Nonlinear Curve Fitter<T> Class
Definition
Assembly: Numerics.NET (in Numerics.NET.dll) Version: 9.0.4
public class NonlinearCurveFitter<T>
- Inheritance
- Object → NonlinearCurveFitter<T>
Type Parameters
- T
- The domain of the nonlinear function.
Remarks
Use the NonlinearCurveFitter<T> class to fit data to a nonlinear function by the method of least squares. The function's domain can be of any type, so it is possible to fit surfaces or arbitrary data. The data is supplied as IList<T> objects through the XValues and a Vector for the YValues properties.
The Fit() method performs the actual curve fit. This method returns a delegate represents the function that best fits the supplied data. The Optimizer property returns the MultidimensionalOptimizer object that was used to find the least squares solution. To verify that the algorithm terminated normally, you can inspect the Optimizer's Status property, which is of type AlgorithmStatus. A value of Normal indicates that the algorithm terminated normally. However, it is still possible that the algorithm didn't converge to the actual best fit. A visual inspection is always recommended.
The parameters of the fitted curve can be retrieved through the BestFitParameters property. The standard deviations associated with each parameter are available through the GetStandardDeviations() method.
By default, the observations are unweighted. You can supply a weighting method in two ways. You can set the WeightFunction property to a function of two variables delegate that computes the weight for each observation. The WeightFunctions class provides predefined delegates for the most common weight functions. Alternatively, you can set the individual weights by setting the WeightVector property to a Vector that contains the weight for each individual observation.
Constructors
Nonlinear | Constructs a new NonlinearCurveFitter object. |
Nonlinear | Constructs a new NonlinearCurveFitter object. |
Properties
Algorithm | Gets or sets the nonlinear least squares algorithm that is to be used in the calculations. |
Best | Gets the curve parameters corresponding to the best fit. |
Function | Gets or sets the function to be fitted. |
Function | Gets or sets the gradient of the function to be fitted. |
Initial | Gets or sets the initial value for the iteration. |
Lower | Gets or sets the vector of lower bounds of the curve parameters. |
Optimizer | Gets the optimizer used to calculate the nonlinear least-squares solution. |
Residuals | Gets the residuals for the observations. |
Scale | Gets or sets the vector used to scale the curve parameters. |
Standard | Gets the standard error of the curve fit. |
Upper | Gets or sets the vector of upper bounds of the curve parameters. |
Weight | Gets or sets the weight function. |
Weight | Gets or sets the weight vector. |
XValues | Gets or sets the vector of x-values. |
YValues | Gets or sets the vector of y-values. |
Methods
Equals | Determines whether the specified object is equal to the current object. (Inherited from Object) |
Finalize | Allows an object to try to free resources and perform other cleanup operations before it is reclaimed by garbage collection. (Inherited from Object) |
Fit | Calculates the least-squares fit. |
Get | Gets the width of the confidence band around the best-fit curve at the specified point at the 95% confidence level. |
Get | Gets the width of the confidence band around the best-fit curve at the specified point. |
Get | Serves as the default hash function. (Inherited from Object) |
Get | Gets the width of the prediction band around the best-fit curve at the specified point at the 95% confidence level. |
Get | Gets the width of the prediction band around the best-fit curve at the specified point. |
Get | Gets the standard deviations. |
Get | Gets the Type of the current instance. (Inherited from Object) |
Get | Returns the variance-covariance matrix of the fit. |
Memberwise | Creates a shallow copy of the current Object. (Inherited from Object) |
ToString | Returns a string that represents the current object. (Inherited from Object) |