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java.lang.Objectcom.numericalmethod.suanshu.stats.distribution.univariate.ExponentialDistribution
public class ExponentialDistribution
An exponential distribution describes the times between events in a Poisson process, a process in which events occur continuously and independently at a constant average rate.
The R equivalent functions are dexp, pexp, qexp, rexp.
| Field Summary | |
|---|---|
double |
lambda
the rate parameter |
| Constructor Summary | |
|---|---|
ExponentialDistribution()
Construct an instance of the standard exponential distribution, where the rate/lambda is 1. |
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ExponentialDistribution(double lambda)
Construct an exponential distribution. |
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| Method Summary | |
|---|---|
double |
cdf(double x)
The cumulative distribution function. |
double |
density(double x)
The density function, which, if exists, is the derivative of F. |
double |
entropy()
Get the entropy of this distribution. |
double |
kurtosis()
Get the excess kurtosis of this distribution. |
double |
mean()
Get the mean of this distribution. |
double |
median()
Get the median of this distribution. |
double |
moment(double t)
The moment generating function, which is the expected value of
etX
This may not always exist. |
double |
quantile(double u)
The inverse of the cumulative distribution function. |
double |
skew()
Get the skewness of this distribution. |
double |
variance()
Get the variance of this distribution. |
| Methods inherited from class java.lang.Object |
|---|
clone, equals, finalize, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait |
| Field Detail |
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public final double lambda
| Constructor Detail |
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public ExponentialDistribution()
public ExponentialDistribution(double lambda)
lambda - the rate| Method Detail |
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public double mean()
UnivariateDistribution
mean in interface UnivariateDistributionpublic double median()
UnivariateDistribution
median in interface UnivariateDistributionpublic double variance()
UnivariateDistribution
variance in interface UnivariateDistributionpublic double skew()
UnivariateDistribution
skew in interface UnivariateDistributionpublic double kurtosis()
UnivariateDistribution
kurtosis in interface UnivariateDistributionpublic double entropy()
UnivariateDistribution
entropy in interface UnivariateDistributionpublic double cdf(double x)
UnivariateDistribution
F(x) = Pr(X <= x)
cdf in interface UnivariateDistributionx - x
F(x) = Pr(X <= x)public double quantile(double u)
UnivariateDistribution
F-1(u) = x, such that
Pr(X <= x) = u
This may not always exist.
quantile in interface UnivariateDistributionu - u
F-1(u)public double density(double x)
UnivariateDistributionF.
It describes the density of probability at each point in the sample space.
f(x) = dF(X) / dx
This may not always exist. For the discrete cases, this is the probability mass function. It gives the probability that a discrete random variable is exactly equal to some value.
density in interface UnivariateDistributionx - x
F(x) = Pr(X <= x)public double moment(double t)
UnivariateDistribution
etX
This may not always exist.
moment in interface UnivariateDistributiont - x
E(exp(tX))
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SuanShu, a Java numerical and statistical library | |||||||
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