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.
DEFAULT_SOLVER_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 scale,
double shape)
Create a log-normal distribution using the specified scale and shape.
|
LogNormalDistribution(double scale,
double shape,
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.
|
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.
|
double |
logDensity(double x)
Returns the natural logarithm of the probability density function
(PDF) of this distribution evaluated at the specified point
x. |
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). |
getSolverAbsoluteAccuracy, inverseCumulativeProbabilitypublic 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 scale,
double shape)
throws MathIllegalArgumentException
scale - the scale parameter of this distributionshape - the shape parameter of this distributionMathIllegalArgumentException - if shape <= 0.public LogNormalDistribution(double scale,
double shape,
double inverseCumAccuracy)
throws MathIllegalArgumentException
scale - Scale parameter of this distribution.shape - Shape parameter of this distribution.inverseCumAccuracy - Inverse cumulative probability accuracy.MathIllegalArgumentException - 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 evaluatedxpublic double logDensity(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. 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 of
RealDistribution.density(double).
The default implementation simply computes the logarithm of density(x).
See documentation of density(double) for computation details.
logDensity in interface RealDistributionlogDensity in class AbstractRealDistributionx - the point at which the PDF is evaluatedxpublic 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 evaluatedxpublic double probability(double x0,
double x1)
throws MathIllegalArgumentException
X whose values are distributed according
to this distribution, this method returns P(x0 < X <= x1).probability in interface RealDistributionprobability in class AbstractRealDistributionx0 - Lower bound (excluded).x1 - Upper bound (included).x0 and x1, excluding the lower
and including the upper endpoint.MathIllegalArgumentException - if x0 > x1.
The default implementation uses the identity
P(x0 < X <= x1) = P(X <= x1) - P(X <= x0)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 isSupportConnected()
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