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Transfer of Knowledge for Surrogate Model Selection in Cost-Aware Optimization

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    SYSNO ASEP0493290
    Document TypeA - Abstract
    R&D Document TypeO - Ostatní
    TitleTransfer of Knowledge for Surrogate Model Selection in Cost-Aware Optimization
    Author(s) Pitra, Zbyněk (UIVT-O) RID, ORCID, SAI
    Repický, Jakub (UIVT-O) ORCID, SAI
    Holeňa, Martin (UIVT-O) SAI, RID
    Source TitleECML PKDD 2018: Workshop on Interactive Adaptive Learning. Proceedings. - Dublin, 2018 / Krempl G. ; Lemaire V. ; Kottke D. ; Calma A. ; Holzinger A. ; Polikar R. ; Sick B.
    S. 89-94
    Number of pages6 s.
    Publication formOnline - E
    ActionECML PKDD 2018: The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases
    Event date10.09.2018 - 14.09.2018
    VEvent locationDublin
    CountryIE - Ireland
    Event typeEUR
    Languageeng - English
    CountryIE - Ireland
    KeywordsMetalearing ; Surrogate model ; Gaussian process ; Random forest ; Exploratory landscape analysis
    Subject RIVIN - Informatics, Computer Science
    OECD categoryComputer sciences, information science, bioinformathics (hardware development to be 2.2, social aspect to be 5.8)
    R&D ProjectsGA17-01251S GA ČR - Czech Science Foundation (CSF)
    Institutional supportUIVT-O - RVO:67985807
    AnnotationPUBLISHED IN: ECML PKDD 2018: Workshop on Interactive Adaptive Learning. Proceedings. Dublin, 2018 - (Krempl, G., Lemaire, V., Kottke, D., Calma, A., Holzinger, A., Polikar, R., Sick, B.). s. 89-94. [ECML PKDD 2018: The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases. 10.09.2018-14.09.2018, Dublin]. Grant CEP: GA ČR GA17-01251S. ABSTRACT: Surrogate model selection is an active-learning approach to cost-aware continuous black-box optimization in domains where the evaluation of the black-box objective function is expensive, e. g., obtained experimentally or resulting from comprehensive simulations. Active reusing of knowledge represented by landscape properties of the objective function accross different tasks can provide additional information for more reliable decisions in terms of a suitable surrogate model and a suitable setting of its hyperparameters. However, research into using metalearning and especially Exploratory Landscape Analysis (ELA) in this context is only starting. Our goal is to develop a learning system capable to recommend a surrogate model on the basis of the knowledge obtained in previous black-box optimization tasks. In this paper, we provide a first step necessary to construct a learning system applying knowledge from previous tasks to a new one: a study of the applicability of ELA to two important kinds of surrogate models – Gaussian processes (GP) and ensembles of regression trees (random forests, RF). Results using the noiseless benchmarks of the Comparing-Continuous-Optimisers (COCO) platform in the expensive scenario, where at most 50D evaluations are available, are analysed for statistical dependences between model performance and a broad variety of landscape features.
    WorkplaceInstitute of Computer Science
    ContactTereza Šírová, sirova@cs.cas.cz, Tel.: 266 053 800
    Year of Publishing2019
    Electronic addresshttps://www.ies.uni-kassel.de/p/ial2018/ialatecml2018.pdf
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