Package smile.stat.distribution
Class LogNormalDistribution
java.lang.Object
smile.stat.distribution.LogNormalDistribution
- All Implemented Interfaces:
Serializable
,Distribution
A log-normal distribution is a probability distribution of a random variable
whose logarithm is normally distributed. The log-normal distribution is the
single-tailed probability distribution of any random variable whose logarithm
is normally distributed. If X is a random variable with a normal distribution,
then Y = exp(X) has a log-normal distribution; likewise, if Y is log-normally
distributed, then log(Y) is normally distributed.
A variable might be modeled as log-normal if it can be thought of as
the multiplicative product of many independent random variables each of
which is positive.
- See Also:
-
Field Summary
-
Constructor Summary
-
Method Summary
Modifier and TypeMethodDescriptiondouble
cdf
(double x) Cumulative distribution function.double
entropy()
Returns Shannon entropy of the distribution.static LogNormalDistribution
fit
(double[] data) Estimates the distribution parameters by MLE.int
length()
Returns the number of parameters of the distribution.double
logp
(double x) The density at x in log scale, which may prevents the underflow problem.double
mean()
Returns the mean of distribution.double
p
(double x) The probability density function for continuous distribution or probability mass function for discrete distribution at x.double
quantile
(double p) The quantile, the probability to the left of quantile is p.double
rand()
Generates a random number following this distribution.toString()
double
variance()
Returns the variance of distribution.Methods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, wait
Methods inherited from interface smile.stat.distribution.Distribution
inverseTransformSampling, likelihood, logLikelihood, quantile, quantile, rand, rejectionSampling, sd
-
Field Details
-
mu
public final double muThe mean of normal distribution. -
sigma
public final double sigmaThe standard deviation of normal distribution. -
mean
public final double meanThe mean.
-
-
Constructor Details
-
LogNormalDistribution
public LogNormalDistribution(double mu, double sigma) Constructor.- Parameters:
mu
- the mean of normal distribution.sigma
- the standard deviation of normal distribution.
-
-
Method Details
-
fit
Estimates the distribution parameters by MLE.- Parameters:
data
- the training data.- Returns:
- the distribution.
-
length
public int length()Description copied from interface:Distribution
Returns the number of parameters of the distribution. The "length" is in the sense of the minimum description length principle.- Specified by:
length
in interfaceDistribution
- Returns:
- The number of parameters.
-
mean
public double mean()Description copied from interface:Distribution
Returns the mean of distribution.- Specified by:
mean
in interfaceDistribution
- Returns:
- The mean.
-
variance
public double variance()Description copied from interface:Distribution
Returns the variance of distribution.- Specified by:
variance
in interfaceDistribution
- Returns:
- The variance.
-
entropy
public double entropy()Description copied from interface:Distribution
Returns Shannon entropy of the distribution.- Specified by:
entropy
in interfaceDistribution
- Returns:
- Shannon entropy.
-
toString
-
rand
public double rand()Description copied from interface:Distribution
Generates a random number following this distribution.- Specified by:
rand
in interfaceDistribution
- Returns:
- a random number.
-
p
public double p(double x) Description copied from interface:Distribution
The probability density function for continuous distribution or probability mass function for discrete distribution at x.- Specified by:
p
in interfaceDistribution
- Parameters:
x
- a real number.- Returns:
- the density.
-
logp
public double logp(double x) Description copied from interface:Distribution
The density at x in log scale, which may prevents the underflow problem.- Specified by:
logp
in interfaceDistribution
- Parameters:
x
- a real number.- Returns:
- the log density.
-
cdf
public double cdf(double x) Description copied from interface:Distribution
Cumulative distribution function. That is the probability to the left of x.- Specified by:
cdf
in interfaceDistribution
- Parameters:
x
- a real number.- Returns:
- the probability.
-
quantile
public double quantile(double p) Description copied from interface:Distribution
The quantile, the probability to the left of quantile is p. It is actually the inverse of cdf.- Specified by:
quantile
in interfaceDistribution
- Parameters:
p
- the probability.- Returns:
- the quantile.
-