GaussianProcess¶
(Source code, png, hires.png, pdf)
 
- class GaussianProcess(*args)¶
- Gaussian processes. - Available constructor:
- GaussianProcess(trend, covarianceModel, mesh) - GaussianProcess(covarianceModel, mesh) 
 - Parameters
- trendTrendTransform
- Trend function of the process. By default the trend is null. 
- covarianceModelCovarianceModel
- Temporal covariance model - . 
- meshMesh
- Mesh - over which the domain - is discretized. 
 
- trend
 - Notes - GaussianProcess creates the processes, - where - , from their temporal covariance function - , which writes, in the stationary case: - . A process is normal, if all its finite dimensional joint distributions are normal (See the method - isNormal()for a detailed definition).- The gaussian processes may have a trend: in that case, the Gaussian process is the sum of the trend function - and a zero-mean Gaussian process. - Examples - >>> import openturns as ot >>> ot.RandomGenerator.SetSeed(0) >>> # Default dimension parameter to evaluate the model >>> defaultDimension = 1 >>> # Amplitude values >>> amplitude = [1.0]*defaultDimension >>> # Scale values >>> scale = [1.0]*defaultDimension >>> # Second order model with parameters >>> myModel = ot.AbsoluteExponential(scale, amplitude) >>> # Time grid >>> tmin = 0.0 >>> step = 0.1 >>> n = 11 >>> myTimeGrid = ot.RegularGrid(tmin, step, n) >>> size = 100 >>> myProcess = ot.GaussianProcess(myModel, myTimeGrid) - Methods - Accessor to the object's name. - Get a continuous realization. - Get the covariance model. - Get the description of the process. - getFuture(*args)- Prediction of the - future iterations of the process. - getId()- Accessor to the object's id. - Get the dimension of the domain - . - getMarginal(indices)- Get the - marginal of the random process. - getMesh()- Get the mesh. - getName()- Accessor to the object's name. - Get the dimension of the domain - . - Get a realization of the process. - getSample(size)- Get - realizations of the process. - Accessor to the object's shadowed id. - Get the time grid of observation of the process. - getTrend()- Get the trend function. - Accessor to the object's visibility state. - hasName()- Test if the object is named. - Test if the object has a distinguishable name. - Test whether the process is composite or not. - isNormal()- Test whether the process is normal or not. - Test whether the process is stationary or not. - Tell if the process is trend stationary or not. - setDescription(description)- Set the description of the process. - setMesh(mesh)- Set the mesh. - setName(name)- Accessor to the object's name. - setSamplingMethod(samplingMethod)- Set the used method for getRealization. - setShadowedId(id)- Accessor to the object's shadowed id. - setTimeGrid(timeGrid)- Set the time grid of observation of the process. - setVisibility(visible)- Accessor to the object's visibility state. - __init__(*args)¶
 - getClassName()¶
- Accessor to the object’s name. - Returns
- class_namestr
- The object class name (object.__class__.__name__). 
 
 
 - getContinuousRealization()¶
- Get a continuous realization. - Returns
- realizationFunction
- According to the process, the continuous realizations are built: - either using a dedicated functional model if it exists: e.g. a functional basis process. 
- or using an interpolation from a discrete realization of the process on - : in dimension - , a linear interpolation and in dimension - , a piecewise constant function (the value at a given position is equal to the value at the nearest vertex of the mesh of the process). 
 
 
- realization
 
 - getCovarianceModel()¶
- Get the covariance model. - Returns
- covarianceModelCovarianceModel
- Temporal covariance model - . 
 
- covarianceModel
 
 - getDescription()¶
- Get the description of the process. - Returns
- descriptionDescription
- Description of the process. 
 
- description
 
 - getFuture(*args)¶
- Prediction of the - future iterations of the process. - Parameters
- stepNumberint, 
- Number of future steps. 
- sizeint, , optional 
- Number of futures needed. Default is 1. 
 
- stepNumberint, 
- Returns
- predictionProcessSampleorTimeSeries
- future iterations of the process. If - , prediction is a - TimeSeries. Otherwise, it is a- ProcessSample.
 
- prediction
 
 - getId()¶
- Accessor to the object’s id. - Returns
- idint
- Internal unique identifier. 
 
 
 - getInputDimension()¶
- Get the dimension of the domain - . - Returns
- nint
- Dimension of the domain - : - . 
 
 
 - getMarginal(indices)¶
- Get the - marginal of the random process. - Parameters
- kint or list of ints 
- Index of the marginal(s) needed. 
 
- kint or list of ints 
- Returns
- marginalsProcess
- Process defined with marginal(s) of the random process. 
 
- marginals
 
 - getName()¶
- Accessor to the object’s name. - Returns
- namestr
- The name of the object. 
 
 
 - getOutputDimension()¶
- Get the dimension of the domain - . - Returns
- dint
- Dimension of the domain - . 
 
 
 - getRealization()¶
- Get a realization of the process. - Returns
- realizationField
- Contains a mesh over which the process is discretized and the values of the process at the vertices of the mesh. 
 
- realization
 
 - getSample(size)¶
- Get - realizations of the process. - Parameters
- nint, 
- Number of realizations of the process needed. 
 
- nint, 
- Returns
- processSampleProcessSample
- realizations of the random process. A process sample is a collection of fields which share the same mesh - . 
 
- processSample
 
 - getShadowedId()¶
- Accessor to the object’s shadowed id. - Returns
- idint
- Internal unique identifier. 
 
 
 - getTimeGrid()¶
- Get the time grid of observation of the process. - Returns
- timeGridRegularGrid
- Time grid of a process when the mesh associated to the process can be interpreted as a - RegularGrid. We check if the vertices of the mesh are scalar and are regularly spaced in- but we don’t check if the connectivity of the mesh is conform to the one of a regular grid (without any hole and composed of ordered instants). 
 
- timeGrid
 
 - getTrend()¶
- Get the trend function. - Returns
- trendTrendTransform
- Trend function. 
 
- trend
 
 - 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. 
 
 
 - isComposite()¶
- Test whether the process is composite or not. - Returns
- isCompositebool
- True if the process is composite (built upon a function and a process). 
 
 
 - isNormal()¶
- Test whether the process is normal or not. - Returns
- isNormalbool
- True if the process is normal. 
 
 - Notes - A stochastic process is normal if all its finite dimensional joint distributions are normal, which means that for all - and - , with - , there is - and - such that: - where - , - and - and - is the symmetric matrix: - A Gaussian process is entirely defined by its mean function - and its covariance function - (or correlation function - ). 
 - isStationary()¶
- Test whether the process is stationary or not. - Returns
- isStationarybool
- True if the process is stationary. 
 
 - Notes - A process - is stationary if its distribution is invariant by translation: - , - , - , we have: 
 - isTrendStationary()¶
- Tell if the process is trend stationary or not. - Returns
- isTrendStationarybool
- True if the process is trend stationary. 
 
 
 - setDescription(description)¶
- Set the description of the process. - Parameters
- descriptionsequence of str
- Description of the process. 
 
 
 - setName(name)¶
- Accessor to the object’s name. - Parameters
- namestr
- The name of the object. 
 
 
 - setSamplingMethod(samplingMethod)¶
- Set the used method for getRealization. - Available parameters are : - 0 : Cholesky factor sampling (default method) 
- 1 : H-Matrix method (if H-Mat available) 
- 2 : Gibbs method (in dimension 1 only) 
 - Parameters
- samplingMethodint
- Fix a method for sampling. 
 
 
 - setShadowedId(id)¶
- Accessor to the object’s shadowed id. - Parameters
- idint
- Internal unique identifier. 
 
 
 - setTimeGrid(timeGrid)¶
- Set the time grid of observation of the process. - Returns
- timeGridRegularGrid
- Time grid of observation of the process when the mesh associated to the process can be interpreted as a - RegularGrid. We check if the vertices of the mesh are scalar and are regularly spaced in- but we don’t check if the connectivity of the mesh is conform to the one of a regular grid (without any hole and composed of ordered instants). 
 
- timeGrid
 
 - setVisibility(visible)¶
- Accessor to the object’s visibility state. - Parameters
- visiblebool
- Visibility flag. 
 
 
 
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