# Lnorm-class

From distr v1.8
0th

Percentile

##### Class "Lnorm"

The log normal distribution has density $$d(x) = \frac{1}{\sqrt{2\pi}\sigma x} e^{-(\log(x) - \mu)^2/2 \sigma^2}$$ where $\mu$, by default $=0$, and $\sigma$, by default $=1$, are the mean and standard deviation of the logarithm. C.f. rlnorm

Keywords
distribution
##### Note

The mean is $E(X) = exp(\mu + 1/2 \sigma^2)$, and the variance $Var(X) = exp(2\mu + \sigma^2)(exp(\sigma^2) - 1)$ and hence the coefficient of variation is $\sqrt{exp(\sigma^2) - 1}$ which is approximately $\sigma$ when that is small (e.g., $\sigma < 1/2$).

##### Objects from the Class

Objects can be created by calls of the form Lnorm(meanlog, sdlog). This object is a log normal distribution.

##### Extends

Class "AbscontDistribution", directly. Class "UnivariateDistribution", by class "AbscontDistribution". Class "Distribution", by class "AbscontDistribution".

LnormParameter-class AbscontDistribution-class Reals-class rlnorm

##### Aliases
• Lnorm-class
• Lnorm
• initialize,Lnorm-method
##### Examples
L=Lnorm(meanlog=1,sdlog=1) # L is a lnorm distribution with mean=1 and sd=1.
r(L)(1) # one random number generated from this distribution, e.g. 3.608011
d(L)(1) # Density of this distribution is 0.2419707 for x=1.
p(L)(1) # Probability that x<1 is 0.1586553.
q(L)(.1) # Probability that x<0.754612 is 0.1.
meanlog(L) # meanlog of this distribution is 1.
meanlog(L)=2 # meanlog of this distribution is now 2.
Documentation reproduced from package distr, version 1.8, License: GPL (version 2 or later)

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