Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/46203
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dc.contributor.authorJaxy, Simon-
dc.contributor.authorNowe, Ann-
dc.contributor.authorLIBIN, Pieter-
dc.date.accessioned2025-06-17T10:17:40Z-
dc.date.available2025-06-17T10:17:40Z-
dc.date.issued2024-
dc.date.submitted2025-06-04T09:46:55Z-
dc.identifier.citation2024 IEEE 36TH International conference on tools with artificial intelligence, ICTAI, IEEE COMPUTER SOC, p. 515 -523-
dc.identifier.isbn979-8-3315-2724-2; 979-8-3315-2723-5-
dc.identifier.issn1082-3409-
dc.identifier.urihttp://hdl.handle.net/1942/46203-
dc.description.abstractThere is a substantial demand for deep learning methods that can work with limited, high-dimensional, and noisy datasets. Nonetheless, current research mostly neglects this area, especially in the absence of prior expert knowledge or knowledge transfer. In this work, we bridge this gap by studying the performance of deep learning methods on the true data distribution in a limited, high-dimensional, and noisy data setting. To this end, we conduct a systematic evaluation that reduces the available training data while retaining the challenging properties mentioned above. Furthermore, we extensively search the space of hyperparameters and compare state-of-the-art architectures and models built and trained from scratch to advocate for the use of multi-objective tuning strategies. Our experiments highlight the lack of performative deep learning models in current literature and investigate the impact of training hyperparameters. We analyze the complexity of the models and demonstrate the advantage of choosing models tuned under multi-objective criteria in lower data regimes to reduce the likelihood to overfit. Lastly, we demonstrate the importance of selecting a proper inductive bias given a limited-sized dataset. Given our results, we conclude that tuning models using a multi-objective criterion results in simpler yet competitive models when reducing the number of data points.-
dc.description.sponsorshipS.J. gratefully acknowledges support from Fonds Wetenschappelijk Onderzoek (FWO) via FWO PhD Fellowship strategic basic research, Belgium 1SHHV24N. P.J.K.L. wishes to express gratitude for the support received from FWO via postdoctoral fellowship, Belgium 1242021N and the research council of the Vrije Universiteit Brussel (OZR-VUB via grant number OZR3863BOF). This research was supported by funding from the Flemish Government under the “Onderzoeksprogramma Artificiele Intelligentie (AI) Vlaanderen” program ¨ and through the IMAGIca project by the Interdisciplinary Research Program of the Vrije Universiteit Brussel (reference IRP8 b). Lastly, we want to thank the HPC administration and support service of Vrije Universiteit Brussel that helped tremendously during the experimental phase, Bart Bogaerts for providing us with essential feedback and guidance throughout the development of this research and finally, Bram Silue, Denis Steckelmacher, and Samuele Pollaci for proofreading-
dc.language.isoen-
dc.publisherIEEE COMPUTER SOC-
dc.relation.ispartofseriesProceedings-International Conference on Tools With Artificial Intelligence-
dc.rights2024 IEEE-
dc.subject.otherLimited Data-
dc.subject.otherDeep Learning-
dc.subject.otherMulti Objective Optimization-
dc.subject.otherOverfit-
dc.titleA systematic analysis of deep learning algorithms in high-dimensional data regimes of limited size-
dc.typeProceedings Paper-
local.bibliographicCitation.conferencedate2024, October 28-30-
local.bibliographicCitation.conferencename36th International Conference on Tools with Artificial Intelligence-
local.bibliographicCitation.conferenceplaceHerndon, VA-
dc.identifier.epage523-
dc.identifier.spage515-
local.format.pages9-
local.bibliographicCitation.jcatC1-
dc.description.notesJaxy, S (corresponding author), Vrije Univ Brussel VUB, Artificial Intelligence Lab, Brussels, Belgium.-
dc.description.notessimon.jaxy@vub.be; ann.nowe@vub.be; pieter.libin@vub.be-
local.publisher.place10662 LOS VAQUEROS CIRCLE, PO BOX 3014, LOS ALAMITOS, CA 90720-1264 USA-
local.type.refereedRefereed-
local.type.specifiedProceedings Paper-
dc.identifier.doi10.1109/ICTAI62512.2024.00079-
dc.identifier.isi001447778900070-
local.provider.typewosris-
local.bibliographicCitation.btitle2024 IEEE 36TH International conference on tools with artificial intelligence, ICTAI-
local.description.affiliation[Jaxy, Simon; Nowe, Ann] Vrije Univ Brussel VUB, Artificial Intelligence Lab, Brussels, Belgium.-
local.description.affiliation[Libin, Pieter] Vrije Univ Brussel VUB, Artificial Intelligence Lab, Data Sci Inst, Brussels, Belgium.-
local.description.affiliation[Libin, Pieter] Univ Hasselt UH, Brussels, Belgium.-
local.uhasselt.internationalno-
item.fulltextWith Fulltext-
item.fullcitationJaxy, Simon; Nowe, Ann & LIBIN, Pieter (2024) A systematic analysis of deep learning algorithms in high-dimensional data regimes of limited size. In: 2024 IEEE 36TH International conference on tools with artificial intelligence, ICTAI, IEEE COMPUTER SOC, p. 515 -523.-
item.accessRightsRestricted Access-
item.contributorJaxy, Simon-
item.contributorNowe, Ann-
item.contributorLIBIN, Pieter-
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