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Level set estimation with search space warping

Version 2 2024-06-03, 17:19
Version 1 2020-06-11, 14:24
conference contribution
posted on 2024-06-03, 17:19 authored by Manisha Senadeera, Santu RanaSantu Rana, Sunil GuptaSunil Gupta, Svetha VenkateshSvetha Venkatesh
This paper proposes a new method of level set estimation through search space warping using Bayesian optimisation. Instead of a single solution, a level set offers a range of solutions each meeting the goal and thus provides useful knowledge in tolerance for industrial product design. The proposed warping scheme increases performance of existing level set estimation algorithms - in particular the ambiguity acquisition function. This is done by constructing a complex covariance function to warp the Gaussian Process. The covariance function is designed to expand regions deemed to have a high potential for being at the desired level whilst contracting others. Subsequently, Bayesian optimisation using this covariance function ensures that the level set is sampled more thoroughly. Experimental results demonstrate increased efficiency of level set discovery using the warping scheme. Theoretical analysis concerning warping the covariance function, maximum information gain and bounds on the cumulative regret are provided.

History

Volume

12085

Pagination

827-839

Location

Singapore

Open access

  • Yes

Start date

2020-05-11

End date

2020-05-14

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783030474355

Language

eng

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

Lauw HW, Wong RCW, Ntoulos A, Lim EP, Ng SK, Pan SJP

Title of proceedings

PAKDD 2020 : Advances in Knowledge Discovery and Data Mining : Proceedings of the 24th Pacific-Asia Conference 2020

Event

Knowledge Discovery and Data Mining. Conference (24th : 2020 : Singapore)

Publisher

Springer

Place of publication

Cham, Switzerland

Series

Knowledge Discovery and Data Mining Conference

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