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dc.contributor.authorGaitonde, Jason
dc.contributor.authorMoitra, Ankur
dc.contributor.authorMossel, Elchanan
dc.date.accessioned2026-01-20T22:02:33Z
dc.date.available2026-01-20T22:02:33Z
dc.date.issued2025-06-15
dc.identifier.isbn979-8-4007-1510-5
dc.identifier.urihttps://hdl.handle.net/1721.1/164609
dc.descriptionSTOC ’25, Prague, Czechiaen_US
dc.description.abstractWe consider the problem of learning graphical models, also known as Markov random fields (MRFs) from temporally correlated samples. As in many traditional statistical settings, fundamental results in the area all assume independent samples from the distribution. However, these samples generally will not directly correspond to more realistic observations from nature, which instead evolve according to some stochastic process. From the computational lens, even generating a single sample from the true MRF distribution is intractable unless NP=RP, and moreover, any algorithm to learn from i.i.d. samples requires prohibitive runtime due to hardness reductions to the parity with noise problem. These computational barriers for sampling and learning from the i.i.d. setting severely lessen the utility of these breakthrough results for this important task; however, dropping this assumption typically only introduces further algorithmic and statistical complexities. In this work, we surprisingly demonstrate that the direct trajectory data from a natural evolution of the MRF overcomes the fundamental computational lower bounds to efficient learning. In particular, we show that given a trajectory with Ok(n) site updates of an order k MRF from the Glauber dynamics, a well-studied, natural stochastic process on graphical models, there is an algorithm that recovers the graph and the parameters in Ok(n2) time. By contrast, all prior algorithms for learning order k MRFs inherently suffer from nΘ(k) runtime even in sparse instances due to the reductions to sparse parity with noise. Our results thus surprisingly show that this more realistic, but intuitively less tractable, model for MRFs actually leads to efficiency far beyond what is known and believed to be true in the traditional i.i.d. case.en_US
dc.publisherACM|Proceedings of the 57th Annual ACM Symposium on Theory of Computingen_US
dc.relation.isversionofhttps://doi.org/10.1145/3717823.3718231en_US
dc.rightsCreative Commons Attributionen_US
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/en_US
dc.sourceAssociation for Computing Machineryen_US
dc.titleBypassing the Noisy Parity Barrier: Learning Higher-Order Markov Random Fields from Dynamicsen_US
dc.typeArticleen_US
dc.identifier.citationJason Gaitonde, Ankur Moitra, and Elchanan Mossel. 2025. Bypassing the Noisy Parity Barrier: Learning Higher-Order Markov Random Fields from Dynamics. In Proceedings of the 57th Annual ACM Symposium on Theory of Computing (STOC '25). Association for Computing Machinery, New York, NY, USA, 348–359.en_US
dc.contributor.departmentMassachusetts Institute of Technology. Department of Mathematicsen_US
dc.identifier.mitlicensePUBLISHER_POLICY
dc.eprint.versionFinal published versionen_US
dc.type.urihttp://purl.org/eprint/type/ConferencePaperen_US
eprint.statushttp://purl.org/eprint/status/NonPeerRevieweden_US
dc.date.updated2025-08-01T08:42:38Z
dc.language.rfc3066en
dc.rights.holderThe author(s)
dspace.date.submission2025-08-01T08:42:38Z
mit.licensePUBLISHER_CC
mit.metadata.statusAuthority Work and Publication Information Neededen_US


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