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dc.contributor.author윤기중-
dc.date.accessioned2020-06-16T00:44:52Z-
dc.date.available2020-06-16T00:44:52Z-
dc.date.issued2019-06-
dc.identifier.citation2019 53rd Asilomar Conference on Signals, Systems, and Computers Signals, Systems, and Computers, Page. 1-9en_US
dc.identifier.isbn978-1-7281-4300-2-
dc.identifier.issn2576-2303-
dc.identifier.urihttps://ieeexplore.ieee.org/document/9048920-
dc.identifier.urihttps://repository.hanyang.ac.kr/handle/20.500.11754/151584-
dc.description.abstractA fundamental computation for statistical inference and accurate decision-making is to compute the marginal probabilities or most probable states of task-relevant variables. Probabilistic graphical models can efficiently represent the structure of such complex data, but performing these inferences is generally difficult. Message-passing algorithms, such as belief propagation, are a natural way to disseminate evidence amongst correlated variables while exploiting the graph structure, but these algorithms can struggle when the conditional dependency graphs contain loops. Here we use Graph Neural Networks (GNNs) to learn a message-passing algorithm that solves these inference tasks. We first show that the architecture of GNNs is well-matched to inference tasks. We then demonstrate the efficacy of this inference approach by training GNNs on a collection of graphical models and showing that they substantially outperform belief propagation on loopy graphs. Our message-passing algorithms generalize out of the training set to larger graphs and graphs with different structure.en_US
dc.description.sponsorshipK.Y. and X.P. were supported in part by BRAIN Initiative grant NIH 5U01NS094368. X.P. was supported in part by NSF CAREER grant IOS-1552868. K.Y. was supported in part by NRF-2018R1C1B5086404 and the research fund of Hanyang University (HY-2019). K.Y., R.L., L.Z., E.F., R.U., R.Z., and X.P. were supported in part by the Intelligence Advanced Research Projects Activity (IARPA) via Department of Interior/Interior Business Center (DoI/IBC) contract number D16PC00003. The U.S. Government is authorized to reproduce and distribute reprints for Governmental purposes notwithstanding any copyright annotation thereon. Disclaimer: the views and conclusions contained herein are those of the authors and should not be interpreted as necessarily representing the official policies or endorsements, either expressed or implied, of IARPA, DoI/IBC, or the U.S. Government.en_US
dc.language.isoenen_US
dc.publisherIEEEen_US
dc.subjectprobabilistic graphical modelsen_US
dc.subjectinferenceen_US
dc.subjectmessage-passingen_US
dc.subjectgraph neural networksen_US
dc.titleInference in Probabilistic Graphical Models by Graph Neural Networksen_US
dc.typeArticleen_US
dc.identifier.doi10.1109/IEEECONF44664.2019.9048920-
dc.relation.page1-9-
dc.contributor.googleauthorYoon, KiJung-
dc.contributor.googleauthorLiao, Renjie-
dc.contributor.googleauthorXiong, Yuwen-
dc.contributor.googleauthorZhang, Lisa-
dc.contributor.googleauthorFetaya, Ethan-
dc.contributor.googleauthorUrtasun, Raquel-
dc.contributor.googleauthorZemel, Richard-
dc.contributor.googleauthorPitkow, Xaq-
dc.sector.campusS-
dc.sector.daehakCOLLEGE OF ENGINEERING[S]-
dc.sector.departmentDEPARTMENT OF ELECTRONIC ENGINEERING-
dc.identifier.pidkiyoon-
Appears in Collections:
COLLEGE OF ENGINEERING[S](공과대학) > ELECTRONIC ENGINEERING(융합전자공학부) > Articles
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