Wolfram Language & System 11.0 (2016)|Legacy Documentation

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gives an object representing the result of Bayesian maximization over the function f over the configurations confi.

maximizes over the region represented by the region specification reg.

maximizes over configurations obtained by applying the function sampler.

applies the function nsampler to successively generate configurations starting from the confi.

Details and OptionsDetails and Options

  • BayesianMaximization[] returns a BayesianMaximizationObject[] whose properties can be obtained using BayesianMaximizationObject[]["prop"].
  • Possible properties include:
  • "EvaluationHistory"configurations and values explored during maximization
    "MaximumConfiguration"configuration found that maximizes the result from f
    "MaximumValue"estimated maximum value obtained from f
    "Method"method used for Bayesian maximization
    "NextConfiguration"configuration to sample next if maximization were continued
    "PredictorFunction"best prediction model found for the function f
    "Properties"list of all available properties
  • Configurations can be of any form accepted by Predict (single data element, list of data elements, association of data elements, etc.) and of any type accepted by Predict (numerical, textual, sounds, images, etc.).
  • The function f must output a real-number value when applied to a configuration conf.
  • BayesianMaximization[f,] attempts to find a good maximum using the smallest number of evaluations of f.
  • In BayesianMaximization[f,spec], spec defines the domain of the function f. A domain can be defined by a list of configurations, a geometric region, or a configuration generator function.
  • In BayesianMaximization[f,sampler], sampler[] must output a configuration suitable for f to be applied to it.
  • In BayesianMaximization[f,{conf1,conf2,}nsampler], nsampler[conf] must output a configuration suitable for f to be applied to it.
  • BayesianMaximization takes the following options:
  • AssumeDeterministicFalsewhether to assume that f is deterministic
    InitialEvaluationHistoryNoneinitial set of configurations and values
    MaxIterations100maximum number of iterations
    MethodAutomaticmethod used to determine configurations to evaluate
  • Possible settings for Method include:
  • Automaticautomatically choose the method
    "MaxExpectedImprovement"maximize expected improvement over current best value
    "MaxImprovementProbability"maximize improvement probability over current best value

ExamplesExamplesopen allclose all

Basic Examples  (3)Basic Examples  (3)

Maximize a function over an interval:

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Use the resulting BayesianMaximizationObject[] to get the estimated maximum configuration:

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Get the estimated maximum function value:

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Maximize a function over a set of configurations:

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Get the maximum configuration over the set:

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Maximize a function over a domain defined by a random generator:

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Get the estimated maximum value:

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Introduced in 2016