Package org.apache.commons.math3.distribution

Examples of org.apache.commons.math3.distribution.PoissonDistribution


   * @return <code>true</code> if the observations
   */
  static boolean isPoissonProcess(Frequency observations, double intensity,
      double confidence, long scenarioLength) {
    final double lengthFactor = scenarioLength / 60d;
    final PoissonDistribution pd = new PoissonDistribution(intensity
        * lengthFactor);
    final long observed[] = new long[observations.getUniqueCount()];
    final double[] expected = new double[observations.getUniqueCount()];

    final Iterator<?> it = observations.valuesIterator();
    int index = 0;
    while (it.hasNext()) {
      final Long l = (Long) it.next();
      observed[index] = observations.getCount(l);
      expected[index] = pd.probability(l.intValue())
          * observations.getSumFreq();
      if (expected[index] == 0) {
        return false;
      }
      index++;
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         *  Set up bins for chi-square test.
         *  Ensure expected counts are all at least minExpectedCount.
         *  Start with upper and lower tail bins.
         *  Lower bin = [0, lower); Upper bin = [upper, +inf).
         */
        PoissonDistribution poissonDistribution = new PoissonDistribution(mean);
        int lower = 1;
        while (poissonDistribution.cumulativeProbability(lower - 1) * sampleSize < minExpectedCount) {
            lower++;
        }
        int upper = (int) (5 * mean)// Even for mean = 1, not much mass beyond 5
        while ((1 - poissonDistribution.cumulativeProbability(upper - 1)) * sampleSize < minExpectedCount) {
            upper--;
        }

        // Set bin width for interior bins.  For poisson, only need to look at end bins.
        int binWidth = 0;
        boolean widthSufficient = false;
        double lowerBinMass = 0;
        double upperBinMass = 0;
        while (!widthSufficient) {
            binWidth++;
            lowerBinMass = poissonDistribution.cumulativeProbability(lower - 1, lower + binWidth - 1);
            upperBinMass = poissonDistribution.cumulativeProbability(upper - binWidth - 1, upper - 1);
            widthSufficient = FastMath.min(lowerBinMass, upperBinMass) * sampleSize >= minExpectedCount;
        }

        /*
         *  Determine interior bin bounds.  Bins are
         *  [1, lower = binBounds[0]), [lower, binBounds[1]), [binBounds[1], binBounds[2]), ... ,
         *    [binBounds[binCount - 2], upper = binBounds[binCount - 1]), [upper, +inf)
         *
         */
        List<Integer> binBounds = new ArrayList<Integer>();
        binBounds.add(lower);
        int bound = lower + binWidth;
        while (bound < upper - binWidth) {
            binBounds.add(bound);
            bound += binWidth;
        }
        binBounds.add(upper); // The size of bin [binBounds[binCount - 2], upper) satisfies binWidth <= size < 2*binWidth.

        // Compute observed and expected bin counts
        final int binCount = binBounds.size() + 1;
        long[] observed = new long[binCount];
        double[] expected = new double[binCount];

        // Bottom bin
        observed[0] = 0;
        for (int i = 0; i < lower; i++) {
            observed[0] += frequency.getCount(i);
        }
        expected[0] = poissonDistribution.cumulativeProbability(lower - 1) * sampleSize;

        // Top bin
        observed[binCount - 1] = 0;
        for (int i = upper; i <= maxObservedValue; i++) {
            observed[binCount - 1] += frequency.getCount(i);
        }
        expected[binCount - 1] = (1 - poissonDistribution.cumulativeProbability(upper - 1)) * sampleSize;

        // Interior bins
        for (int i = 1; i < binCount - 1; i++) {
            observed[i] = 0;
            for (int j = binBounds.get(i - 1); j < binBounds.get(i); j++) {
                observed[i] += frequency.getCount(j);
            } // Expected count is (mass in [binBounds[i-1], binBounds[i])) * sampleSize
            expected[i] = (poissonDistribution.cumulativeProbability(binBounds.get(i) - 1) -
                poissonDistribution.cumulativeProbability(binBounds.get(i - 1) -1)) * sampleSize;
        }

        // Use chisquare test to verify that generated values are poisson(mean)-distributed
        ChiSquareTest chiSquareTest = new ChiSquareTest();
            // Fail if we can reject null hypothesis that distributions are the same
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    @Test
    /**
     * MATH-720
     */
    public void testReseed() {
        PoissonDistribution x = new PoissonDistribution(3.0);
        x.reseedRandomGenerator(0);
        final double u = x.sample();
        PoissonDistribution y = new PoissonDistribution(3.0);
        y.reseedRandomGenerator(0);
        Assert.assertEquals(u, y.sample(), 0);
    }
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     * length.
     */
    protected double[] computeResiduals(double[] objectiveValue) {
        final double[] target = getTarget();
        if (objectiveValue.length != target.length) {
            throw new DimensionMismatchException(target.length,
                                                 objectiveValue.length);
        }

        final double[] residuals = new double[target.length];
        for (int i = 0; i < target.length; i++) {
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        /** {@inheritDoc} */
        public RealVector solve(final RealVector b) {
            final int m = lTData.length;
            if (b.getDimension() != m) {
                throw new DimensionMismatchException(b.getDimension(), m);
            }

            final double[] x = b.toArray();

            // Solve LY = b
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        /** {@inheritDoc} */
        public RealMatrix solve(RealMatrix b) {
            final int m = lTData.length;
            if (b.getRowDimension() != m) {
                throw new DimensionMismatchException(b.getRowDimension(), m);
            }

            final int nColB = b.getColumnDimension();
            final double[][] x = b.getData();

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     */
    public double correlation(final double[] xArray, final double[] yArray)
            throws DimensionMismatchException {

        if (xArray.length != yArray.length) {
            throw new DimensionMismatchException(xArray.length, yArray.length);
        }

        final int n = xArray.length;
        final long numPairs = sum(n - 1);

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     * @throws DimensionMismatchException if {@link #target} and
     * {@link #weightMatrix} have inconsistent dimensions.
     */
    private void checkParameters() {
        if (target.length != weightMatrix.getColumnDimension()) {
            throw new DimensionMismatchException(target.length,
                                                 weightMatrix.getColumnDimension());
        }
    }
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    public void increment(final double[] data)
        throws DimensionMismatchException {

        int length = data.length;
        if (length != dimension) {
            throw new DimensionMismatchException(length, dimension);
        }

        // only update the upper triangular part of the covariance matrix
        // as only these parts are actually stored
        for (int i = 0; i < length; i++){
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     * @throws DimensionMismatchException if the dimension of sc does not match this
     * @since 3.3
     */
    public void append(StorelessCovariance sc) throws DimensionMismatchException {
        if (sc.dimension != dimension) {
            throw new DimensionMismatchException(sc.dimension, dimension);
        }

        // only update the upper triangular part of the covariance matrix
        // as only these parts are actually stored
        for (int i = 0; i < dimension; i++) {
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