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Sensitivity analysis of RF+clust for leave-one-problem-out performance prediction

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dc.title Sensitivity analysis of RF+clust for leave-one-problem-out performance prediction en
dc.contributor.author Nikolikj, Ana
dc.contributor.author Pluháček, Michal
dc.contributor.author Doerr, Carola
dc.contributor.author Korosec, Peter
dc.contributor.author Eftimov, Tome
dc.relation.ispartof 2023 IEEE Congress on Evolutionary Computation, CEC 2023
dc.identifier.isbn 979-835031458-8
dc.date.issued 2023
dc.event.title 2023 IEEE Congress on Evolutionary Computation, CEC 2023
dc.event.location Chicago
utb.event.state-en Chicago
dc.event.sdate 2023-07-01
dc.event.edate 2023-07-05
dc.type conferenceObject
dc.language.iso en
dc.publisher Institute of Electrical and Electronics Engineers Inc.
dc.identifier.doi 10.1109/CEC53210.2023.10254146
dc.relation.uri https://ieeexplore.ieee.org/document/10254146
dc.subject automated performance prediction en
dc.subject AutoML en
dc.subject single-objective black-box optimization en
dc.subject zero-shot learning en
dc.description.abstract Leave-one-problem-out (LOPO) performance prediction requires machine learning (ML) models to extrapolate algorithms' performance from a set of training problems to a previously unseen problem. LOPO is a very challenging task even for state-of-the-art approaches. Models that work well in the easier leave-one-instance-out scenario often fail to generalize well to the LOPO setting. To address the LOPO problem, recent work suggested enriching standard random forest (RF) performance regression models with a weighted average of algorithms' performance on training problems that are considered similar to a test problem. More precisely, in this RF+clust approach, the weights are chosen proportionally to the distances of the problems in some feature space. Here in this work, we extend the RF+clust approach by adjusting the distance-based weights with the importance of the features for performance regression. That is, instead of considering cosine distance in the feature space, we consider a weighted distance measure, with weights depending on the relevance of the feature for the regression model. Our empirical evaluation of the modified RF+clust approach on the CEC 2014 benchmark suite confirms its advantages over the naive distance measure. However, we also observe room for improvement, in particular with respect to more expressive feature portfolios. en
utb.faculty Faculty of Applied Informatics
dc.identifier.uri http://hdl.handle.net/10563/1011779
utb.identifier.scopus 2-s2.0-85174496417
utb.source d-scopus
dc.date.accessioned 2024-02-02T10:29:27Z
dc.date.available 2024-02-02T10:29:27Z
dc.description.sponsorship Javna Agencija za Raziskovalno Dejavnost RS, ARRS, (ANR-22-ERCS-0003-01, BI-FR/23-24-PROTEUS-001, J2-4460, N2-0239, P2-0098, PR-12040)
utb.contributor.internalauthor Pluháček, Michal
utb.fulltext.sponsorship The authors acknowledge the support of the Slovenian Research Agency through program grant No. P2-0098, project grants N2-0239 and J2-4460, and a bilateral project between Slovenia and France grant No. BI-FR/23-24-PROTEUS-001 (PR-12040). Our work is also supported by ANR-22-ERCS-0003-01 project VARIATION.
utb.scopus.affiliation Jožef Stefan Institute, Computer Systems Department, Ljubljana, 1000, Slovenia; Tomas Bata University in Zlin, Faculty of Applied Informatics, Zlin, 760 01, Czech Republic; Sorbonne Université, Cnrs, Paris, LIP 1000, France; Jožef Stefan International Postgraduate School, Ljubljana, 1000, Slovenia
utb.fulltext.projects P2-0098
utb.fulltext.projects N2-0239
utb.fulltext.projects J2-446
utb.fulltext.projects BI-FR/23-24-PROTEUS-001 (PR-12040)
utb.fulltext.projects ANR-22-ERCS-0003-01
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