Reducing model bias in a deep learning classifier using domain adversarial neural networks in the MINERvA experiment

dc.contributor.affiliationPontificia Universidad Católica del Perú. Departamento de Ciencias
dc.contributor.authorNuruzzaman
dc.contributor.authorPerdue, G.N.
dc.contributor.authorGhosh, A.
dc.contributor.authorWospakrik, M.
dc.contributor.authorAkbar, F.
dc.contributor.authorAndrade, D.A.
dc.contributor.authorAscencio-Sosa, M.V.
dc.contributor.authorBellantoni, L.
dc.contributor.authorBercellie, A.
dc.contributor.authorBetancourt, M.
dc.contributor.authorVera, G.F.R.C.
dc.contributor.authorCai, T.
dc.contributor.authorCarneiro, M.F.
dc.contributor.authorChaves, J.
dc.contributor.authorCoplowe, D.
dc.contributor.authorMotta, H.D.
dc.contributor.authorDíaz, G.A.
dc.contributor.authorFélix, J.
dc.contributor.authorFields,
dc.date.accessioned2026-03-13T17:00:15Z
dc.date.issued2018
dc.description.abstractWe present a simulation-based study using deep convolutional neural networks\n(DCNNs) to identify neutrino interaction vertices in the MINERvA passive\ntargets region, and illustrate the application of domain adversarial neural\nnetworks (DANNs) in this context. DANNs are designed to be trained in one\ndomain (simulated data) but tested in a second domain (physics data) and\nutilize unlabeled data from the second domain so that during training only\nfeatures which are unable to discriminate between the domains are promoted.\nMINERvA is a neutrino-nucleus scattering experiment using the NuMI beamline at\nFermilab. $A$-dependent cross sections are an important part of the physics\nprogram, and these measurements require vertex finding in complicated events.\nTo illustrate the impact of the DANN we used a modified set of simulation in\nplace of physics data during the training of the DANN and then used the label\nof the modified simulation during the evaluation of the DANN. We find that deep\nlearning based methods offer significant advantages over our prior track-based\nreconstruction for the task of vertex finding, and that DANNs are able to\nimprove the performance of deep networks by leveraging available unlabeled data\nand by mitigating network performance degradation rooted in biases in the\nphysics models used for training.\n
dc.description.sponsorshipFunding: This document was prepared by the MINER\u03BDA collaboration using the resources of the Fermi National Accelerator Laboratory (Fermilab), a U.S. Department of Energy, Office of Science, HEP User Facility. Fermilab is managed by Fermi Research Alliance, LLC (FRA), acting under Contract No. DE-AC02-07CH11359, which included the MINER\u03BDA construction project. The research here was aslo sponsored by the Laboratory Directed Research and Development Program of Oak Ridge National Laboratory, managed by UT-Battelle, LLC, for the U.S. Department of Energy. This research used resources of the Oak Ridge Leadership Computing Facility at the Oak Ridge National Laboratory, which is supported by the Office of Science of the U.S. Department of Energy under Contract No. DE-AC05-00OR22725. Construction support also was granted by the United States National Science Foundation under Award PHY-0619727 and by the University of Rochester. Additional support for participating scientists was provided by NSF and DOE (U.S.A.) by CAPES and CNPq (Brazil), by CoNaCyT (Mexico), by Proyecto Basal FB 0821, CONICYT PIA ACT1413, Fondecyt 3170845 and 11130133 (Chile), by PIIC (DGIP-UTFSM), by CONCYTEC, DGI-PUCP and IDI/IGI-UNI (Peru), by Latin American Center for Physics (CLAF), by RAS and the Russian Ministry of Education and Science (Russia), and by the National Science Centre of Poland, grant number DEC-2017/01/X/ST2/00128. We thank the MINOS Collaboration for use of its near detector data. Finally, we thank the staff of Fermilab for support of the beamline and the detector.
dc.identifier.doihttps://doi.org/10.1088/1748-0221/13/11/P11020
dc.identifier.urihttp://hdl.handle.net/20.500.14657/206556
dc.language.isoeng
dc.publisherInstitute of Physics
dc.relation.ispartofurn:issn:1748-0221
dc.rightsinfo:eu-repo/semantics/closedAccess
dc.sourceJournal of Instrumentation; Vol. 13, Núm. 11 (2018)
dc.subjectDeep learning
dc.subjectConvolutional neural network
dc.subjectClassifier (UML)
dc.subjectDeep neural networks
dc.subjectArtificial neural network
dc.subjectDomain (mathematical analysis)
dc.subjectVertex (graph theory)
dc.subjectTraining set
dc.subject.ocdehttps://purl.org/pe-repo/ocde/ford#1.02.01
dc.titleReducing model bias in a deep learning classifier using domain adversarial neural networks in the MINERvA experiment
dc.typehttp://purl.org/coar/resource_type/c_6501
dc.type.otherArtículo
dc.type.versionhttps://vocabularies.coar-repositories.org/version_types/c_970fb48d4fbd8a85/

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