org.apache.commons.math3.analysis.interpolation
Class LoessInterpolator

java.lang.Object
  extended by org.apache.commons.math3.analysis.interpolation.LoessInterpolator
All Implemented Interfaces:
Serializable, UnivariateInterpolator

public class LoessInterpolator
extends Object
implements UnivariateInterpolator, Serializable

Implements the Local Regression Algorithm (also Loess, Lowess) for interpolation of real univariate functions.

For reference, see William S. Cleveland - Robust Locally Weighted Regression and Smoothing Scatterplots

This class implements both the loess method and serves as an interpolation adapter to it, allowing one to build a spline on the obtained loess fit.

Since:
2.0
Version:
$Id: LoessInterpolator.java 7721 2013-02-14 14:07:13Z CardosoP $
See Also:
Serialized Form

Field Summary
static double DEFAULT_ACCURACY
          Default value for accuracy.
static double DEFAULT_BANDWIDTH
          Default value of the bandwidth parameter.
static int DEFAULT_ROBUSTNESS_ITERS
          Default value of the number of robustness iterations.
 
Constructor Summary
LoessInterpolator()
          Constructs a new LoessInterpolator with a bandwidth of DEFAULT_BANDWIDTH, DEFAULT_ROBUSTNESS_ITERS robustness iterations and an accuracy of {#link #DEFAULT_ACCURACY}.
LoessInterpolator(double bandwidth, int robustnessIters)
          Construct a new LoessInterpolator with given bandwidth and number of robustness iterations.
LoessInterpolator(double bandwidth, int robustnessIters, double accuracy)
          Construct a new LoessInterpolator with given bandwidth, number of robustness iterations and accuracy.
 
Method Summary
 PolynomialSplineFunction interpolate(double[] xval, double[] yval)
          Compute an interpolating function by performing a loess fit on the data at the original abscissae and then building a cubic spline with a SplineInterpolator on the resulting fit.
 double[] smooth(double[] xval, double[] yval)
          Compute a loess fit on the data at the original abscissae.
 double[] smooth(double[] xval, double[] yval, double[] weights)
          Compute a weighted loess fit on the data at the original abscissae.
 
Methods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
 

Field Detail

DEFAULT_BANDWIDTH

public static final double DEFAULT_BANDWIDTH
Default value of the bandwidth parameter.

See Also:
Constant Field Values

DEFAULT_ROBUSTNESS_ITERS

public static final int DEFAULT_ROBUSTNESS_ITERS
Default value of the number of robustness iterations.

See Also:
Constant Field Values

DEFAULT_ACCURACY

public static final double DEFAULT_ACCURACY
Default value for accuracy.

Since:
2.1
See Also:
Constant Field Values
Constructor Detail

LoessInterpolator

public LoessInterpolator()
Constructs a new LoessInterpolator with a bandwidth of DEFAULT_BANDWIDTH, DEFAULT_ROBUSTNESS_ITERS robustness iterations and an accuracy of {#link #DEFAULT_ACCURACY}. See LoessInterpolator(double, int, double) for an explanation of the parameters.


LoessInterpolator

public LoessInterpolator(double bandwidth,
                         int robustnessIters)
Construct a new LoessInterpolator with given bandwidth and number of robustness iterations.

Calling this constructor is equivalent to calling {link LoessInterpolator(bandwidth, robustnessIters, LoessInterpolator.DEFAULT_ACCURACY)

Parameters:
bandwidth - when computing the loess fit at a particular point, this fraction of source points closest to the current point is taken into account for computing a least-squares regression.
A sensible value is usually 0.25 to 0.5, the default value is DEFAULT_BANDWIDTH.
robustnessIters - This many robustness iterations are done.
A sensible value is usually 0 (just the initial fit without any robustness iterations) to 4, the default value is DEFAULT_ROBUSTNESS_ITERS.
See Also:
LoessInterpolator(double, int, double)

LoessInterpolator

public LoessInterpolator(double bandwidth,
                         int robustnessIters,
                         double accuracy)
                  throws OutOfRangeException,
                         NotPositiveException
Construct a new LoessInterpolator with given bandwidth, number of robustness iterations and accuracy.

Parameters:
bandwidth - when computing the loess fit at a particular point, this fraction of source points closest to the current point is taken into account for computing a least-squares regression.
A sensible value is usually 0.25 to 0.5, the default value is DEFAULT_BANDWIDTH.
robustnessIters - This many robustness iterations are done.
A sensible value is usually 0 (just the initial fit without any robustness iterations) to 4, the default value is DEFAULT_ROBUSTNESS_ITERS.
accuracy - If the median residual at a certain robustness iteration is less than this amount, no more iterations are done.
Throws:
OutOfRangeException - if bandwidth does not lie in the interval [0,1].
NotPositiveException - if robustnessIters is negative.
Since:
2.1
See Also:
LoessInterpolator(double, int)
Method Detail

interpolate

public final PolynomialSplineFunction interpolate(double[] xval,
                                                  double[] yval)
                                           throws NonMonotonicSequenceException,
                                                  DimensionMismatchException,
                                                  NoDataException,
                                                  NotFiniteNumberException,
                                                  NumberIsTooSmallException
Compute an interpolating function by performing a loess fit on the data at the original abscissae and then building a cubic spline with a SplineInterpolator on the resulting fit.

Specified by:
interpolate in interface UnivariateInterpolator
Parameters:
xval - the arguments for the interpolation points
yval - the values for the interpolation points
Returns:
A cubic spline built upon a loess fit to the data at the original abscissae
Throws:
NonMonotonicSequenceException - if xval not sorted in strictly increasing order.
DimensionMismatchException - if xval and yval have different sizes.
NoDataException - if xval or yval has zero size.
NotFiniteNumberException - if any of the arguments and values are not finite real numbers.
NumberIsTooSmallException - if the bandwidth is too small to accomodate the size of the input data (i.e. the bandwidth must be larger than 2/n).

smooth

public final double[] smooth(double[] xval,
                             double[] yval,
                             double[] weights)
                      throws NonMonotonicSequenceException,
                             DimensionMismatchException,
                             NoDataException,
                             NotFiniteNumberException,
                             NumberIsTooSmallException
Compute a weighted loess fit on the data at the original abscissae.

Parameters:
xval - Arguments for the interpolation points.
yval - Values for the interpolation points.
weights - point weights: coefficients by which the robustness weight of a point is multiplied.
Returns:
the values of the loess fit at corresponding original abscissae.
Throws:
NonMonotonicSequenceException - if xval not sorted in strictly increasing order.
DimensionMismatchException - if xval and yval have different sizes.
NoDataException - if xval or yval has zero size.
NotFiniteNumberException - if any of the arguments and values are not finite real numbers.
NumberIsTooSmallException - if the bandwidth is too small to accomodate the size of the input data (i.e. the bandwidth must be larger than 2/n).
Since:
2.1

smooth

public final double[] smooth(double[] xval,
                             double[] yval)
                      throws NonMonotonicSequenceException,
                             DimensionMismatchException,
                             NoDataException,
                             NotFiniteNumberException,
                             NumberIsTooSmallException
Compute a loess fit on the data at the original abscissae.

Parameters:
xval - the arguments for the interpolation points
yval - the values for the interpolation points
Returns:
values of the loess fit at corresponding original abscissae
Throws:
NonMonotonicSequenceException - if xval not sorted in strictly increasing order.
DimensionMismatchException - if xval and yval have different sizes.
NoDataException - if xval or yval has zero size.
NotFiniteNumberException - if any of the arguments and values are not finite real numbers.
NumberIsTooSmallException - if the bandwidth is too small to accomodate the size of the input data (i.e. the bandwidth must be larger than 2/n).


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