, g*1337, g*1339, g*1340, and g*1341 in grid-pebbling/sat • p*1318, p*1319, p*1320, p*1321, and p*1322 in random-pebbling/sat • Hard random instances from SAT 2007 competition • *v10000*03, *v10000*04, *v10000*05, *v10000*06, and *v10000*10 in 3SAT/v10000 • *v1100*04, *v1100*06, *v1100*08, *v1100*10, and *v1100*14 in 5SAT/v1100

  29. Experiments • Intel(R) Core(TM)2 CPU 6400 @ 2.13GHz, 2GB memory under Linux • Parameters • In NCVW ․(γ,  , π, s , wp) = (7.5, 3.0, 15.0, 0.0, 0.05) ․adjusts parameters as constituent heuristics or uses same default values • In all other algorithms ․adjust parametersor use same default values • Maxtries = 100 • “suc”, “#steps”, and “time” ▪suc: success rate ▪#steps: median number of search steps ▪time: median run time • “> Maxsteps” and “n/a” (suc <= 50%)

  30. An Algorithm Is Generally Effective Given a set of instances and a fixed cutoff for each instance, if an algorithm achieves a success rate greater than 50% for each instance, this algorithm is generally effective on these instances

  31. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  32. Justification for Switching Strategy Used in NCVW NCVW_diff • uses heuristicadaptG2WSAT+ when distribution of variable weights is uneven or the distribution of clause weights is uneven • randomly selects a heuristic from heuristic RSAPS and heuristic VW otherwise NCVW_rand • randomly selects a heuristic from heuristicadaptG2WSAT+, heuristic RSAPS, and heuristic VW

  33. Outline • Introduction • Review of Algorithms adaptG2WSAT+, RSAPS,VW, and Hybrid • Motivation • A New Switching Criterion • A New Algorithm NCVW • Evaluation • Justification for Switching Strategy Used in NCVW • Conclusions

  34. Conclusions • A new switching criterion • evenness or unevenness of distribution of clause weights • A new local search algorithm NCVW • NCVW (Non-, Clause, and Variable Weighting) • switches among heuristicadaptG2WSAT+, heuristicRSAPS, and heuristic VW • Experimental results • NCVW is generally effective • adaptG2WSAT+, RSAPS, VW, gNovelty+, adaptG2WSAT0, and Hybrid are not

  35. Thank You

More Related