public class LeastSquaresConverter extends Object implements MultivariateFunction
vectorial objective functions
to
scalar objective functions
when the goal is to minimize them.
MultivariateFunction
interface and can therefore be
minimized by any optimizer supporting scalar objectives functions.This is one way
to perform a least square estimation. There are other ways to do this without using
this converter, as some optimization algorithms directly support vectorial objective
functions.
MultivariateFunction
,
MultivariateVectorFunction
Constructor and Description |
---|
LeastSquaresConverter(MultivariateVectorFunction function,
double[] observations)
Builds a simple converter for uncorrelated residuals with identical
weights.
|
LeastSquaresConverter(MultivariateVectorFunction function,
double[] observations,
double[] weights)
Builds a simple converter for uncorrelated residuals with the
specified weights.
|
LeastSquaresConverter(MultivariateVectorFunction function,
double[] observations,
RealMatrix scale)
Builds a simple converter for correlated residuals with the
specified weights.
|
Modifier and Type | Method and Description |
---|---|
double |
value(double[] point)
Compute the value for the function at the given point.
|
public LeastSquaresConverter(MultivariateVectorFunction function, double[] observations)
function
- vectorial residuals function to wrapobservations
- observations to be compared to objective function to compute residualspublic LeastSquaresConverter(MultivariateVectorFunction function, double[] observations, double[] weights)
The scalar objective function value is computed as:
objective = ∑weighti(observationi-objectivei)2
Weights can be used for example to combine residuals with different standard deviations. As an example, consider a residuals array in which even elements are angular measurements in degrees with a 0.01° standard deviation and odd elements are distance measurements in meters with a 15m standard deviation. In this case, the weights array should be initialized with value 1.0/(0.012) in the even elements and 1.0/(15.02) in the odd elements (i.e. reciprocals of variances).
The array computed by the objective function, the observations array and the
weights array must have consistent sizes or a MathIllegalArgumentException
will be triggered while computing the scalar objective.
function
- vectorial residuals function to wrapobservations
- observations to be compared to objective function to compute residualsweights
- weights to apply to the residualsMathIllegalArgumentException
- if the observations vector and the weights
vector dimensions do not match (objective function dimension is checked only when
the value(double[])
method is called)public LeastSquaresConverter(MultivariateVectorFunction function, double[] observations, RealMatrix scale)
The scalar objective function value is computed as:
objective = yTy with y = scale×(observation-objective)
The array computed by the objective function, the observations array and the
the scaling matrix must have consistent sizes or a MathIllegalArgumentException
will be triggered while computing the scalar objective.
function
- vectorial residuals function to wrapobservations
- observations to be compared to objective function to compute residualsscale
- scaling matrixMathIllegalArgumentException
- if the observations vector and the scale
matrix dimensions do not match (objective function dimension is checked only when
the value(double[])
method is called)public double value(double[] point)
value
in interface MultivariateFunction
point
- Point at which the function must be evaluated.Copyright © 2016–2020 Hipparchus.org. All rights reserved.