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R.J. Woodward , S. Karakashian, B.Y. Choueiry & C. Bessiere

Reformulating the Dual Graphs of CSPs to Improve the Performance of RNIC. R.J. Woodward , S. Karakashian, B.Y. Choueiry & C. Bessiere Constraint Systems Laboratory, University of Nebraska-Lincoln LIRMM-CNRS, University of Montpellier. Acknowledgements

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R.J. Woodward , S. Karakashian, B.Y. Choueiry & C. Bessiere

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  1. Reformulating the Dual Graphs of CSPs to Improve the Performance of RNIC R.J. Woodward, S. Karakashian, B.Y. Choueiry & C. Bessiere Constraint Systems Laboratory, University of Nebraska-Lincoln LIRMM-CNRS, University of Montpellier • Acknowledgements • Elizabeth Claassen and David B. Marx of the Department of Statistics @ UNL • Experiments conducted at UNL’s Holland Computing Center • Robert Woodward supported by a B.M. Goldwater Scholarship and NSF Graduate Research Fellowship • NSF Grant No. RI-111795 SARA 2011

  2. Outline • Introduction • Relational Neighborhood Inverse Consistency • Property & algorithm • Reformulating the Dual Graph by • Removing redundant edges, yields property wRNIC • Triangulation, yields property triRNIC • Selection strategy: four alternative dual graphs • Experimental Results • Conclusion SARA 2011

  3. Constraint Satisfaction Problem R6 B • Warning • Consistency properties vs. algorithms • CSP • Variables, Domains • Constraints: binary / non-binary • Representation • Hypergraph • Dual graph • Solved with • Search • Enforcing consistency A Hypergraph R4 E R1 R2 R5 R3 C F D R5 R3 R1 C D AD BCD CF Dual graph A B BD AD F AB ABDE EF AB E R6 R4 R2 SARA 2011

  4. Neighborhood Inverse Consistency [Freuder+ 96] • Non-binary CSPs? • Neighborhoods likely too large • Property • Defined for binary CSPs • Every value can be extended to a solution in its variable’s neighborhood • Algorithm • No space overhead • Adapts to the connectivity • Not effective on sparse problems • To costly on dense problems R4 A C 0,1,2 0,1,2 R0 R1 R3 B D 0,1,2 0,1,2 R2 R6 B A R4 E R1 R2 R5 C F D R3 SARA 2011

  5. Relational NIC [Woodward+ AAAI11] B A R4 E R1 R2 R5 R3 C F D Hypergraph R5 R3 R1 C D AD BCD CF • Domain filtering • Property: RNIC+DF • Algorithm: Projection A B BD AD F AB ABDE EF AB E R6 R4 R2 Dual graph • Property • Defined for dual graph • Every tuple can be extended to a solution in its relation’s neighborhood • Algorithm • Operates on dual graph • … filter relations (not domains!) SARA 2011

  6. Reformulation: Removing Redundant Edges • High density • Large neighborhoods • Higher cost of RNIC • Minimal dual graph • Equivalent CSP • Computed efficiently [Janssen+ 89] • Run algorithm on a minimal dual graph • Smaller neighborhoods, solution set not affected • wRNIC: a strictly weaker property R5 R3 R1 C D AD BCD CF A B BD F AD AB ABDE EF AB E R6 R4 R2 dGo= 60% dGw = 40% wRNIC RNIC SARA 2011

  7. Reformulation: Triangulation • Cycles of length ≥ 4 • Hampers propagation • Triangulating dual graph • Equivalent CSP • Min-fill heuristic • Run algorithm on a triangulated dual graph • Created loops enhance propagation • triRNIC: a strictly stronger property R5 R3 R1 C D AD BCD CF A B BD F AD AB ABDE EF AB E R6 R4 R2 dGo= 60% dGtri = 67% wRNIC RNIC triRNIC SARA 2011

  8. Reformulation: RR & Triangulation R5 R3 R1 • Fixing the dual graph • RR copes with high density • Triangulation boosts propagation • RR+Tri • Both operate locally • Are complementary, do not ‘clash’ • Run algorithm on a RR+tri dual graph • CSP solution set is not affected • wtriRNIC is not comparable with RNIC C D AD BCD CF A B BD F AD AB ABDE EF AB E R6 R4 R2 dGo= 60% R5 R3 R1 C D AD BCD CF A B BD F AD AB ABDE EF AB E R6 R4 R2 dGwtri = 47% RNIC wRNIC triRNIC wtriRNIC SARA 2011

  9. Selection Strategy: Which? When? • Density ≥ 15% is too dense • Remove redundant edges • Triangulation increases density no more than two fold • Reformulate by triangulation • Each reformulation executed at most once Start No Yes dGo≥ 15% No Yes No Yes dGtri≤ 2 dGo dGwtri≤ 2 dGw Go Gtri Gw Gwtri SARA 2011

  10. Experimental Results • Statistical analysis on CP benchmarks • Time: Censored data calculated mean • R: Censored data rank based on probability of survival data analysis • S: Equivalence classes based on CPU • SB: Equivalence classes based on completion • #C: Number of instances completed • #F: Number of instancesfastest • #BF: # instances solved backtrack free SARA 2011

  11. Conclusions • Contributions • Algorithm • Polynomial in degree of dual graph • BT-free search: hints to problem tractability • Various reformulations of the dual graph • Adaptive, unifying, self-regulatory, automatic strategy • Empirical evidence, supported by statistics • Future work • Extend to constraints given as conflicts, in intension • Extend to singleton type consistencies SARA 2011

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