public class HypergeometricDistributionImpl extends AbstractIntegerDistribution implements HypergeometricDistribution, java.io.Serializable
HypergeometricDistribution
.Constructor and Description |
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HypergeometricDistributionImpl(int populationSize,
int numberOfSuccesses,
int sampleSize)
Construct a new hypergeometric distribution with the given the population
size, the number of successes in the population, and the sample size.
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Modifier and Type | Method and Description |
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double |
cumulativeProbability(int x)
For this distribution, X, this method returns P(X ≤ x).
|
int |
getNumberOfSuccesses()
Access the number of successes.
|
double |
getNumericalVariance()
Returns the variance.
|
int |
getPopulationSize()
Access the population size.
|
int |
getSampleSize()
Access the sample size.
|
int |
getSupportLowerBound()
Returns the lower bound for the support for the distribution.
|
int |
getSupportUpperBound()
Returns the upper bound for the support of the distribution.
|
double |
probability(int x)
For this distribution, X, this method returns P(X = x).
|
void |
setNumberOfSuccesses(int num)
Deprecated.
as of 2.1 (class will become immutable in 3.0)
|
void |
setPopulationSize(int size)
Deprecated.
as of 2.1 (class will become immutable in 3.0)
|
void |
setSampleSize(int size)
Deprecated.
as of 2.1 (class will become immutable in 3.0)
|
double |
upperCumulativeProbability(int x)
For this distribution, X, this method returns P(X ≥ x).
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cumulativeProbability, cumulativeProbability, cumulativeProbability, inverseCumulativeProbability, isSupportLowerBoundInclusive, isSupportUpperBoundInclusive, probability, reseedRandomGenerator, sample, sample
equals, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
cumulativeProbability, inverseCumulativeProbability
probability
cumulativeProbability, cumulativeProbability
public HypergeometricDistributionImpl(int populationSize, int numberOfSuccesses, int sampleSize)
populationSize
- the population size.numberOfSuccesses
- number of successes in the population.sampleSize
- the sample size.public double cumulativeProbability(int x)
cumulativeProbability
in interface IntegerDistribution
cumulativeProbability
in class AbstractIntegerDistribution
x
- the value at which the PDF is evaluated.public int getNumberOfSuccesses()
getNumberOfSuccesses
in interface HypergeometricDistribution
public int getPopulationSize()
getPopulationSize
in interface HypergeometricDistribution
public int getSampleSize()
getSampleSize
in interface HypergeometricDistribution
public double probability(int x)
probability
in interface IntegerDistribution
x
- the value at which the PMF is evaluated.@Deprecated public void setNumberOfSuccesses(int num)
setNumberOfSuccesses
in interface HypergeometricDistribution
num
- the new number of successes.java.lang.IllegalArgumentException
- if num
is negative.@Deprecated public void setPopulationSize(int size)
setPopulationSize
in interface HypergeometricDistribution
size
- the new population size.java.lang.IllegalArgumentException
- if size
is not positive.@Deprecated public void setSampleSize(int size)
setSampleSize
in interface HypergeometricDistribution
size
- the new sample size.java.lang.IllegalArgumentException
- if size
is negative.public double upperCumulativeProbability(int x)
x
- the value at which the CDF is evaluated.public int getSupportLowerBound()
N
,
number of successes m
, and
sample size n
,
the lower bound of the support is
max(0, n + m - N)
public int getSupportUpperBound()
m
and
sample size n
,
the upper bound of the support is
min(m, n)
public double getNumericalVariance()
N
,
number of successes m
, and
sample size n
, the variance is
[ n * m * (N - n) * (N - m) ] / [ N^2 * (N - 1) ]
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