gatk-3.8/java/src/org/broadinstitute/sting/utils/MathUtils.java

198 lines
7.2 KiB
Java
Executable File

package org.broadinstitute.sting.utils;
import cern.jet.math.Arithmetic;
/**
* MathUtils is a static class (no instantiation allowed!) with some useful math methods.
*
* @author Kiran Garimella
*/
public class MathUtils {
/** Private constructor. No instantiating this class! */
private MathUtils() {}
public static double sum(double[] values) {
double s = 0.0;
for ( double v : values) s += v;
return s;
}
public static double sumLog10(double[] log10values) {
double s = 0.0;
for ( double v : log10values) s += Math.pow(10.0, v);
return s;
}
public static boolean wellFormedDouble(double val) {
return ! Double.isInfinite(val) && ! Double.isNaN(val);
}
public static boolean isBounded(double val, double lower, double upper) {
return val >= lower && val <= upper;
}
public static boolean isPositive(double val) {
return ! isNegativeOrZero(val);
}
public static boolean isPositiveOrZero(double val) {
return isBounded(val, 0.0, Double.POSITIVE_INFINITY);
}
public static boolean isNegativeOrZero(double val) {
return isBounded(val, Double.NEGATIVE_INFINITY, 0.0);
}
public static boolean isNegative(double val) {
return ! isPositiveOrZero(val);
}
/**
* Compares double values for equality (within 1e-6), or inequality.
*
* @param a the first double value
* @param b the second double value
* @return -1 if a is greater than b, 0 if a is equal to be within 1e-6, 1 if b is greater than a.
*/
public static byte compareDoubles(double a, double b) { return compareDoubles(a, b, 1e-6); }
/**
* Compares double values for equality (within epsilon), or inequality.
*
* @param a the first double value
* @param b the second double value
* @param epsilon the precision within which two double values will be considered equal
* @return -1 if a is greater than b, 0 if a is equal to be within epsilon, 1 if b is greater than a.
*/
public static byte compareDoubles(double a, double b, double epsilon)
{
if (Math.abs(a - b) < epsilon) { return 0; }
if (a > b) { return -1; }
return 1;
}
/**
* Compares float values for equality (within 1e-6), or inequality.
*
* @param a the first float value
* @param b the second float value
* @return -1 if a is greater than b, 0 if a is equal to be within 1e-6, 1 if b is greater than a.
*/
public static byte compareFloats(float a, float b) { return compareFloats(a, b, 1e-6f); }
/**
* Compares float values for equality (within epsilon), or inequality.
*
* @param a the first float value
* @param b the second float value
* @param epsilon the precision within which two float values will be considered equal
* @return -1 if a is greater than b, 0 if a is equal to be within epsilon, 1 if b is greater than a.
*/
public static byte compareFloats(float a, float b, float epsilon)
{
if (Math.abs(a - b) < epsilon) { return 0; }
if (a > b) { return -1; }
return 1;
}
public static double NormalDistribution(double mean, double sd, double x)
{
double a = 1.0 / (sd*Math.sqrt(2.0 * Math.PI));
double b = Math.exp(-1.0 * (Math.pow(x - mean,2.0)/(2.0 * sd * sd)));
return a * b;
}
/**
* Computes a binomial probability. This is computed using the formula
*
* B(k; n; p) = [ n! / ( k! (n - k)! ) ] (p^k)( (1-p)^k )
*
* where n is the number of trials, k is the number of successes, and p is the probability of success
*
* @param k number of successes
* @param n number of Bernoulli trials
* @param p probability of success
*
* @return the binomial probability of the specified configuration. Computes values down to about 1e-237.
*/
public static double binomialProbability(int k, int n, double p) {
return Arithmetic.binomial(n, k)*Math.pow(p, k)*Math.pow(1.0 - p, n - k);
//return (new cern.jet.random.Binomial(n, p, cern.jet.random.engine.RandomEngine.makeDefault())).pdf(k);
}
/**
* Computes a multinomial. This is computed using the formula
*
* M(x1,x2,...,xk; n) = [ n! / (x1! x2! ... xk!) ]
*
* where xi represents the number of times outcome i was observed, n is the number of total observations.
* In this implementation, the value of n is inferred as the sum over i of xi.
*
* @param x an int[] of counts, where each element represents the number of times a certain outcome was observed
* @return the multinomial of the specified configuration.
*/
public static double multinomial(int[] x) {
// In order to avoid overflow in computing large factorials in the multinomial
// coefficient, we split the calculation up into the product of a bunch of
// binomial coefficients.
double multinomialCoefficient = 1.0;
for (int i = 0; i < x.length; i++) {
int n = 0;
for (int j = 0; j <= i; j++) { n += x[j]; }
double multinomialTerm = Arithmetic.binomial(n, x[i]);
multinomialCoefficient *= multinomialTerm;
}
return multinomialCoefficient;
}
/**
* Computes a multinomial probability. This is computed using the formula
*
* M(x1,x2,...,xk; n; p1,p2,...,pk) = [ n! / (x1! x2! ... xk!) ] (p1^x1)(p2^x2)(...)(pk^xk)
*
* where xi represents the number of times outcome i was observed, n is the number of total observations, and
* pi represents the probability of the i-th outcome to occur. In this implementation, the value of n is
* inferred as the sum over i of xi.
*
* @param x an int[] of counts, where each element represents the number of times a certain outcome was observed
* @param p a double[] of probabilities, where each element represents the probability a given outcome can occur
* @return the multinomial probability of the specified configuration.
*/
public static double multinomialProbability(int[] x, double[] p) {
// In order to avoid overflow in computing large factorials in the multinomial
// coefficient, we split the calculation up into the product of a bunch of
// binomial coefficients.
double multinomialCoefficient = multinomial(x);
double probs = 1.0, totalprob = 0.0;
for (int obsCountsIndex = 0; obsCountsIndex < x.length; obsCountsIndex++) {
probs *= Math.pow(p[obsCountsIndex], x[obsCountsIndex]);
totalprob += p[obsCountsIndex];
}
assert(MathUtils.compareDoubles(totalprob, 1.0, 0.01) == 0);
return multinomialCoefficient*probs;
}
/**
* calculate the Root Mean Square of an array of integers
* @param x an int[] of numbers
* @return the RMS of the specified numbers.
*/
public static double rms(int[] x) {
if ( x.length == 0 )
return 0.0;
double rms = 0.0;
for (int i : x)
rms += i * i;
rms /= x.length;
return Math.sqrt(rms);
}
}