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Bayesian Optimisation

Expensive black-box functions are a common problem in many disciplines, including tuning the parameters of machine learning algorithms, robotics, and other engineering design problems. Bayesian Optimisation is a principled and efficient technique for the global optimisation of these functions. The idea behind Bayesian Optimisation is to place a prior distribution over the target function and then update that prior with a set of “true” observations of the target function by expensively evaluating it in order to produce a posterior predictive distribution. The posterior then informs where to make the next observation of the target function through the use of an acquisition function, which balances the exploitation of regions known to have good performance with the exploration of regions where there is little information about the function’s response.

Source: A Bayesian Approach for the Robust Optimisation of Expensive-to-Evaluate Functions

Papers

Showing 4150 of 221 papers

TitleStatusHype
Will More Expressive Graph Neural Networks do Better on Generative Tasks?0
Machine Learning-Assisted Discovery of Flow Reactor Designs0
Adaptive Batch Sizes for Active Learning A Probabilistic Numerics ApproachCode0
Bayesian Optimisation of Functions on Graphs0
Bayesian Optimisation Against Climate Change: Applications and BenchmarksCode0
Learning to Do or Learning While Doing: Reinforcement Learning and Bayesian Optimisation for Online Continuous TuningCode1
End-to-End Meta-Bayesian Optimisation with Transformer Neural ProcessesCode0
Multi-objective optimisation via the R2 utilitiesCode0
NUBO: A Transparent Python Package for Bayesian OptimizationCode1
Applications of Gaussian Processes at Extreme Lengthscales: From Molecules to Black HolesCode1
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