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Conference Paper: On local distributed sampling and counting

TitleOn local distributed sampling and counting
Authors
KeywordsDistributed graph algorithms
Gibbs distribution
Local computation
Sampling algorithms
Strong spatial mixing
Issue Date2018
Citation
Proceedings of the Annual ACM Symposium on Principles of Distributed Computing, 2018, p. 189-198 How to Cite?
AbstractIn classic distributed graph problems, each instance on a graph specifies a space of feasible solutions (e.g. all proper (∆ + 1)-list-colorings of the graph), and the task of distributed algorithm is to construct a feasible solution using local information. We study distributed sampling and counting problems, in which each instance specifies a joint distribution of feasible solutions. The task of distributed algorithm is to sample from this joint distribution, or to locally measure the volume of the probability space via the marginal probabilities. The latter task is also known as inference, which is a local counterpart of counting. For self-reducible classes of instances, the following equivalences are established in the LOCAL model up to polylogarithmic factors: • For all joint distributions, approximate inference and approximate sampling are computationally equivalent. • For all joint distributions defined by local constraints, exact sampling is reducible to either one of the above tasks. • If further, sequentially constructing a feasible solution is trivial locally, then all above tasks are easy if and only if the joint distribution exhibits strong spatial mixing. Combining with the state of the arts of strong spatial mixing, we obtain efficient sampling algorithms in the LOCAL model for various important sampling problems, including: an O(∆ log3 n)-round algorithm for exact sampling matchings in graphs with maximum degree ∆, and an O(log3 n)-round algorithm for sampling according to the hardcore model (weighted independent sets) in the uniqueness regime, which along with the Ω(diam) lower bound in [3] for sampling according to the hardcore model in the non-uniqueness regime, gives the first computational phase transition for distributed sampling.
Persistent Identifierhttp://hdl.handle.net/10722/354974

 

DC FieldValueLanguage
dc.contributor.authorFeng, Weiming-
dc.contributor.authorYin, Yitong-
dc.date.accessioned2025-03-21T09:10:23Z-
dc.date.available2025-03-21T09:10:23Z-
dc.date.issued2018-
dc.identifier.citationProceedings of the Annual ACM Symposium on Principles of Distributed Computing, 2018, p. 189-198-
dc.identifier.urihttp://hdl.handle.net/10722/354974-
dc.description.abstractIn classic distributed graph problems, each instance on a graph specifies a space of feasible solutions (e.g. all proper (∆ + 1)-list-colorings of the graph), and the task of distributed algorithm is to construct a feasible solution using local information. We study distributed sampling and counting problems, in which each instance specifies a joint distribution of feasible solutions. The task of distributed algorithm is to sample from this joint distribution, or to locally measure the volume of the probability space via the marginal probabilities. The latter task is also known as inference, which is a local counterpart of counting. For self-reducible classes of instances, the following equivalences are established in the LOCAL model up to polylogarithmic factors: • For all joint distributions, approximate inference and approximate sampling are computationally equivalent. • For all joint distributions defined by local constraints, exact sampling is reducible to either one of the above tasks. • If further, sequentially constructing a feasible solution is trivial locally, then all above tasks are easy if and only if the joint distribution exhibits strong spatial mixing. Combining with the state of the arts of strong spatial mixing, we obtain efficient sampling algorithms in the LOCAL model for various important sampling problems, including: an O(∆ log3 n)-round algorithm for exact sampling matchings in graphs with maximum degree ∆, and an O(log3 n)-round algorithm for sampling according to the hardcore model (weighted independent sets) in the uniqueness regime, which along with the Ω(diam) lower bound in [3] for sampling according to the hardcore model in the non-uniqueness regime, gives the first computational phase transition for distributed sampling.-
dc.languageeng-
dc.relation.ispartofProceedings of the Annual ACM Symposium on Principles of Distributed Computing-
dc.subjectDistributed graph algorithms-
dc.subjectGibbs distribution-
dc.subjectLocal computation-
dc.subjectSampling algorithms-
dc.subjectStrong spatial mixing-
dc.titleOn local distributed sampling and counting-
dc.typeConference_Paper-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1145/3212734.3212757-
dc.identifier.scopuseid_2-s2.0-85052431036-
dc.identifier.spage189-
dc.identifier.epage198-

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