Contour location via entropy reduction leveraging multiple - - PowerPoint PPT Presentation

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Contour location via entropy reduction leveraging multiple - - PowerPoint PPT Presentation

Contour location via entropy reduction leveraging multiple information sources (Poster AB#99) Dr. Alexandre Marques (MIT) Dr. Remi Lam* (MIT) Prof. Karen Willcox (ICES, UT Austin) Supported by Air Force CoE on Multi-Fidelity


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Contour location via entropy reduction leveraging multiple information sources (Poster AB#99)

  • Dr. Alexandre Marques (MIT)

  • Dr. Remi Lam* (MIT)

  • Prof. Karen Willcox (ICES, UT Austin)

Supported by Air Force CoE on Multi-Fidelity Modeling of Rocket Combustor Dynamics, Award FA9550-17-1-0195, and AFOSR MURI on Managing Multiple Information Sources of Multi-Physics Systems, Awards FA9550-15-1-0038 and FA9550-18-1-0023

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* Now at DeepMind

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Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

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SLIDE 3

3

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

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SLIDE 4

4

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

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SLIDE 5

5

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

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SLIDE 6

6

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-7
SLIDE 7

7

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-8
SLIDE 8

8

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-9
SLIDE 9

9

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-10
SLIDE 10

10

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-11
SLIDE 11

11

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-12
SLIDE 12

12

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-13
SLIDE 13

13

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

slide-14
SLIDE 14

14

Multi-information source Single information source

  • In many cases IS0is expensive, but relatively

inexpensive (biased) IS are available

  • How to leverage all IS to produce accurate

classifier at lower cost?

  • Classification requires many information

source (IS) evaluations

  • Active learning based on GP surrogate

produces better classifiers at lower cost

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Contributions

 Contour entropy: measure of uncertainty about the location of the zero contour of function approximated by statistical surrogate model  Decision mechanism: maximizes average reduction of contour entropy via one-step lookahead approach  CLoVER (Contour Location Via Entropy Reduction): algorithm that combines data from multiple information sources to locate contours

  • f expensive functions at low cost

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Poster AB #99

 CLoVER: Contour location via entropy reduction leveraging multiple information sources  Thursday Dec 6th, Poster Session B, 5-7pm  Room 210 & 230

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