FreeMat
vtkDescriptiveStatistics

Section: Visualization Toolkit Infovis Classes

Usage

Given a selection of columns of interest in an input data table, this class provides the following functionalities, depending on the execution mode it is executed in: Learn: calculate extremal values, arithmetic mean, unbiased variance estimator, skewness estimator, and both sample and G2 estimation of the kurtosis excess. More precisely, Learn calculates the sums; if finalize is set to true (default), the final statistics are calculated with CalculateFromSums. Otherwise, only raw sums are output; this option is made for efficient parallel calculations. Note that CalculateFromSums is a static function, so that it can be used directly with no need to instantiate a vtkDescriptiveStatistics object. Assess: given an input data set in port INPUT_DATA, and a reference value x along with an acceptable deviation d>0, assess all entries in the data set which are outside of [x-d,x+d].

.SECTION Thanks Thanks to Philippe Pebay and David Thompson from Sandia National Laboratories for implementing this class.

To create an instance of class vtkDescriptiveStatistics, simply invoke its constructor as follows

  obj = vtkDescriptiveStatistics

Methods

The class vtkDescriptiveStatistics has several methods that can be used. They are listed below. Note that the documentation is translated automatically from the VTK sources, and may not be completely intelligible. When in doubt, consult the VTK website. In the methods listed below, obj is an instance of the vtkDescriptiveStatistics class.

  • string = obj.GetClassName ()
  • int = obj.IsA (string name)
  • vtkDescriptiveStatistics = obj.NewInstance ()
  • vtkDescriptiveStatistics = obj.SafeDownCast (vtkObject o)
  • obj.SetUnbiasedVariance (int ) - Set/get whether the unbiased estimator for the variance should be used, or if the population variance will be calculated. The default is that the unbiased estimator will be used.
  • int = obj.GetUnbiasedVariance () - Set/get whether the unbiased estimator for the variance should be used, or if the population variance will be calculated. The default is that the unbiased estimator will be used.
  • obj.UnbiasedVarianceOn () - Set/get whether the unbiased estimator for the variance should be used, or if the population variance will be calculated. The default is that the unbiased estimator will be used.
  • obj.UnbiasedVarianceOff () - Set/get whether the unbiased estimator for the variance should be used, or if the population variance will be calculated. The default is that the unbiased estimator will be used.
  • obj.SetSignedDeviations (int ) - Set/get whether the deviations returned should be signed, or should only have their magnitude reported. The default is that signed deviations will be computed.
  • int = obj.GetSignedDeviations () - Set/get whether the deviations returned should be signed, or should only have their magnitude reported. The default is that signed deviations will be computed.
  • obj.SignedDeviationsOn () - Set/get whether the deviations returned should be signed, or should only have their magnitude reported. The default is that signed deviations will be computed.
  • obj.SignedDeviationsOff () - Set/get whether the deviations returned should be signed, or should only have their magnitude reported. The default is that signed deviations will be computed.
  • obj.SetNominalParameter (string name) - A convenience method (in particular for UI wrapping) to set the name of the column that contains the nominal value for the Assess option.
  • obj.SetDeviationParameter (string name) - A convenience method (in particular for UI wrapping) to set the name of the column that contains the deviation for the Assess option.
  • obj.Aggregate (vtkDataObjectCollection , vtkDataObject ) - Given a collection of models, calculate aggregate model