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Update the default SingleTaskGP prior #2610

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Summary:
X-link: pytorch/botorch#2449

See title

Differential Revision: D60080819

@facebook-github-bot facebook-github-bot added the CLA Signed Do not delete this pull request or issue due to inactivity. label Jul 29, 2024
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This pull request was exported from Phabricator. Differential Revision: D60080819

hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 29, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

See title

Differential Revision: D60080819
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This pull request was exported from Phabricator. Differential Revision: D60080819

hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 29, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 29, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
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This pull request was exported from Phabricator. Differential Revision: D60080819

hvarfner pushed a commit to hvarfner/Ax that referenced this pull request Jul 29, 2024
Summary:
Pull Request resolved: facebook#2610

X-link: pytorch/botorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 29, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 29, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 30, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 30, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 30, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
@facebook-github-bot
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This pull request was exported from Phabricator. Differential Revision: D60080819

hvarfner pushed a commit to hvarfner/Ax that referenced this pull request Jul 30, 2024
Summary:
Pull Request resolved: facebook#2610

X-link: pytorch/botorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
Summary:
Pull Request resolved: facebook#2610

X-link: pytorch/botorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
@facebook-github-bot
Copy link
Contributor

This pull request was exported from Phabricator. Differential Revision: D60080819

hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 30, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
hvarfner pushed a commit to hvarfner/botorch that referenced this pull request Jul 30, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: pytorch#2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: saitcakmak

Differential Revision: D60080819
facebook-github-bot pushed a commit to pytorch/botorch that referenced this pull request Jul 31, 2024
Summary:
X-link: facebook/Ax#2610

Pull Request resolved: #2449

Update of the default hyperparameter priors for the SingleTaskGP.

Switch from the conventional Scale-Matern kernel with Gamma(3, 6) lengthscale prior is substituted for an RBF Kernel (without a ScaleKernel), and a change from the high-noise Gamma(1.1, 0.05) noise prior of the GaussianLikelihood to a LogNormal prior that prefers lower values. The change is made in accordance with the findings of [1].

 The change is made to improve the out-of-the-box performance of the BoTorch models on high-dimensional problems.

[1] Carl Hvarfner, Erik Orm Hellsten, Luigi Nardi. _Vanilla Bayesian Optimization Performs Great in High Dimensions_. ICML, 2024.

Reviewed By: dme65, saitcakmak

Differential Revision: D60080819

fbshipit-source-id: d55ff91dee9949cbd7f5828531644fc001cb3e22
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This pull request has been merged in 7e6a7db.

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