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Statistical sampling library for use in virtdata libraries, based on apache commons math 4

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/*
 * Licensed to the Apache Software Foundation (ASF) under one or more
 * contributor license agreements.  See the NOTICE file distributed with
 * this work for additional information regarding copyright ownership.
 * The ASF licenses this file to You under the Apache License, Version 2.0
 * (the "License"); you may not use this file except in compliance with
 * the License.  You may obtain a copy of the License at
 *
 *      http://www.apache.org/licenses/LICENSE-2.0
 *
 * Unless required by applicable law or agreed to in writing, software
 * distributed under the License is distributed on an "AS IS" BASIS,
 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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package org.apache.commons.math4.analysis.differentiation;

import java.io.Serializable;

import org.apache.commons.math4.analysis.UnivariateFunction;
import org.apache.commons.math4.analysis.UnivariateMatrixFunction;
import org.apache.commons.math4.analysis.UnivariateVectorFunction;
import org.apache.commons.math4.exception.MathIllegalArgumentException;
import org.apache.commons.math4.exception.NotPositiveException;
import org.apache.commons.math4.exception.NumberIsTooLargeException;
import org.apache.commons.math4.exception.NumberIsTooSmallException;
import org.apache.commons.math4.util.FastMath;

/** Univariate functions differentiator using finite differences.
 * 

* This class creates some wrapper objects around regular * {@link UnivariateFunction univariate functions} (or {@link * UnivariateVectorFunction univariate vector functions} or {@link * UnivariateMatrixFunction univariate matrix functions}). These * wrapper objects compute derivatives in addition to function * values. *

*

* The wrapper objects work by calling the underlying function on * a sampling grid around the current point and performing polynomial * interpolation. A finite differences scheme with n points is * theoretically able to compute derivatives up to order n-1, but * it is generally better to have a slight margin. The step size must * also be small enough in order for the polynomial approximation to * be good in the current point neighborhood, but it should not be too * small because numerical instability appears quickly (there are several * differences of close points). Choosing the number of points and * the step size is highly problem dependent. *

*

* As an example of good and bad settings, lets consider the quintic * polynomial function {@code f(x) = (x-1)*(x-0.5)*x*(x+0.5)*(x+1)}. * Since it is a polynomial, finite differences with at least 6 points * should theoretically recover the exact same polynomial and hence * compute accurate derivatives for any order. However, due to numerical * errors, we get the following results for a 7 points finite differences * for abscissae in the [-10, 10] range: *

    *
  • step size = 0.25, second order derivative error about 9.97e-10
  • *
  • step size = 0.25, fourth order derivative error about 5.43e-8
  • *
  • step size = 1.0e-6, second order derivative error about 148
  • *
  • step size = 1.0e-6, fourth order derivative error about 6.35e+14
  • *
*

* This example shows that the small step size is really bad, even simply * for second order derivative!

* * @since 3.1 */ public class FiniteDifferencesDifferentiator implements UnivariateFunctionDifferentiator, UnivariateVectorFunctionDifferentiator, UnivariateMatrixFunctionDifferentiator, Serializable { /** Serializable UID. */ private static final long serialVersionUID = 20120917L; /** Number of points to use. */ private final int nbPoints; /** Step size. */ private final double stepSize; /** Half sample span. */ private final double halfSampleSpan; /** Lower bound for independent variable. */ private final double tMin; /** Upper bound for independent variable. */ private final double tMax; /** * Build a differentiator with number of points and step size when independent variable is unbounded. *

* Beware that wrong settings for the finite differences differentiator * can lead to highly unstable and inaccurate results, especially for * high derivation orders. Using very small step sizes is often a * bad idea. *

* @param nbPoints number of points to use * @param stepSize step size (gap between each point) * @exception NotPositiveException if {@code stepsize <= 0} (note that * {@link NotPositiveException} extends {@link NumberIsTooSmallException}) * @exception NumberIsTooSmallException {@code nbPoint <= 1} */ public FiniteDifferencesDifferentiator(final int nbPoints, final double stepSize) throws NotPositiveException, NumberIsTooSmallException { this(nbPoints, stepSize, Double.NEGATIVE_INFINITY, Double.POSITIVE_INFINITY); } /** * Build a differentiator with number of points and step size when independent variable is bounded. *

* When the independent variable is bounded (tLower < t < tUpper), the sampling * points used for differentiation will be adapted to ensure the constraint holds * even near the boundaries. This means the sample will not be centered anymore in * these cases. At an extreme case, computing derivatives exactly at the lower bound * will lead the sample to be entirely on the right side of the derivation point. *

*

* Note that the boundaries are considered to be excluded for function evaluation. *

*

* Beware that wrong settings for the finite differences differentiator * can lead to highly unstable and inaccurate results, especially for * high derivation orders. Using very small step sizes is often a * bad idea. *

* @param nbPoints number of points to use * @param stepSize step size (gap between each point) * @param tLower lower bound for independent variable (may be {@code Double.NEGATIVE_INFINITY} * if there are no lower bounds) * @param tUpper upper bound for independent variable (may be {@code Double.POSITIVE_INFINITY} * if there are no upper bounds) * @exception NotPositiveException if {@code stepsize <= 0} (note that * {@link NotPositiveException} extends {@link NumberIsTooSmallException}) * @exception NumberIsTooSmallException {@code nbPoint <= 1} * @exception NumberIsTooLargeException {@code stepSize * (nbPoints - 1) >= tUpper - tLower} */ public FiniteDifferencesDifferentiator(final int nbPoints, final double stepSize, final double tLower, final double tUpper) throws NotPositiveException, NumberIsTooSmallException, NumberIsTooLargeException { if (nbPoints <= 1) { throw new NumberIsTooSmallException(stepSize, 1, false); } this.nbPoints = nbPoints; if (stepSize <= 0) { throw new NotPositiveException(stepSize); } this.stepSize = stepSize; halfSampleSpan = 0.5 * stepSize * (nbPoints - 1); if (2 * halfSampleSpan >= tUpper - tLower) { throw new NumberIsTooLargeException(2 * halfSampleSpan, tUpper - tLower, false); } final double safety = FastMath.ulp(halfSampleSpan); this.tMin = tLower + halfSampleSpan + safety; this.tMax = tUpper - halfSampleSpan - safety; } /** * Get the number of points to use. * @return number of points to use */ public int getNbPoints() { return nbPoints; } /** * Get the step size. * @return step size */ public double getStepSize() { return stepSize; } /** * Evaluate derivatives from a sample. *

* Evaluation is done using divided differences. *

* @param t evaluation abscissa value and derivatives * @param t0 first sample point abscissa * @param y function values sample {@code y[i] = f(t[i]) = f(t0 + i * stepSize)} * @return value and derivatives at {@code t} * @exception NumberIsTooLargeException if the requested derivation order * is larger or equal to the number of points */ private DerivativeStructure evaluate(final DerivativeStructure t, final double t0, final double[] y) throws NumberIsTooLargeException { // create divided differences diagonal arrays final double[] top = new double[nbPoints]; final double[] bottom = new double[nbPoints]; for (int i = 0; i < nbPoints; ++i) { // update the bottom diagonal of the divided differences array bottom[i] = y[i]; for (int j = 1; j <= i; ++j) { bottom[i - j] = (bottom[i - j + 1] - bottom[i - j]) / (j * stepSize); } // update the top diagonal of the divided differences array top[i] = bottom[0]; } // evaluate interpolation polynomial (represented by top diagonal) at t final int order = t.getOrder(); final int parameters = t.getFreeParameters(); final double[] derivatives = t.getAllDerivatives(); final double dt0 = t.getValue() - t0; DerivativeStructure interpolation = new DerivativeStructure(parameters, order, 0.0); DerivativeStructure monomial = null; for (int i = 0; i < nbPoints; ++i) { if (i == 0) { // start with monomial(t) = 1 monomial = new DerivativeStructure(parameters, order, 1.0); } else { // monomial(t) = (t - t0) * (t - t1) * ... * (t - t(i-1)) derivatives[0] = dt0 - (i - 1) * stepSize; final DerivativeStructure deltaX = new DerivativeStructure(parameters, order, derivatives); monomial = monomial.multiply(deltaX); } interpolation = interpolation.add(monomial.multiply(top[i])); } return interpolation; } /** {@inheritDoc} *

The returned object cannot compute derivatives to arbitrary orders. The * value function will throw a {@link NumberIsTooLargeException} if the requested * derivation order is larger or equal to the number of points. *

*/ @Override public UnivariateDifferentiableFunction differentiate(final UnivariateFunction function) { return new UnivariateDifferentiableFunction() { /** {@inheritDoc} */ @Override public double value(final double x) throws MathIllegalArgumentException { return function.value(x); } /** {@inheritDoc} */ @Override public DerivativeStructure value(final DerivativeStructure t) throws MathIllegalArgumentException { // check we can achieve the requested derivation order with the sample if (t.getOrder() >= nbPoints) { throw new NumberIsTooLargeException(t.getOrder(), nbPoints, false); } // compute sample position, trying to be centered if possible final double t0 = FastMath.max(FastMath.min(t.getValue(), tMax), tMin) - halfSampleSpan; // compute sample points final double[] y = new double[nbPoints]; for (int i = 0; i < nbPoints; ++i) { y[i] = function.value(t0 + i * stepSize); } // evaluate derivatives return evaluate(t, t0, y); } }; } /** {@inheritDoc} *

The returned object cannot compute derivatives to arbitrary orders. The * value function will throw a {@link NumberIsTooLargeException} if the requested * derivation order is larger or equal to the number of points. *

*/ @Override public UnivariateDifferentiableVectorFunction differentiate(final UnivariateVectorFunction function) { return new UnivariateDifferentiableVectorFunction() { /** {@inheritDoc} */ @Override public double[]value(final double x) throws MathIllegalArgumentException { return function.value(x); } /** {@inheritDoc} */ @Override public DerivativeStructure[] value(final DerivativeStructure t) throws MathIllegalArgumentException { // check we can achieve the requested derivation order with the sample if (t.getOrder() >= nbPoints) { throw new NumberIsTooLargeException(t.getOrder(), nbPoints, false); } // compute sample position, trying to be centered if possible final double t0 = FastMath.max(FastMath.min(t.getValue(), tMax), tMin) - halfSampleSpan; // compute sample points double[][] y = null; for (int i = 0; i < nbPoints; ++i) { final double[] v = function.value(t0 + i * stepSize); if (i == 0) { y = new double[v.length][nbPoints]; } for (int j = 0; j < v.length; ++j) { y[j][i] = v[j]; } } // evaluate derivatives final DerivativeStructure[] value = new DerivativeStructure[y.length]; for (int j = 0; j < value.length; ++j) { value[j] = evaluate(t, t0, y[j]); } return value; } }; } /** {@inheritDoc} *

The returned object cannot compute derivatives to arbitrary orders. The * value function will throw a {@link NumberIsTooLargeException} if the requested * derivation order is larger or equal to the number of points. *

*/ @Override public UnivariateDifferentiableMatrixFunction differentiate(final UnivariateMatrixFunction function) { return new UnivariateDifferentiableMatrixFunction() { /** {@inheritDoc} */ @Override public double[][] value(final double x) throws MathIllegalArgumentException { return function.value(x); } /** {@inheritDoc} */ @Override public DerivativeStructure[][] value(final DerivativeStructure t) throws MathIllegalArgumentException { // check we can achieve the requested derivation order with the sample if (t.getOrder() >= nbPoints) { throw new NumberIsTooLargeException(t.getOrder(), nbPoints, false); } // compute sample position, trying to be centered if possible final double t0 = FastMath.max(FastMath.min(t.getValue(), tMax), tMin) - halfSampleSpan; // compute sample points double[][][] y = null; for (int i = 0; i < nbPoints; ++i) { final double[][] v = function.value(t0 + i * stepSize); if (i == 0) { y = new double[v.length][v[0].length][nbPoints]; } for (int j = 0; j < v.length; ++j) { for (int k = 0; k < v[j].length; ++k) { y[j][k][i] = v[j][k]; } } } // evaluate derivatives final DerivativeStructure[][] value = new DerivativeStructure[y.length][y[0].length]; for (int j = 0; j < value.length; ++j) { for (int k = 0; k < y[j].length; ++k) { value[j][k] = evaluate(t, t0, y[j][k]); } } return value; } }; } }




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