SubsetSampling¶
- class SubsetSampling(*args)¶
Subset simulation.
- Parameters:
- event
RandomVector
Event we are computing the probability.
- proposalRangefloat, optional
Proposal range length
- targetProbabilityfloat, optional
Value of between successive steps
- event
See also
Notes
The goal is to estimate the following probability
The idea of the subset simulation method [au2001] is to replace simulating a rare failure event in the original probability space by a sequence of simulations of more frequent conditional events
The original probability estimate rewrites
And each conditional subset failure region is chosen by setting the threshold so that leads to a conditional failure probability of order
The conditional samples are generated by the means of Markov Chains, using the Metropolis Hastings algorithm.
being the number of simulations per subset, and the conditional probability of each subset event, and the autocorrelation between Markov chain samples.
The first event not being conditional, expresses as the classic Monte Carlo c.o.v.
Methods
drawProbabilityConvergence
(*args)Draw the probability convergence at a given level.
Accessor to the block size.
Accessor to the object's name.
Coefficient of variation per step accessor.
Conditional probability accessor.
Accessor to the convergence strategy.
getEvent
()Accessor to the event.
Autocorrelation accessor.
getId
()Accessor to the object's id.
Initial experiment accessor.
getInputSample
(*args)Input sample accessor.
Accessor to the maximum coefficient of variation.
Accessor to the maximum sample size.
Accessor to the maximum standard deviation.
Minimum probability accessor.
getName
()Accessor to the object's name.
getOutputSample
(*args)Output sample accessor.
Probability estimate accessor.
Proposal range length accessor.
Accessor to the results.
Accessor to the object's shadowed id.
Subset steps number accessor.
Threshold accessor.
Accessor to the object's visibility state.
hasName
()Test if the object is named.
Test if the object has a distinguishable name.
run
()Launch simulation.
setBlockSize
(blockSize)Accessor to the block size.
setConditionalProbability
(conditionalProbability)Conditional probability accessor.
setConvergenceStrategy
(convergenceStrategy)Accessor to the convergence strategy.
setInitialExperiment
(initialExperiment)Initial experiment accessor.
setKeepSample
(keepSample)Sample storage accessor.
Accessor to the maximum coefficient of variation.
setMaximumOuterSampling
(maximumOuterSampling)Accessor to the maximum sample size.
Accessor to the maximum standard deviation.
setMinimumProbability
(minimumProbability)Minimum probability accessor.
setName
(name)Accessor to the object's name.
setProgressCallback
(*args)Set up a progress callback.
setProposalRange
(proposalRange)Proposal range length accessor.
setShadowedId
(id)Accessor to the object's shadowed id.
setStopCallback
(*args)Set up a stop callback.
setVisibility
(visible)Accessor to the object's visibility state.
getEventInputSample
getEventOutputSample
getVerbose
setBetaMin
setISubset
setKeepEventSample
setVerbose
- __init__(*args)¶
- drawProbabilityConvergence(*args)¶
Draw the probability convergence at a given level.
- Parameters:
- levelfloat, optional
The probability convergence is drawn at this given confidence length level. By default level is 0.95.
- Returns:
- grapha
Graph
probability convergence graph
- grapha
- getBlockSize()¶
Accessor to the block size.
- Returns:
- blockSizeint
Number of terms in the probability simulation estimator grouped together. It is set by default to 1.
- getClassName()¶
Accessor to the object’s name.
- Returns:
- class_namestr
The object class name (object.__class__.__name__).
- getCoefficientOfVariationPerStep()¶
Coefficient of variation per step accessor.
- Returns:
- coef
Point
Coefficient of variation at each subset step.
- coef
- getConditionalProbability()¶
Conditional probability accessor.
Value of between successive steps.
- Returns:
- probfloat
Conditional probability value.
- getConvergenceStrategy()¶
Accessor to the convergence strategy.
- Returns:
- storage_strategy
HistoryStrategy
Storage strategy used to store the values of the probability estimator and its variance during the simulation algorithm.
- storage_strategy
- getEvent()¶
Accessor to the event.
- Returns:
- event
RandomVector
Event we want to evaluate the probability.
- event
- getId()¶
Accessor to the object’s id.
- Returns:
- idint
Internal unique identifier.
- getInitialExperiment()¶
Initial experiment accessor.
- Returns:
- initialExperiment
WeightedExperiment
Experiment for first step.
- initialExperiment
- getInputSample(*args)¶
Input sample accessor.
- Parameters:
- stepint
Iteration index
- selectint, optional
Selection flag:
EVENT0 : points not realizing the event are selected
EVENT1 : points realizing the event are selected
BOTH : all points are selected (default)
- Returns:
- inputSample
Sample
Input sample.
- inputSample
- getMaximumCoefficientOfVariation()¶
Accessor to the maximum coefficient of variation.
- Returns:
- coefficientfloat
Maximum coefficient of variation of the simulated sample.
- getMaximumOuterSampling()¶
Accessor to the maximum sample size.
- Returns:
- outerSamplingint
Maximum number of groups of terms in the probability simulation estimator.
- getMaximumStandardDeviation()¶
Accessor to the maximum standard deviation.
- Returns:
- sigmafloat,
Maximum standard deviation of the estimator.
- getMinimumProbability()¶
Minimum probability accessor.
- Returns:
- prob_minfloat
Minimum probability.
- getName()¶
Accessor to the object’s name.
- Returns:
- namestr
The name of the object.
- getOutputSample(*args)¶
Output sample accessor.
- Parameters:
- stepint
Iteration index
- selectint, optional
Selection flag:
EVENT0 : points not realizing the event are selected
EVENT1 : points realizing the event are selected
BOTH : all points are selected (default)
- Returns:
- outputSample
Sample
Output sample.
- outputSample
- getProbabilityEstimatePerStep()¶
Probability estimate accessor.
- Returns:
- prob
Point
Probability estimate at each step.
- prob
- getProposalRange()¶
Proposal range length accessor.
- Returns:
- rangefloat
Range length.
- getResult()¶
Accessor to the results.
- Returns:
- results
SimulationResult
Structure containing all the results obtained after simulation and created by the method
run()
.
- results
- getShadowedId()¶
Accessor to the object’s shadowed id.
- Returns:
- idint
Internal unique identifier.
- getStepsNumber()¶
Subset steps number accessor.
- Returns:
- nint
Number of subset steps, including the initial Monte Carlo sampling.
- getVisibility()¶
Accessor to the object’s visibility state.
- Returns:
- visiblebool
Visibility flag.
- hasName()¶
Test if the object is named.
- Returns:
- hasNamebool
True if the name is not empty.
- hasVisibleName()¶
Test if the object has a distinguishable name.
- Returns:
- hasVisibleNamebool
True if the name is not empty and not the default one.
- run()¶
Launch simulation.
Notes
It launches the simulation and creates a
SimulationResult
, structure containing all the results obtained after simulation. It computes the probability of occurrence of the given event by computing the empirical mean of a sample of size at most outerSampling * blockSize, this sample being built by blocks of size blockSize. It allows one to use efficiently the distribution of the computation as well as it allows one to deal with a sample size by a combination of blockSize and outerSampling.
- setBlockSize(blockSize)¶
Accessor to the block size.
- Parameters:
- blockSizeint,
Number of terms in the probability simulation estimator grouped together. It is set by default to 1.
Notes
For Monte Carlo, LHS and Importance Sampling methods, this allows one to save space while allowing multithreading, when available we recommend to use the number of available CPUs; for the Directional Sampling, we recommend to set it to 1.
- setConditionalProbability(conditionalProbability)¶
Conditional probability accessor.
Value of between successive steps.
- Parameters:
- probfloat
Conditional probability value.
- setConvergenceStrategy(convergenceStrategy)¶
Accessor to the convergence strategy.
- Parameters:
- storage_strategy
HistoryStrategy
Storage strategy used to store the values of the probability estimator and its variance during the simulation algorithm.
- storage_strategy
- setInitialExperiment(initialExperiment)¶
Initial experiment accessor.
- Parameters:
- initialExperiment
WeightedExperiment
Experiment for first step.
- initialExperiment
- setKeepSample(keepSample)¶
Sample storage accessor.
- Parameters:
- keepsamplebool
Whether to keep the working samples at each iteration.
- setMaximumCoefficientOfVariation(maximumCoefficientOfVariation)¶
Accessor to the maximum coefficient of variation.
- Parameters:
- coefficientfloat
Maximum coefficient of variation of the simulated sample.
- setMaximumOuterSampling(maximumOuterSampling)¶
Accessor to the maximum sample size.
- Parameters:
- outerSamplingint
Maximum number of groups of terms in the probability simulation estimator.
- setMaximumStandardDeviation(maximumStandardDeviation)¶
Accessor to the maximum standard deviation.
- Parameters:
- sigmafloat,
Maximum standard deviation of the estimator.
- setMinimumProbability(minimumProbability)¶
Minimum probability accessor.
Allows one to stop the algorithm if the probability becomes too small.
- Parameters:
- prob_minfloat, defaults to the square root of SpecFunc.MinScalar
Minimum probability.
- setName(name)¶
Accessor to the object’s name.
- Parameters:
- namestr
The name of the object.
- setProgressCallback(*args)¶
Set up a progress callback.
Can be used to programmatically report the progress of a simulation.
- Parameters:
- callbackcallable
Takes a float as argument as percentage of progress.
Examples
>>> import sys >>> import openturns as ot >>> experiment = ot.MonteCarloExperiment() >>> X = ot.RandomVector(ot.Normal()) >>> Y = ot.CompositeRandomVector(ot.SymbolicFunction(['X'], ['1.1*X']), X) >>> event = ot.ThresholdEvent(Y, ot.Less(), -2.0) >>> algo = ot.ProbabilitySimulationAlgorithm(event, experiment) >>> algo.setMaximumOuterSampling(100) >>> algo.setMaximumCoefficientOfVariation(-1.0) >>> def report_progress(progress): ... sys.stderr.write('-- progress=' + str(progress) + '%\n') >>> algo.setProgressCallback(report_progress) >>> algo.run()
- setProposalRange(proposalRange)¶
Proposal range length accessor.
- Parameters:
- rangefloat
Range length.
- setShadowedId(id)¶
Accessor to the object’s shadowed id.
- Parameters:
- idint
Internal unique identifier.
- setStopCallback(*args)¶
Set up a stop callback.
Can be used to programmatically stop a simulation.
- Parameters:
- callbackcallable
Returns an int deciding whether to stop or continue.
Examples
Stop a Monte Carlo simulation algorithm using a time limit
>>> import openturns as ot >>> experiment = ot.MonteCarloExperiment() >>> X = ot.RandomVector(ot.Normal()) >>> Y = ot.CompositeRandomVector(ot.SymbolicFunction(['X'], ['1.1*X']), X) >>> event = ot.ThresholdEvent(Y, ot.Less(), -2.0) >>> algo = ot.ProbabilitySimulationAlgorithm(event, experiment) >>> algo.setMaximumOuterSampling(10000000) >>> algo.setMaximumCoefficientOfVariation(-1.0) >>> timer = ot.TimerCallback(0.1) >>> algo.setStopCallback(timer) >>> algo.run()
- setVisibility(visible)¶
Accessor to the object’s visibility state.
- Parameters:
- visiblebool
Visibility flag.