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gaussian process regression models (gpr)  (MathWorks Inc)


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    MathWorks Inc gaussian process regression models (gpr)
    Gaussian Process Regression Models (Gpr), supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
    https://www.bioz.com/result/gaussian process regression models (gpr)/product/MathWorks Inc
    Average 90 stars, based on 1 article reviews
    gaussian process regression models (gpr) - by Bioz Stars, 2026-03
    90/100 stars

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    (a) Normalized Root Mean Square Error (nRMSE) values between the <t>Gaussian</t> Predictor Response <t>(GPR)</t> predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .
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    MathWorks Inc gaussian regression process (gpr) models
    (a) Normalized Root Mean Square Error (nRMSE) values between the <t>Gaussian</t> Predictor Response <t>(GPR)</t> predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .
    Gaussian Regression Process (Gpr) Models, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
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    (a) Normalized Root Mean Square Error (nRMSE) values between the <t>Gaussian</t> Predictor Response <t>(GPR)</t> predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .
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    (a) Normalized Root Mean Square Error (nRMSE) values between the <t>Gaussian</t> Predictor Response <t>(GPR)</t> predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .
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    (a) Normalized Root Mean Square Error (nRMSE) values between the <t>Gaussian</t> Predictor Response <t>(GPR)</t> predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .
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    Regression analysis of baseline Multilinear Regression and Machine Learning <t>methods—Gaussian</t> Process Regression and Bayesian Regularised Artificial Neural Network. Output along the y -axis shows the normalised output of the surrogate at each of the 32 designs and Target along the x -axis shows normalised simulations results for efficiency at these design points.
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    Informa UK Limited gaussian process regression model
    Regression analysis of baseline Multilinear Regression and Machine Learning <t>methods—Gaussian</t> Process Regression and Bayesian Regularised Artificial Neural Network. Output along the y -axis shows the normalised output of the surrogate at each of the 32 designs and Target along the x -axis shows normalised simulations results for efficiency at these design points.
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    (a) Normalized Root Mean Square Error (nRMSE) values between the Gaussian Predictor Response (GPR) predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .

    Journal: Earth's Future

    Article Title: The Nonlinear and Distinct Responses of Ocean Heat Content and Anthropogenic Carbon to Ice Sheet Freshwater Discharge in a Warming Climate

    doi: 10.1029/2024EF004475

    Figure Lengend Snippet: (a) Normalized Root Mean Square Error (nRMSE) values between the Gaussian Predictor Response (GPR) predicted OHC ANTH and actual OHC ANTH generated by withholding one predictor at a time for the Control (gray), AIS (blue), GrIS (pink), and AGrIS (black) simulations. (b) Same as for panel (a) but for C ANTH .

    Article Snippet: Here, we identify the different driving factors in the FW linear and nonlinear OHC ANTH and C ANTH responses using a predictive, Gaussian Process Regression (GPR) model in MATLAB's Regression Learner toolbox.

    Techniques: Generated, Control

    Regression analysis of baseline Multilinear Regression and Machine Learning methods—Gaussian Process Regression and Bayesian Regularised Artificial Neural Network. Output along the y -axis shows the normalised output of the surrogate at each of the 32 designs and Target along the x -axis shows normalised simulations results for efficiency at these design points.

    Journal: Scientific Reports

    Article Title: Machine learning based on computational fluid dynamics enables geometric design optimisation of the NeoVAD blades

    doi: 10.1038/s41598-023-33708-9

    Figure Lengend Snippet: Regression analysis of baseline Multilinear Regression and Machine Learning methods—Gaussian Process Regression and Bayesian Regularised Artificial Neural Network. Output along the y -axis shows the normalised output of the surrogate at each of the 32 designs and Target along the x -axis shows normalised simulations results for efficiency at these design points.

    Article Snippet: A Gaussian Process Regression model was implemented in MATLAB using a five-fold cross-validation method whereby the data is partitioned to exclude a fifth of available set for training a validation.

    Techniques:

    Comparison of previously best performing pump design from the original 32 base designs and the new optimised blade design at selected operating point of Q = 2 L/min, H = 70 mmHg—the result of the optimisation routine utilising constraint iteration 3 and the Gaussian process regression surrogate model.

    Journal: Scientific Reports

    Article Title: Machine learning based on computational fluid dynamics enables geometric design optimisation of the NeoVAD blades

    doi: 10.1038/s41598-023-33708-9

    Figure Lengend Snippet: Comparison of previously best performing pump design from the original 32 base designs and the new optimised blade design at selected operating point of Q = 2 L/min, H = 70 mmHg—the result of the optimisation routine utilising constraint iteration 3 and the Gaussian process regression surrogate model.

    Article Snippet: A Gaussian Process Regression model was implemented in MATLAB using a five-fold cross-validation method whereby the data is partitioned to exclude a fifth of available set for training a validation.

    Techniques: