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ROOT::Minuit2::FumiliMaximumLikelihoodFCN Class Referenceabstract

Extension of the FCNBase for the Fumili method.

Fumili applies only to minimization problems used for fitting. The method is based on a linearization of the model function negleting second derivatives. User needs to provide the model function. In this cased the function to be minimized is the sum of the logarithms of the model function for the different measurements times -1.

Author
Andras Zsenei and Lorenzo Moneta, Creation date: 3 Sep 2004
See also
MINUIT Tutorial on function minimization, section 5
FumiliStandardMaximumLikelihoodFCN

Definition at line 46 of file FumiliMaximumLikelihoodFCN.h.

Public Member Functions

 FumiliMaximumLikelihoodFCN ()
virtual unsigned int Dimension ()
 return number of function variable (parameters) , i.e.
virtual std::vector< doubleElements (std::vector< double > const &par) const =0
 Evaluates the model function for the different measurement points and the Parameter values supplied, calculates a figure-of-merit for each measurement and returns a vector containing the result of this evaluation.
virtual double ErrorDef () const
 Error definition of the function.
virtual void EvaluateAll (std::vector< double > const &par)=0
 Evaluate function Value, Gradient and Hessian using Fumili approximation, for values of parameters p The result is cached inside and is return from the FumiliFCNBase::Value , FumiliFCNBase::Gradient and FumiliFCNBase::Hessian methods.
virtual std::vector< doubleG2 (std::vector< double > const &) const
 Return the diagonal elements of the Hessian (second derivatives).
virtual const std::vector< double > & GetMeasurement (int Index) const =0
 Accessor to the parameters of a given measurement.
virtual int GetNumberOfMeasurements () const =0
 Accessor to the number of measurements used for calculating the present figure of merit.
virtual const std::vector< double > & Gradient () const
 Return cached Value of function Gradient estimated previously using the FumiliFCNBase::EvaluateAll method.
std::vector< doubleGradient (std::vector< double > const &) const override
 Return the gradient vector of the function at the given parameter point.
virtual std::vector< doubleGradientWithPrevResult (std::vector< double > const &parameters, double *, double *, double *) const
virtual GradientParameterSpace gradParameterSpace () const
virtual bool HasG2 () const
bool HasGradient () const override
virtual bool HasHessian () const
std::vector< doubleHessian (std::vector< double > const &) const override
 Return Value of the i-th j-th element of the Hessian matrix estimated previously using the FumiliFCNBase::EvaluateAll method.
virtual double Hessian (unsigned int row, unsigned int col) const
const ParametricFunctionModelFunction () const
 Returns the model function used for the data.
double operator() (std::vector< double > const &par) const override
 Calculates the function for the maximum likelihood method.
virtual void SetErrorDef (double)
 add interface to set dynamically a new error definition Re-implement this function if needed.
void SetModelFunction (const ParametricFunction &modelFCN)
 Sets the model function for the data (for example gaussian+linear for a peak).
double Up () const override
 !
virtual double Value () const
 Return cached Value of objective function estimated previously using the FumiliFCNBase::EvaluateAll method.

Protected Member Functions

std::vector< double > & Gradient ()
std::vector< double > & Hessian ()
virtual void InitAndReset (unsigned int npar)
 initialize and reset values of gradien and Hessian
void SetFCNValue (double value)

Private Attributes

std::vector< doublefGradient
std::vector< doublefHessian
const ParametricFunctionfModelFunction
unsigned int fNumberOfParameters
double fValue

#include <Minuit2/FumiliMaximumLikelihoodFCN.h>

Inheritance diagram for ROOT::Minuit2::FumiliMaximumLikelihoodFCN:
ROOT::Minuit2::FumiliFCNBase ROOT::Minuit2::FCNBase ROOT::Minuit2::FumiliStandardMaximumLikelihoodFCN

Constructor & Destructor Documentation

◆ FumiliMaximumLikelihoodFCN()

ROOT::Minuit2::FumiliMaximumLikelihoodFCN::FumiliMaximumLikelihoodFCN ( )
inline

Definition at line 49 of file FumiliMaximumLikelihoodFCN.h.

Member Function Documentation

◆ Dimension()

virtual unsigned int ROOT::Minuit2::FumiliFCNBase::Dimension ( )
inlinevirtualinherited

return number of function variable (parameters) , i.e.

function dimension

Definition at line 121 of file FumiliFCNBase.h.

◆ Elements()

virtual std::vector< double > ROOT::Minuit2::FumiliMaximumLikelihoodFCN::Elements ( std::vector< double > const & par) const
pure virtual

Evaluates the model function for the different measurement points and the Parameter values supplied, calculates a figure-of-merit for each measurement and returns a vector containing the result of this evaluation.

Parameters
parvector of Parameter values to feed to the model function.
Returns
A vector containing the figures-of-merit for the model function evaluated for each set of measurements.

Implemented in ROOT::Minuit2::FumiliStandardMaximumLikelihoodFCN.

◆ ErrorDef()

virtual double ROOT::Minuit2::FCNBase::ErrorDef ( ) const
inlinevirtualinherited

Error definition of the function.

MINUIT defines Parameter errors as the change in Parameter Value required to change the function Value by up. Normally, for chisquared fits it is 1, and for negative log likelihood, its Value is 0.5. If the user wants instead the 2-sigma errors for chisquared fits, it becomes 4, as Chi2(x+n*sigma) = Chi2(x) + n*n.

Comment a little bit better with links!!!!!!!!!!!!!!!!!

Definition at line 70 of file FCNBase.h.

◆ EvaluateAll()

virtual void ROOT::Minuit2::FumiliFCNBase::EvaluateAll ( std::vector< double > const & par)
pure virtualinherited

Evaluate function Value, Gradient and Hessian using Fumili approximation, for values of parameters p The result is cached inside and is return from the FumiliFCNBase::Value , FumiliFCNBase::Gradient and FumiliFCNBase::Hessian methods.

Parameters
parvector of parameters

Implemented in ROOT::Minuit2::FumiliFCNAdapter< Function >, ROOT::Minuit2::FumiliStandardChi2FCN, and ROOT::Minuit2::FumiliStandardMaximumLikelihoodFCN.

◆ G2()

virtual std::vector< double > ROOT::Minuit2::FCNBase::G2 ( std::vector< double > const & ) const
inlinevirtualinherited

Return the diagonal elements of the Hessian (second derivatives).

By default, returns an empty vector. Override this method if analytic second derivatives (per-parameter curvature) are available.

Parameters
vParameter vector.
Returns
Vector of second derivatives with respect to each parameter.

Reimplemented in ROOT::Minuit2::FCNAdapter.

Definition at line 116 of file FCNBase.h.

◆ GetMeasurement()

virtual const std::vector< double > & ROOT::Minuit2::FumiliMaximumLikelihoodFCN::GetMeasurement ( int Index) const
pure virtual

Accessor to the parameters of a given measurement.

For example in the case of a chi-square fit with a one-dimensional Gaussian, the Parameter characterizing the measurement will be the position. It is the Parameter that is passed to the model function.

Parameters
IndexIndex of the measueremnt the parameters of which to return
Returns
A vector containing the values characterizing a measurement

Implemented in ROOT::Minuit2::FumiliStandardMaximumLikelihoodFCN.

◆ GetNumberOfMeasurements()

virtual int ROOT::Minuit2::FumiliMaximumLikelihoodFCN::GetNumberOfMeasurements ( ) const
pure virtual

Accessor to the number of measurements used for calculating the present figure of merit.

Returns
the number of measurements

Implemented in ROOT::Minuit2::FumiliStandardMaximumLikelihoodFCN.

◆ Gradient() [1/3]

std::vector< double > & ROOT::Minuit2::FumiliFCNBase::Gradient ( )
inlineprotectedinherited

Definition at line 138 of file FumiliFCNBase.h.

◆ Gradient() [2/3]

virtual const std::vector< double > & ROOT::Minuit2::FumiliFCNBase::Gradient ( ) const
inlinevirtualinherited

Return cached Value of function Gradient estimated previously using the FumiliFCNBase::EvaluateAll method.

Definition at line 97 of file FumiliFCNBase.h.

◆ Gradient() [3/3]

std::vector< double > ROOT::Minuit2::FumiliFCNBase::Gradient ( std::vector< double > const & ) const
inlineoverridevirtualinherited

Return the gradient vector of the function at the given parameter point.

By default, returns an empty vector (no analytic gradient provided). Override this method if an analytic gradient is available.

Parameters
vParameter vector.
Returns
Gradient vector with respect to the parameters.

Reimplemented from ROOT::Minuit2::FCNBase.

Definition at line 98 of file FumiliFCNBase.h.

◆ GradientWithPrevResult()

virtual std::vector< double > ROOT::Minuit2::FCNBase::GradientWithPrevResult ( std::vector< double > const & parameters,
double * ,
double * ,
double *  ) const
inlinevirtualinherited
Warning
Not meant to be overridden! This is a requirement for an internal optimization in RooFit that might go away with any refactoring.

Definition at line 99 of file FCNBase.h.

◆ gradParameterSpace()

virtual GradientParameterSpace ROOT::Minuit2::FCNBase::gradParameterSpace ( ) const
inlinevirtualinherited
Warning
Not meant to be overridden! This is a requirement for an internal optimization in RooFit that might go away with any refactoring.

Definition at line 107 of file FCNBase.h.

◆ HasG2()

virtual bool ROOT::Minuit2::FCNBase::HasG2 ( ) const
inlinevirtualinherited

Reimplemented in ROOT::Minuit2::FCNAdapter.

Definition at line 129 of file FCNBase.h.

◆ HasGradient()

bool ROOT::Minuit2::FumiliFCNBase::HasGradient ( ) const
inlineoverridevirtualinherited

Reimplemented from ROOT::Minuit2::FCNBase.

Definition at line 56 of file FumiliFCNBase.h.

◆ HasHessian()

virtual bool ROOT::Minuit2::FCNBase::HasHessian ( ) const
inlinevirtualinherited

Reimplemented in ROOT::Minuit2::FCNAdapter.

Definition at line 127 of file FCNBase.h.

◆ Hessian() [1/3]

std::vector< double > & ROOT::Minuit2::FumiliFCNBase::Hessian ( )
inlineprotectedinherited

Definition at line 140 of file FumiliFCNBase.h.

◆ Hessian() [2/3]

std::vector< double > ROOT::Minuit2::FumiliFCNBase::Hessian ( std::vector< double > const & ) const
inlineoverridevirtualinherited

Return Value of the i-th j-th element of the Hessian matrix estimated previously using the FumiliFCNBase::EvaluateAll method.

Parameters
rowrow Index of the matrix
colcol Index of the matrix

Reimplemented from ROOT::Minuit2::FCNBase.

Definition at line 107 of file FumiliFCNBase.h.

◆ Hessian() [3/3]

virtual double ROOT::Minuit2::FumiliFCNBase::Hessian ( unsigned int row,
unsigned int col ) const
inlinevirtualinherited

Definition at line 108 of file FumiliFCNBase.h.

◆ InitAndReset()

virtual void ROOT::Minuit2::FumiliFCNBase::InitAndReset ( unsigned int npar)
inlineprotectedvirtualinherited

initialize and reset values of gradien and Hessian

Definition at line 128 of file FumiliFCNBase.h.

◆ ModelFunction()

const ParametricFunction * ROOT::Minuit2::FumiliMaximumLikelihoodFCN::ModelFunction ( ) const
inline

Returns the model function used for the data.

Returns
Returns a pointer to the model function.

Definition at line 69 of file FumiliMaximumLikelihoodFCN.h.

◆ operator()()

double ROOT::Minuit2::FumiliMaximumLikelihoodFCN::operator() ( std::vector< double > const & par) const
inlineoverridevirtual

Calculates the function for the maximum likelihood method.

The user must implement in a class which inherits from FumiliChi2FCN the member function Elements() which will supply the Elements for the sum.

Parameters
parvector containing the Parameter values for the model function
Returns
The sum of the natural logarithm of the Elements multiplied by -1
See also
FumiliFCNBase::elements

Implements ROOT::Minuit2::FCNBase.

Definition at line 127 of file FumiliMaximumLikelihoodFCN.h.

◆ SetErrorDef()

virtual void ROOT::Minuit2::FCNBase::SetErrorDef ( double )
inlinevirtualinherited

add interface to set dynamically a new error definition Re-implement this function if needed.

Reimplemented in ROOT::Minuit2::FCNAdapter, and ROOT::Minuit2::FumiliFCNAdapter< Function >.

Definition at line 84 of file FCNBase.h.

◆ SetFCNValue()

void ROOT::Minuit2::FumiliFCNBase::SetFCNValue ( double value)
inlineprotectedinherited

Definition at line 136 of file FumiliFCNBase.h.

◆ SetModelFunction()

void ROOT::Minuit2::FumiliMaximumLikelihoodFCN::SetModelFunction ( const ParametricFunction & modelFCN)
inline

Sets the model function for the data (for example gaussian+linear for a peak).

Parameters
modelFCNa reference to the model function.

Definition at line 59 of file FumiliMaximumLikelihoodFCN.h.

◆ Up()

double ROOT::Minuit2::FumiliMaximumLikelihoodFCN::Up ( ) const
inlineoverridevirtual

!

!!!!!!!!!!! to be commented

Implements ROOT::Minuit2::FCNBase.

Definition at line 151 of file FumiliMaximumLikelihoodFCN.h.

◆ Value()

virtual double ROOT::Minuit2::FumiliFCNBase::Value ( ) const
inlinevirtualinherited

Return cached Value of objective function estimated previously using the FumiliFCNBase::EvaluateAll method.

Definition at line 91 of file FumiliFCNBase.h.

Member Data Documentation

◆ fGradient

std::vector<double> ROOT::Minuit2::FumiliFCNBase::fGradient
privateinherited

Definition at line 145 of file FumiliFCNBase.h.

◆ fHessian

std::vector<double> ROOT::Minuit2::FumiliFCNBase::fHessian
privateinherited

Definition at line 146 of file FumiliFCNBase.h.

◆ fModelFunction

const ParametricFunction* ROOT::Minuit2::FumiliMaximumLikelihoodFCN::fModelFunction
private

Definition at line 155 of file FumiliMaximumLikelihoodFCN.h.

◆ fNumberOfParameters

unsigned int ROOT::Minuit2::FumiliFCNBase::fNumberOfParameters
privateinherited

Definition at line 143 of file FumiliFCNBase.h.

◆ fValue

double ROOT::Minuit2::FumiliFCNBase::fValue
privateinherited

Definition at line 144 of file FumiliFCNBase.h.


The documentation for this class was generated from the following file: