public class LogNormalDistribution extends AbstractRealDistribution
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 scale 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.
Modifier and Type | Field and Description |
---|---|
static double |
DEFAULT_INVERSE_ABSOLUTE_ACCURACY
Default inverse cumulative probability accuracy.
|
random, SOLVER_DEFAULT_ABSOLUTE_ACCURACY
Constructor and Description |
---|
LogNormalDistribution()
Create a log-normal distribution, where the mean and standard deviation
of the
normally distributed natural
logarithm of the log-normal distribution are equal to zero and one
respectively. |
LogNormalDistribution(double scaleIn,
double shapeIn)
Create a log-normal distribution using the specified scale and shape.
|
LogNormalDistribution(double scaleIn,
double shapeIn,
double inverseCumAccuracy)
Create a log-normal distribution using the specified scale, shape and
inverse cumulative distribution accuracy.
|
LogNormalDistribution(RandomGenerator rng,
double scaleIn,
double shapeIn,
double inverseCumAccuracy)
Creates a log-normal distribution.
|
Modifier and Type | Method and Description |
---|---|
double |
cumulativeProbability(double x)
For a random variable
X whose values are distributed according
to this distribution, this method returns P(X <= x) . |
double |
density(double x)
Returns the probability density function (PDF) of this distribution
evaluated at the specified point
x . |
double |
getNumericalMean()
Use this method to get the numerical value of the mean of this
distribution.
|
double |
getNumericalVariance()
Use this method to get the numerical value of the variance of this
distribution.
|
double |
getScale()
Returns the scale parameter of this distribution.
|
double |
getShape()
Returns the shape parameter of this distribution.
|
protected double |
getSolverAbsoluteAccuracy()
Returns the solver absolute accuracy for inverse cumulative computation.
|
double |
getSupportLowerBound()
Access the lower bound of the support.
|
double |
getSupportUpperBound()
Access the upper bound of the support.
|
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.
|
boolean |
isSupportLowerBoundInclusive()
Returns true if support contains lower bound.
|
boolean |
isSupportUpperBoundInclusive()
Returns true if support contains upper bound.
|
double |
probability(double x0,
double x1)
For a random variable
X whose values are distributed according
to this distribution, this method returns P(x0 < X <= x1) . |
double |
sample()
Generate a random value sampled from this distribution.
|
inverseCumulativeProbability, probability, reseedRandomGenerator, sample
public static final double DEFAULT_INVERSE_ABSOLUTE_ACCURACY
public LogNormalDistribution()
normally distributed
natural
logarithm of the log-normal distribution are equal to zero and one
respectively. In other words, the scale of the returned distribution is 0
, while its shape is 1
.public LogNormalDistribution(double scaleIn, double shapeIn)
scaleIn
- the scale parameter of this distributionshapeIn
- the shape parameter of this distributionNotStrictlyPositiveException
- if shape <= 0
.public LogNormalDistribution(double scaleIn, double shapeIn, double inverseCumAccuracy)
scaleIn
- the scale parameter of this distributionshapeIn
- the shape parameter of this distributioninverseCumAccuracy
- Inverse cumulative probability accuracy.NotStrictlyPositiveException
- if shape <= 0
.public LogNormalDistribution(RandomGenerator rng, double scaleIn, double shapeIn, double inverseCumAccuracy)
rng
- Random number generator.scaleIn
- Scale parameter of this distribution.shapeIn
- Shape parameter of this distribution.inverseCumAccuracy
- Inverse cumulative probability accuracy.NotStrictlyPositiveException
- if shape <= 0
.public double getScale()
public double getShape()
public double density(double x)
x
. In general, the PDF is
the derivative of the CDF
.
If the derivative does not exist at x
, 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 scale m
, and shape s
of this distribution, the PDF
is given by
0
if x <= 0
,exp(-0.5 * ((ln(x) - m) / s)^2) / (s * sqrt(2 * pi) * x)
otherwise.x
- the point at which the PDF is evaluatedx
public double cumulativeProbability(double x)
X
whose values are distributed according
to this distribution, this method returns P(X <= x)
. In other
words, this method represents the (cumulative) distribution function
(CDF) for this distribution.
For scale m
, and shape s
of this distribution, the CDF
is given by
0
if x <= 0
,0
if ln(x) - m < 0
and m - ln(x) > 40 * s
, as in these cases the actual value is
within Double.MIN_VALUE
of 0,
1
if ln(x) - m >= 0
and ln(x) - m > 40 * s
, as in these cases the actual value is
within Double.MIN_VALUE
of 1,0.5 + 0.5 * erf((ln(x) - m) / (s * sqrt(2))
otherwise.x
- the point at which the CDF is evaluatedx
public double probability(double x0, double x1)
X
whose values are distributed according
to this distribution, this method returns P(x0 < X <= x1)
.probability
in interface RealDistribution
probability
in class AbstractRealDistribution
x0
- Lower bound (excluded).x1
- Upper bound (included).x0
and x1
, excluding the lower
and including the upper endpoint.protected double getSolverAbsoluteAccuracy()
getSolverAbsoluteAccuracy
in class AbstractRealDistribution
public double getNumericalMean()
m
and shape s
, the mean is exp(m + s^2 / 2)
.Double.NaN
if it is not definedpublic double getNumericalVariance()
m
and shape s
, the variance is (exp(s^2) - 1) * exp(2 * m + s^2)
.Double.POSITIVE_INFINITY
as
for certain cases in TDistribution
) or Double.NaN
if it
is not definedpublic double getSupportLowerBound()
inverseCumulativeProbability(0)
. In other words, this
method must return
inf {x in R | P(X <= x) > 0}
.
public double getSupportUpperBound()
inverseCumulativeProbability(1)
. In other words, this
method must return
inf {x in R | P(X <= x) = 1}
.
Double.POSITIVE_INFINITY
)public boolean isSupportLowerBoundInclusive()
public boolean isSupportUpperBoundInclusive()
public boolean isSupportConnected()
true
public double sample()
sample
in interface RealDistribution
sample
in class AbstractRealDistribution
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