Publication:

On-device Deep Learning Location Category Inference Model

 
cris.virtual.department#PLACEHOLDER_PARENT_METADATA_VALUE#
cris.virtual.department#PLACEHOLDER_PARENT_METADATA_VALUE#
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cris.virtual.orcid0000-0002-4812-4841
cris.virtual.orcid0000-0002-2969-3133
cris.virtual.orcid0000-0001-8029-4720
cris.virtualsource.departmentc51c977b-dc5a-451e-ac25-4b9f2b738719
cris.virtualsource.department5f457973-5b9f-4593-8a29-1eeb47f32775
cris.virtualsource.departmenta09c2484-580c-4e75-992d-302438c7c31d
cris.virtualsource.orcidc51c977b-dc5a-451e-ac25-4b9f2b738719
cris.virtualsource.orcid5f457973-5b9f-4593-8a29-1eeb47f32775
cris.virtualsource.orcida09c2484-580c-4e75-992d-302438c7c31d
dc.contributor.authorMusaev, Gadzhi
dc.contributor.authorMets, Kevin
dc.contributor.authorTamosiunas, Rokas
dc.contributor.authorUvarov, Vadim
dc.contributor.authorDe Schepper, Tom
dc.contributor.authorHellinckx, Peter
dc.date.accessioned2026-06-15T13:38:46Z
dc.date.available2026-06-15T13:38:46Z
dc.date.createdwos2025-12-10
dc.date.issued2023
dc.description.abstractWe define Location Category Inference (LCI) as a task of predicting the category of a visited venue, such as bar, restaurant or university, given user location GPS coordinates and a set of venue candidates. LCI is an essential part of the hyper-personalization systems as its output provides deep insights into user lifestyle (has children, owns a dog) and behavioral patterns (regularly exercises, visits museums). Due to such factors as signal obstruction, especially in urban canyons, the GPS positioning is inaccurate. The noise in the GPS signal makes the problem of LCI challenging and requires researchers to explore models that incorporate additional information such as the time of day, duration of stay or user lifestyle in order to overcome the noise-induced errors. In this paper we propose an embeddable on-device LCI model which fuses spatial and temporal features. We discuss how initial clustering of locations helps limiting the GPS noise. Then, we propose a multi-modal architecture that incorporates socio-cultural information on when and for how long people typically visit venues of different categories. Finally, we compare our model with one nearest neighbor, a simple fully connected neural network and a random forest model and show that the multi-modal neural network achieves f1 score of 73.2% which is 6.6% better than the best of benchmark models. Our model outperforms benchmark models while being almost 180 times smaller in size at around 1.9Mb.
dc.description.wosFundingTextSupported by Sentiance.
dc.identifier.doi10.1007/978-3-031-39144-6_7
dc.identifier.isbn978-3-031-39143-9
dc.identifier.issn1865-0929
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/59713
dc.language.isoeng
dc.provenance.editstepusergreet.vanhoof@imec.be
dc.publisherSPRINGER INTERNATIONAL PUBLISHING AG
dc.source.beginpage96
dc.source.conferenceArtificial Intelligence and Machine Learning 34th Joint Benelux Conference, BNAIC/Benelearn
dc.source.conferencedate2022-11-07
dc.source.conferencelocationMechelen
dc.source.endpage111
dc.source.journalARTIFICIAL INTELLIGENCE AND MACHINE LEARNING, BNAIC/BENELEARN 2022
dc.source.numberofpages16
dc.title

On-device Deep Learning Location Category Inference Model

dc.typeProceedings paper
dspace.entity.typePublication
imec.internal.crawledAt2026-04-07
imec.internal.sourcecrawler
imec.internal.wosCreatedAt2026-04-07
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