org.apache.commons.math3.distribution.AbstractRealDistribution Maven / Gradle / Ivy
Go to download
Show more of this group Show more artifacts with this name
Show all versions of cf4j-recsys Show documentation
Show all versions of cf4j-recsys Show documentation
A Java's Collaborative Filtering library to carry out experiments in research of Collaborative Filtering based Recommender Systems. The library has been designed from researchers to researchers.
The newest version!
/*
* 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.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
package org.apache.commons.math3.distribution;
import java.io.Serializable;
import org.apache.commons.math3.analysis.UnivariateFunction;
import org.apache.commons.math3.analysis.solvers.UnivariateSolverUtils;
import org.apache.commons.math3.exception.NotStrictlyPositiveException;
import org.apache.commons.math3.exception.NumberIsTooLargeException;
import org.apache.commons.math3.exception.OutOfRangeException;
import org.apache.commons.math3.exception.util.LocalizedFormats;
import org.apache.commons.math3.random.RandomGenerator;
import org.apache.commons.math3.util.FastMath;
/**
* Base class for probability distributions on the reals.
* Default implementations are provided for some of the methods
* that do not vary from distribution to distribution.
*
* @since 3.0
*/
public abstract class AbstractRealDistribution
implements RealDistribution, Serializable {
/** Default accuracy. */
public static final double SOLVER_DEFAULT_ABSOLUTE_ACCURACY = 1e-6;
/** Serializable version identifier */
private static final long serialVersionUID = -38038050983108802L;
/**
* RandomData instance used to generate samples from the distribution.
* @deprecated As of 3.1, to be removed in 4.0. Please use the
* {@link #random} instance variable instead.
*/
@Deprecated
protected org.apache.commons.math3.random.RandomDataImpl randomData =
new org.apache.commons.math3.random.RandomDataImpl();
/**
* RNG instance used to generate samples from the distribution.
* @since 3.1
*/
protected final RandomGenerator random;
/** Solver absolute accuracy for inverse cumulative computation */
private double solverAbsoluteAccuracy = SOLVER_DEFAULT_ABSOLUTE_ACCURACY;
/**
* @deprecated As of 3.1, to be removed in 4.0. Please use
* {@link #AbstractRealDistribution(RandomGenerator)} instead.
*/
@Deprecated
protected AbstractRealDistribution() {
// Legacy users are only allowed to access the deprecated "randomData".
// New users are forbidden to use this constructor.
random = null;
}
/**
* @param rng Random number generator.
* @since 3.1
*/
protected AbstractRealDistribution(RandomGenerator rng) {
random = rng;
}
/**
* {@inheritDoc}
*
* The default implementation uses the identity
* {@code P(x0 < X <= x1) = P(X <= x1) - P(X <= x0)}
*
* @deprecated As of 3.1 (to be removed in 4.0). Please use
* {@link #probability(double,double)} instead.
*/
@Deprecated
public double cumulativeProbability(double x0, double x1) throws NumberIsTooLargeException {
return probability(x0, x1);
}
/**
* For a random variable {@code X} whose values are distributed according
* to this distribution, this method returns {@code P(x0 < X <= x1)}.
*
* @param x0 Lower bound (excluded).
* @param x1 Upper bound (included).
* @return the probability that a random variable with this distribution
* takes a value between {@code x0} and {@code x1}, excluding the lower
* and including the upper endpoint.
* @throws NumberIsTooLargeException if {@code x0 > x1}.
*
* The default implementation uses the identity
* {@code P(x0 < X <= x1) = P(X <= x1) - P(X <= x0)}
*
* @since 3.1
*/
public double probability(double x0,
double x1) {
if (x0 > x1) {
throw new NumberIsTooLargeException(LocalizedFormats.LOWER_ENDPOINT_ABOVE_UPPER_ENDPOINT,
x0, x1, true);
}
return cumulativeProbability(x1) - cumulativeProbability(x0);
}
/**
* {@inheritDoc}
*
* The default implementation returns
*
* - {@link #getSupportLowerBound()} for {@code p = 0},
* - {@link #getSupportUpperBound()} for {@code p = 1}.
*
*/
public double inverseCumulativeProbability(final double p) throws OutOfRangeException {
/*
* IMPLEMENTATION NOTES
* --------------------
* Where applicable, use is made of the one-sided Chebyshev inequality
* to bracket the root. This inequality states that
* P(X - mu >= k * sig) <= 1 / (1 + k^2),
* mu: mean, sig: standard deviation. Equivalently
* 1 - P(X < mu + k * sig) <= 1 / (1 + k^2),
* F(mu + k * sig) >= k^2 / (1 + k^2).
*
* For k = sqrt(p / (1 - p)), we find
* F(mu + k * sig) >= p,
* and (mu + k * sig) is an upper-bound for the root.
*
* Then, introducing Y = -X, mean(Y) = -mu, sd(Y) = sig, and
* P(Y >= -mu + k * sig) <= 1 / (1 + k^2),
* P(-X >= -mu + k * sig) <= 1 / (1 + k^2),
* P(X <= mu - k * sig) <= 1 / (1 + k^2),
* F(mu - k * sig) <= 1 / (1 + k^2).
*
* For k = sqrt((1 - p) / p), we find
* F(mu - k * sig) <= p,
* and (mu - k * sig) is a lower-bound for the root.
*
* In cases where the Chebyshev inequality does not apply, geometric
* progressions 1, 2, 4, ... and -1, -2, -4, ... are used to bracket
* the root.
*/
if (p < 0.0 || p > 1.0) {
throw new OutOfRangeException(p, 0, 1);
}
double lowerBound = getSupportLowerBound();
if (p == 0.0) {
return lowerBound;
}
double upperBound = getSupportUpperBound();
if (p == 1.0) {
return upperBound;
}
final double mu = getNumericalMean();
final double sig = FastMath.sqrt(getNumericalVariance());
final boolean chebyshevApplies;
chebyshevApplies = !(Double.isInfinite(mu) || Double.isNaN(mu) ||
Double.isInfinite(sig) || Double.isNaN(sig));
if (lowerBound == Double.NEGATIVE_INFINITY) {
if (chebyshevApplies) {
lowerBound = mu - sig * FastMath.sqrt((1. - p) / p);
} else {
lowerBound = -1.0;
while (cumulativeProbability(lowerBound) >= p) {
lowerBound *= 2.0;
}
}
}
if (upperBound == Double.POSITIVE_INFINITY) {
if (chebyshevApplies) {
upperBound = mu + sig * FastMath.sqrt(p / (1. - p));
} else {
upperBound = 1.0;
while (cumulativeProbability(upperBound) < p) {
upperBound *= 2.0;
}
}
}
final UnivariateFunction toSolve = new UnivariateFunction() {
/** {@inheritDoc} */
public double value(final double x) {
return cumulativeProbability(x) - p;
}
};
double x = UnivariateSolverUtils.solve(toSolve,
lowerBound,
upperBound,
getSolverAbsoluteAccuracy());
if (!isSupportConnected()) {
/* Test for plateau. */
final double dx = getSolverAbsoluteAccuracy();
if (x - dx >= getSupportLowerBound()) {
double px = cumulativeProbability(x);
if (cumulativeProbability(x - dx) == px) {
upperBound = x;
while (upperBound - lowerBound > dx) {
final double midPoint = 0.5 * (lowerBound + upperBound);
if (cumulativeProbability(midPoint) < px) {
lowerBound = midPoint;
} else {
upperBound = midPoint;
}
}
return upperBound;
}
}
}
return x;
}
/**
* Returns the solver absolute accuracy for inverse cumulative computation.
* You can override this method in order to use a Brent solver with an
* absolute accuracy different from the default.
*
* @return the maximum absolute error in inverse cumulative probability estimates
*/
protected double getSolverAbsoluteAccuracy() {
return solverAbsoluteAccuracy;
}
/** {@inheritDoc} */
public void reseedRandomGenerator(long seed) {
random.setSeed(seed);
randomData.reSeed(seed);
}
/**
* {@inheritDoc}
*
* The default implementation uses the
*
* inversion method.
*
*/
public double sample() {
return inverseCumulativeProbability(random.nextDouble());
}
/**
* {@inheritDoc}
*
* The default implementation generates the sample by calling
* {@link #sample()} in a loop.
*/
public double[] sample(int sampleSize) {
if (sampleSize <= 0) {
throw new NotStrictlyPositiveException(LocalizedFormats.NUMBER_OF_SAMPLES,
sampleSize);
}
double[] out = new double[sampleSize];
for (int i = 0; i < sampleSize; i++) {
out[i] = sample();
}
return out;
}
/**
* {@inheritDoc}
*
* @return zero.
* @since 3.1
*/
public double probability(double x) {
return 0d;
}
/**
* Returns the natural logarithm of the probability density function (PDF) of this distribution
* evaluated at the specified point {@code x}. In general, the PDF is the derivative of the
* {@link #cumulativeProbability(double) CDF}. If the derivative does not exist at {@code x},
* then an appropriate replacement should be returned, e.g. {@code Double.POSITIVE_INFINITY},
* {@code Double.NaN}, or the limit inferior or limit superior of the difference quotient. Note
* that due to the floating point precision and under/overflow issues, this method will for some
* distributions be more precise and faster than computing the logarithm of
* {@link #density(double)}. The default implementation simply computes the logarithm of
* {@code density(x)}.
*
* @param x the point at which the PDF is evaluated
* @return the logarithm of the value of the probability density function at point {@code x}
*/
public double logDensity(double x) {
return FastMath.log(density(x));
}
}
© 2015 - 2024 Weber Informatics LLC | Privacy Policy