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Generalized Survey Propagation

dc.contributor.authorTu, Ronghui
dc.contributor.supervisorMao, Yongyi
dc.contributor.supervisorZhao, Jiying
dc.date.accessioned2011-05-09T17:49:28Z
dc.date.available2011-05-09T17:49:28Z
dc.date.created2011
dc.date.issued2011
dc.degree.disciplineGénie / Engineering
dc.degree.leveldoctorate
dc.degree.namephd
dc.description.abstractSurvey propagation (SP) has recently been discovered as an efficient algorithm in solving classes of hard constraint-satisfaction problems (CSP). Powerful as it is, SP is still a heuristic algorithm, and further understanding its algorithmic nature, improving its effectiveness and extending its applicability are highly desirable. Prior to the work in this thesis, Maneva et al. introduced a Markov Random Field (MRF) formalism for k-SAT problems, on which SP may be viewed as a special case of the well-known belief propagation (BP) algorithm. This result had sometimes been interpreted to an understanding that “SP is BP” and allows a rigorous extension of SP to a “weighted” version, or a family of algorithms, for k-SAT problems. SP has also been generalized, in a non-weighted fashion, for solving non-binary CSPs. Such generalization is however presented using statistical physics language and somewhat difficult to access by more general audience. This thesis generalizes SP both in terms of its applicability to non-binary problems and in terms of introducing “weights” and extending SP to a family of algorithms. Under a generic formulation of CSPs, we first present an understanding of non-weighted SP for arbitrary CSPs in terms of “probabilistic token passing” (PTP). We then show that this probabilistic interpretation of non-weighted SP makes it naturally generalizable to a weighted version, which we call weighted PTP. Another main contribution of this thesis is a disproof of the folk belief that “SP is BP”. We show that the fact that SP is a special case of BP for k-SAT problems is rather incidental. For more general CSPs, SP and generalized SP do not reduce from BP. We also established the conditions under which generalized SP may reduce as special cases of BP. To explore the benefit of generalizing SP to a wide family and for arbitrary, particularly non-binary, problems, we devised a simple weighted PTP based algorithm for solving 3-COL problems. Experimental results, compared against an existing non-weighted SP based algorithm, reveal the potential performance gain that generalized SP may bring.
dc.embargo.termsimmediate
dc.faculty.departmentOttawa-Carleton Institute of Computer Science
dc.identifier.urihttp://hdl.handle.net/10393/19972
dc.identifier.urihttp://dx.doi.org/10.20381/ruor-4586
dc.language.isoen
dc.publisherUniversité d'Ottawa / University of Ottawa
dc.subjectk-SAT
dc.subjectq-COL
dc.subjectbelief propagation
dc.subjectconstraint satisfaction
dc.subjectfactor graph
dc.subjectMarkov random field
dc.subjectmessage-passing algorithm
dc.subjectsurvey propagation
dc.titleGeneralized Survey Propagation
dc.typeThesis
thesis.degree.disciplineGénie / Engineering
thesis.degree.levelDoctoral
thesis.degree.namephd
uottawa.departmentOttawa-Carleton Institute of Computer Science

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