Class LogNormalDistribution
java.lang.Object
org.hipparchus.distribution.continuous.AbstractRealDistribution
org.hipparchus.distribution.continuous.LogNormalDistribution
- All Implemented Interfaces:
Serializable
,RealDistribution
Implementation of the log-normal (gaussian) distribution.
Parameters:
X
is log-normally distributed if its natural logarithm log(X)
is normally distributed. The probability distribution function of X
is given by (for x > 0
)
exp(-0.5 * ((ln(x) - m) / s)^2) / (s * sqrt(2 * pi) * x)
m
is the location parameter: this is the mean of the normally distributed natural logarithm of this distribution,s
is the shape parameter: this is the standard deviation of the normally distributed natural logarithm of this distribution.
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Field Summary
Fields inherited from class org.hipparchus.distribution.continuous.AbstractRealDistribution
DEFAULT_SOLVER_ABSOLUTE_ACCURACY
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Constructor Summary
ConstructorDescriptionCreate a log-normal distribution, where the mean and standard deviation of thenormally distributed
natural logarithm of the log-normal distribution are equal to zero and one respectively.LogNormalDistribution
(double location, double shape) Create a log-normal distribution using the specified location and shape.LogNormalDistribution
(double location, double shape, double inverseCumAccuracy) Creates a log-normal distribution. -
Method Summary
Modifier and TypeMethodDescriptiondouble
cumulativeProbability
(double x) For a random variableX
whose values are distributed according to this distribution, this method returnsP(X <= x)
.double
density
(double x) Returns the probability density function (PDF) of this distribution evaluated at the specified pointx
.double
Returns the location parameter of this distribution.double
Use this method to get the numerical value of the mean of this distribution.double
Use this method to get the numerical value of the variance of this distribution.double
getShape()
Returns the shape parameter of this distribution.double
Access the lower bound of the support.double
Access the upper bound of the support.boolean
Use this method to get information about whether the support is connected, i.e.double
logDensity
(double x) Returns the natural logarithm of the probability density function (PDF) of this distribution evaluated at the specified pointx
.double
probability
(double x0, double x1) For a random variableX
whose values are distributed according to this distribution, this method returnsP(x0 < X <= x1)
.Methods inherited from class org.hipparchus.distribution.continuous.AbstractRealDistribution
getSolverAbsoluteAccuracy, inverseCumulativeProbability
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Constructor Details
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LogNormalDistribution
public LogNormalDistribution()Create a log-normal distribution, where the mean and standard deviation of thenormally distributed
natural logarithm of the log-normal distribution are equal to zero and one respectively. In other words, the location of the returned distribution is0
, while its shape is1
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LogNormalDistribution
Create a log-normal distribution using the specified location and shape.- Parameters:
location
- the location parameter of this distributionshape
- the shape parameter of this distribution- Throws:
MathIllegalArgumentException
- ifshape <= 0
.
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LogNormalDistribution
public LogNormalDistribution(double location, double shape, double inverseCumAccuracy) throws MathIllegalArgumentException Creates a log-normal distribution.- Parameters:
location
- Location parameter of this distribution.shape
- Shape parameter of this distribution.inverseCumAccuracy
- Inverse cumulative probability accuracy.- Throws:
MathIllegalArgumentException
- ifshape <= 0
.
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Method Details
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getLocation
public double getLocation()Returns the location parameter of this distribution.- Returns:
- the location parameter
- Since:
- 1.4
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getShape
public double getShape()Returns the shape parameter of this distribution.- Returns:
- the shape parameter
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density
public double density(double x) Returns the probability density function (PDF) of this distribution evaluated at the specified pointx
. In general, the PDF is the derivative of theCDF
. If the derivative does not exist atx
, then an appropriate replacement should be returned, e.g.Double.POSITIVE_INFINITY
,Double.NaN
, or the limit inferior or limit superior of the difference quotient. For locationm
, and shapes
of this distribution, the PDF is given by0
ifx <= 0
,exp(-0.5 * ((ln(x) - m) / s)^2) / (s * sqrt(2 * pi) * x)
otherwise.
- Parameters:
x
- the point at which the PDF is evaluated- Returns:
- the value of the probability density function at point
x
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logDensity
public double logDensity(double x) Returns the natural logarithm of the probability density function (PDF) of this distribution evaluated at the specified pointx
. In general, the PDF is the derivative of theCDF
. If the derivative does not exist atx
, then an appropriate replacement should be returned, e.g.Double.POSITIVE_INFINITY
,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 ofRealDistribution.density(double)
.The default implementation simply computes the logarithm of
density(x)
. See documentation ofdensity(double)
for computation details.- Specified by:
logDensity
in interfaceRealDistribution
- Overrides:
logDensity
in classAbstractRealDistribution
- Parameters:
x
- the point at which the PDF is evaluated- Returns:
- the logarithm of the value of the probability density function at point
x
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cumulativeProbability
public double cumulativeProbability(double x) For a random variableX
whose values are distributed according to this distribution, this method returnsP(X <= x)
. In other words, this method represents the (cumulative) distribution function (CDF) for this distribution. For locationm
, and shapes
of this distribution, the CDF is given by0
ifx <= 0
,0
ifln(x) - m < 0
andm - ln(x) > 40 * s
, as in these cases the actual value is withinDouble.MIN_VALUE
of 0,1
ifln(x) - m >= 0
andln(x) - m > 40 * s
, as in these cases the actual value is withinDouble.MIN_VALUE
of 1,0.5 + 0.5 * erf((ln(x) - m) / (s * sqrt(2))
otherwise.
- Parameters:
x
- the point at which the CDF is evaluated- Returns:
- the probability that a random variable with this
distribution takes a value less than or equal to
x
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probability
For a random variableX
whose values are distributed according to this distribution, this method returnsP(x0 < X <= x1)
.- Specified by:
probability
in interfaceRealDistribution
- Overrides:
probability
in classAbstractRealDistribution
- Parameters:
x0
- Lower bound (excluded).x1
- Upper bound (included).- Returns:
- the probability that a random variable with this distribution
takes a value between
x0
andx1
, excluding the lower and including the upper endpoint. - Throws:
MathIllegalArgumentException
- ifx0 > x1
. The default implementation uses the identityP(x0 < X <= x1) = P(X <= x1) - P(X <= x0)
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getNumericalMean
public double getNumericalMean()Use this method to get the numerical value of the mean of this distribution. For locationm
and shapes
, the mean isexp(m + s^2 / 2)
.- Returns:
- the mean or
Double.NaN
if it is not defined
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getNumericalVariance
public double getNumericalVariance()Use this method to get the numerical value of the variance of this distribution. For locationm
and shapes
, the variance is(exp(s^2) - 1) * exp(2 * m + s^2)
.- Returns:
- the variance (possibly
Double.POSITIVE_INFINITY
as for certain cases inTDistribution
) orDouble.NaN
if it is not defined
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getSupportLowerBound
public double getSupportLowerBound()Access the lower bound of the support. This method must return the same value asinverseCumulativeProbability(0)
. In other words, this method must return
The lower bound of the support is always 0 no matter the parameters.inf {x in R | P(X <= x) > 0}
.- Returns:
- lower bound of the support (always 0)
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getSupportUpperBound
public double getSupportUpperBound()Access the upper bound of the support. This method must return the same value asinverseCumulativeProbability(1)
. In other words, this method must return
The upper bound of the support is always positive infinity no matter the parameters.inf {x in R | P(X <= x) = 1}
.- Returns:
- upper bound of the support (always
Double.POSITIVE_INFINITY
)
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isSupportConnected
public boolean isSupportConnected()Use this method to get information about whether the support is connected, i.e. whether all values between the lower and upper bound of the support are included in the support. The support of this distribution is connected.- Returns:
true
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