Class ParetoDistr
java.lang.Object
org.apache.commons.math3.distribution.AbstractRealDistribution
org.apache.commons.math3.distribution.ParetoDistribution
org.cloudbus.cloudsim.distributions.ParetoDistr
- All Implemented Interfaces:
Serializable
,org.apache.commons.math3.distribution.RealDistribution
,ContinuousDistribution
,StatisticalDistribution
- Direct Known Subclasses:
LomaxDistr
public class ParetoDistr
extends org.apache.commons.math3.distribution.ParetoDistribution
implements ContinuousDistribution
A Pseudo-Random Number Generator following the
Pareto
distribution.
- Since:
- CloudSim Toolkit 1.0
- Author:
- Marcos Dias de Assuncao, Manoel Campos da Silva Filho
- See Also:
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Field Summary
Fields inherited from class org.apache.commons.math3.distribution.ParetoDistribution
DEFAULT_INVERSE_ABSOLUTE_ACCURACY
Fields inherited from class org.apache.commons.math3.distribution.AbstractRealDistribution
random, randomData, SOLVER_DEFAULT_ABSOLUTE_ACCURACY
Fields inherited from interface org.cloudbus.cloudsim.distributions.ContinuousDistribution
NULL
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Constructor Summary
ConstructorDescriptionParetoDistr
(double shape, double location) Creates a Pareto Pseudo-Random Number Generator (PRNG) using the current time as seed.ParetoDistr
(double shape, double location, long seed) Creates a Pareto Pseudo-Random Number Generator (PRNG).ParetoDistr
(double shape, double location, long seed, org.apache.commons.math3.random.RandomGenerator rng) Creates a Pareto Pseudo-Random Number Generator (PRNG). -
Method Summary
Modifier and TypeMethodDescriptionlong
getSeed()
Gets the seed used to initialize the generatorboolean
Indicates if the Pseudo-Random Number Generator (RNG) applies the Antithetic Variates Technique in order to reduce variance of experiments using the generated numbers.double
Generate a new pseudo random number directly from theRealDistribution.sample()
method.void
reseedRandomGenerator
(long seed) setApplyAntitheticVariates
(boolean applyAntitheticVariates) Indicates if the Pseudo-Random Number Generator (RNG) applies the Antithetic Variates Technique in order to reduce variance of experiments using the generated numbers.Methods inherited from class org.apache.commons.math3.distribution.ParetoDistribution
cumulativeProbability, cumulativeProbability, density, getNumericalMean, getNumericalVariance, getScale, getShape, getSolverAbsoluteAccuracy, getSupportLowerBound, getSupportUpperBound, isSupportConnected, isSupportLowerBoundInclusive, isSupportUpperBoundInclusive, logDensity, sample
Methods inherited from class org.apache.commons.math3.distribution.AbstractRealDistribution
inverseCumulativeProbability, probability, probability, sample
Methods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
Methods inherited from interface org.cloudbus.cloudsim.distributions.ContinuousDistribution
sample
Methods inherited from interface org.apache.commons.math3.distribution.RealDistribution
cumulativeProbability, cumulativeProbability, density, getNumericalMean, getNumericalVariance, getSupportLowerBound, getSupportUpperBound, inverseCumulativeProbability, isSupportConnected, isSupportLowerBoundInclusive, isSupportUpperBoundInclusive, probability, sample
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Constructor Details
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ParetoDistr
public ParetoDistr(double shape, double location) Creates a Pareto Pseudo-Random Number Generator (PRNG) using the current time as seed.- Parameters:
shape
- the shape parameter of this distributionlocation
- the location parameter of this distribution- See Also:
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ParetoDistr
public ParetoDistr(double shape, double location, long seed) Creates a Pareto Pseudo-Random Number Generator (PRNG).- Parameters:
shape
- the shape parameter of this distributionlocation
- the location parameter of this distributionseed
- the seed- See Also:
-
ParetoDistr
public ParetoDistr(double shape, double location, long seed, org.apache.commons.math3.random.RandomGenerator rng) Creates a Pareto Pseudo-Random Number Generator (PRNG).- Parameters:
shape
- the shape parameter of this distributionlocation
- the location parameter of this distributionseed
- the seed already used to initialize the Pseudo-Random Number Generatorrng
- the actual Pseudo-Random Number Generator that will be the base to generate random numbers following a continuous distribution.
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Method Details
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reseedRandomGenerator
public void reseedRandomGenerator(long seed) - Specified by:
reseedRandomGenerator
in interfaceorg.apache.commons.math3.distribution.RealDistribution
- Overrides:
reseedRandomGenerator
in classorg.apache.commons.math3.distribution.AbstractRealDistribution
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getSeed
public long getSeed()Description copied from interface:StatisticalDistribution
Gets the seed used to initialize the generator- Specified by:
getSeed
in interfaceStatisticalDistribution
- Returns:
-
isApplyAntitheticVariates
public boolean isApplyAntitheticVariates()Description copied from interface:StatisticalDistribution
Indicates if the Pseudo-Random Number Generator (RNG) applies the Antithetic Variates Technique in order to reduce variance of experiments using the generated numbers. This technique doesn't work for all the cases. However, in the cases it can be applied, in order to it work, one have to perform some actions. Consider an experiment that has to run "n" times. The first half of these experiments has to use the seeds the developer want. However, the second half of the experiments have to set the applyAntitheticVariates attribute to true and use the seeds of the first half of experiments. Thus, the first half of experiments are run using PRNGs that return random numbers as U(0, 1)[seed_1], ..., U(0, 1)[seed_n]. The second half of experiments then uses the seeds of the first half of experiments, returning random numbers as 1 - U(0, 1)[seed_1], ..., 1 - U(0, 1)[seed_n].- Specified by:
isApplyAntitheticVariates
in interfaceStatisticalDistribution
- Returns:
- true if the technique is applied, false otherwise
- See Also:
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setApplyAntitheticVariates
Description copied from interface:StatisticalDistribution
Indicates if the Pseudo-Random Number Generator (RNG) applies the Antithetic Variates Technique in order to reduce variance of experiments using the generated numbers.- Specified by:
setApplyAntitheticVariates
in interfaceStatisticalDistribution
- Parameters:
applyAntitheticVariates
- true if the technique is to be applied, false otherwise- See Also:
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originalSample
public double originalSample()Description copied from interface:StatisticalDistribution
Generate a new pseudo random number directly from theRealDistribution.sample()
method. This way, theAntithetic Variates Technique
is ignored if enabled.Usually you shouldn't call this method but
StatisticalDistribution.sample()
instead.- Specified by:
originalSample
in interfaceStatisticalDistribution
- Returns:
- the next pseudo random number in the sequence, following the
implemented distribution, ignoring the
Antithetic Variates Technique
if enabled
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