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Log-normal distribution

In probability theory, a log-normal (or lognormal) distribution is a continuous probability distribution of a random variable whose logarithm is normally distributed. Thus, if the random variable X is log-normally distributed, then Y = ln(X) has a normal distribution.[1][2] Equivalently, if Y has a normal distribution, then the exponential function of Y, X = exp(Y), has a log-normal distribution. A random variable which is log-normally distributed takes only positive real values. It is a convenient and useful model for measurements in exact and engineering sciences, as well as medicine, economics and other topics (e.g., energies, concentrations, lengths, prices of financial instruments, and other metrics).

Log-normal
Probability density function

Identical parameter but differing parameters
Cumulative distribution function

Notation
Parameters ,
Support
PDF
CDF
Quantile
Mean
Median
Mode
Variance
Skewness
Ex. kurtosis
Entropy
MGF defined only for numbers with a non-positive real part, see text
CF representation is asymptotically divergent but sufficient for numerical purposes
Fisher information
Method of Moments ,

The distribution is occasionally referred to as the Galton distribution or Galton's distribution, after Francis Galton.[3] The log-normal distribution has also been associated with other names, such as McAlister, Gibrat and Cobb–Douglas.[3]

A log-normal process is the statistical realization of the multiplicative product of many independent random variables, each of which is positive. This is justified by considering the central limit theorem in the log domain (sometimes called Gibrat's law). The log-normal distribution is the maximum entropy probability distribution for a random variate X—for which the mean and variance of ln(X) are specified.[4]

Definitions

Generation and parameters

Let   be a standard normal variable, and let   and   be two real numbers. Then, the distribution of the random variable

 

is called the log-normal distribution with parameters   and  . These are the expected value (or mean) and standard deviation of the variable's natural logarithm, not the expectation and standard deviation of   itself.

 
Relation between normal and log-normal distribution. If   is normally distributed, then   is log-normally distributed.

This relationship is true regardless of the base of the logarithmic or exponential function: if   is normally distributed, then so is   for any two positive numbers  . Likewise, if   is log-normally distributed, then so is  , where  .

In order to produce a distribution with desired mean   and variance  , one uses   and  

Alternatively, the "multiplicative" or "geometric" parameters   and   can be used. They have a more direct interpretation:   is the median of the distribution, and   is useful for determining "scatter" intervals, see below.

Probability density function

A positive random variable X is log-normally distributed (i.e.,  ), if the natural logarithm of X is normally distributed with mean   and variance  :

 

Let   and   be respectively the cumulative probability distribution function and the probability density function of the N(0,1) distribution, then we have that[1][3]

 

Cumulative distribution function

The cumulative distribution function is

 

where   is the cumulative distribution function of the standard normal distribution (i.e., N(0,1)).

This may also be expressed as follows:[1]

 

where erfc is the complementary error function.

Multivariate log-normal

If   is a multivariate normal distribution, then   has a multivariate log-normal distribution.[5][6] The exponential is applied elementwise to the random vector  . The mean of   is

 

and its covariance matrix is

 

Since the multivariate log-normal distribution is not widely used, the rest of this entry only deals with the univariate distribution.

Characteristic function and moment generating function

All moments of the log-normal distribution exist and

 

This can be derived by letting   within the integral. However, the log-normal distribution is not determined by its moments.[7] This implies that it cannot have a defined moment generating function in a neighborhood of zero.[8] Indeed, the expected value   is not defined for any positive value of the argument  , since the defining integral diverges.

The characteristic function   is defined for real values of t, but is not defined for any complex value of t that has a negative imaginary part, and hence the characteristic function is not analytic at the origin. Consequently, the characteristic function of the log-normal distribution cannot be represented as an infinite convergent series.[9] In particular, its Taylor formal series diverges:

 

However, a number of alternative divergent series representations have been obtained.[9][10][11][12]

A closed-form formula for the characteristic function   with   in the domain of convergence is not known. A relatively simple approximating formula is available in closed form, and is given by[13]

 

where   is the Lambert W function. This approximation is derived via an asymptotic method, but it stays sharp all over the domain of convergence of  .

Properties

 
a.   is a log-normal variable with  .   is computed by transforming to the normal variable  , then integrating its density over the domain defined by   (blue regions), using the numerical method of ray-tracing.[14] b & c. The pdf and cdf of the function   of the log-normal variable can also be computed in this way.

Probability in different domains

The probability content of a log-normal distribution in any arbitrary domain can be computed to desired precision by first transforming the variable to normal, then numerically integrating using the ray-trace method.[14] (Matlab code)

Probabilities of functions of a log-normal variable

Since the probability of a log-normal can be computed in any domain, this means that the cdf (and consequently pdf and inverse cdf) of any function of a log-normal variable can also be computed.[14] (Matlab code)

Geometric or multiplicative moments

The geometric or multiplicative mean of the log-normal distribution is  . It equals the median. The geometric or multiplicative standard deviation is  .[15][16]

By analogy with the arithmetic statistics, one can define a geometric variance,  , and a geometric coefficient of variation,[15]  , has been proposed. This term was intended to be analogous to the coefficient of variation, for describing multiplicative variation in log-normal data, but this definition of GCV has no theoretical basis as an estimate of   itself (see also Coefficient of variation).

Note that the geometric mean is smaller than the arithmetic mean. This is due to the AM–GM inequality and is a consequence of the logarithm being a concave function. In fact,

 [17]

In finance, the term   is sometimes interpreted as a convexity correction. From the point of view of stochastic calculus, this is the same correction term as in Itō's lemma for geometric Brownian motion.

Arithmetic moments

For any real or complex number n, the n-th moment of a log-normally distributed variable X is given by[3]

 

Specifically, the arithmetic mean, expected square, arithmetic variance, and arithmetic standard deviation of a log-normally distributed variable X are respectively given by:[1]

 

The arithmetic coefficient of variation   is the ratio  . For a log-normal distribution it is equal to[2]

 

This estimate is sometimes referred to as the "geometric CV" (GCV),[18][19] due to its use of the geometric variance. Contrary to the arithmetic standard deviation, the arithmetic coefficient of variation is independent of the arithmetic mean.

The parameters μ and σ can be obtained, if the arithmetic mean and the arithmetic variance are known:

 

A probability distribution is not uniquely determined by the moments E[Xn] = e + 1/2n2σ2 for n ≥ 1. That is, there exist other distributions with the same set of moments.[3] In fact, there is a whole family of distributions with the same moments as the log-normal distribution.[citation needed]

Mode, median, quantiles

 
Comparison of mean, median and mode of two log-normal distributions with different skewness.

The mode is the point of global maximum of the probability density function. In particular, by solving the equation  , we get that:

 

Since the log-transformed variable   has a normal distribution, and quantiles are preserved under monotonic transformations, the quantiles of   are

 

where   is the quantile of the standard normal distribution.

Specifically, the median of a log-normal distribution is equal to its multiplicative mean,[20]

 

Partial expectation

The partial expectation of a random variable   with respect to a threshold   is defined as

 

Alternatively, by using the definition of conditional expectation, it can be written as  . For a log-normal random variable, the partial expectation is given by:

 

where   is the normal cumulative distribution function. The derivation of the formula is provided in the Talk page. The partial expectation formula has applications in insurance and economics, it is used in solving the partial differential equation leading to the Black–Scholes formula.

Conditional expectation

The conditional expectation of a log-normal random variable  —with respect to a threshold  —is its partial expectation divided by the cumulative probability of being in that range:

 

Alternative parameterizations

In addition to the characterization by   or  , here are multiple ways how the log-normal distribution can be parameterized. ProbOnto, the knowledge base and ontology of probability distributions[21][22] lists seven such forms:

 
Overview of parameterizations of the log-normal distributions.
  • LogNormal1(μ,σ) with mean, μ, and standard deviation, σ, both on the log-scale [23]
     
  • LogNormal2(μ,υ) with mean, μ, and variance, υ, both on the log-scale
     
  • LogNormal3(m,σ) with median, m, on the natural scale and standard deviation, σ, on the log-scale[23]
     
  • LogNormal4(m,cv) with median, m, and coefficient of variation, cv, both on the natural scale
     
  • LogNormal5(μ,τ) with mean, μ, and precision, τ, both on the log-scale[24]
     
  • LogNormal6(m,σg) with median, m, and geometric standard deviation, σg, both on the natural scale[25]
     
  • LogNormal7(μNN) with mean, μN, and standard deviation, σN, both on the natural scale[26]
     

Examples for re-parameterization

Consider the situation when one would like to run a model using two different optimal design tools, for example PFIM[27] and PopED.[28] The former supports the LN2, the latter LN7 parameterization, respectively. Therefore, the re-parameterization is required, otherwise the two tools would produce different results.

For the transition   following formulas hold   and  .

For the transition   following formulas hold   and  .

All remaining re-parameterisation formulas can be found in the specification document on the project website.[29]

Multiple, reciprocal, power

  • Multiplication by a constant: If   then   for  
  • Reciprocal: If   then  
  • Power: If   then   for  

Multiplication and division of independent, log-normal random variables

If two independent, log-normal variables   and   are multiplied [divided], the product [ratio] is again log-normal, with parameters   [ ] and  , where  . This is easily generalized to the product of   such variables.

More generally, if   are   independent, log-normally distributed variables, then  

Multiplicative central limit theorem

The geometric or multiplicative mean of   independent, identically distributed, positive random variables   shows, for   approximately a log-normal distribution with parameters   and  , assuming   is finite.

In fact, the random variables do not have to be identically distributed. It is enough for the distributions of   to all have finite variance and satisfy the other conditions of any of the many variants of the central limit theorem.

This is commonly known as Gibrat's law.

Other

A set of data that arises from the log-normal distribution has a symmetric Lorenz curve (see also Lorenz asymmetry coefficient).[30]

The harmonic  , geometric   and arithmetic   means of this distribution are related;[31] such relation is given by

 

Log-normal distributions are infinitely divisible,[32] but they are not stable distributions, which can be easily drawn from.[33]

Related distributions

  • If   is a normal distribution, then  
  • If   is distributed log-normally, then   is a normal random variable.
  • Let   be independent log-normally distributed variables with possibly varying   and   parameters, and  . The distribution of   has no closed-form expression, but can be reasonably approximated by another log-normal distribution   at the right tail.[34] Its probability density function at the neighborhood of 0 has been characterized[33] and it does not resemble any log-normal distribution. A commonly used approximation due to L.F. Fenton (but previously stated by R.I. Wilkinson and mathematical justified by Marlow[35]) is obtained by matching the mean and variance of another log-normal distribution:
     
    In the case that all   have the same variance parameter  , these formulas simplify to
     

For a more accurate approximation, one can use the Monte Carlo method to estimate the cumulative distribution function, the pdf and the right tail.[36][37]

The sum of correlated log-normally distributed random variables can also be approximated by a log-normal distribution[citation needed]

 
  • If   then   is said to have a Three-parameter log-normal distribution with support  .[38]  ,  .
  • The log-normal distribution is a special case of the semi-bounded Johnson's SU-distribution.[39]
  • If   with  , then   (Suzuki distribution).
  • A substitute for the log-normal whose integral can be expressed in terms of more elementary functions[40] can be obtained based on the logistic distribution to get an approximation for the CDF
     
    This is a log-logistic distribution.

Statistical inference

Estimation of parameters

For determining the maximum likelihood estimators of the log-normal distribution parameters μ and σ, we can use the same procedure as for the normal distribution. Note that

 
where   is the density function of the normal distribution  . Therefore, the log-likelihood function is
 

Since the first term is constant with regard to μ and σ, both logarithmic likelihood functions,   and  , reach their maximum with the same   and  . Hence, the maximum likelihood estimators are identical to those for a normal distribution for the observations  ,

 

For finite n, these estimators are biased. Whereas the bias for   is negligible, a less biased estimator for   is obtained as for the normal distribution by replacing the denominator n by n−1 in the equation for  .

When the individual values   are not available, but the sample's mean   and standard deviation s is, then the corresponding parameters are determined by the following formulas, obtained from solving the equations for the expectation   and variance   for   and  :

 

Statistics

The most efficient way to analyze log-normally distributed data consists of applying the well-known methods based on the normal distribution to logarithmically transformed data and then to back-transform results if appropriate.

Scatter intervals

A basic example is given by scatter intervals: For the normal distribution, the interval   contains approximately two thirds (68%) of the probability (or of a large sample), and   contain 95%. Therefore, for a log-normal distribution,

 
contains 2/3, and
 
contains 95% of the probability. Using estimated parameters, then approximately the same percentages of the data should be contained in these intervals.

Confidence interval for μ*

Using the principle, note that a confidence interval for   is  , where   is the standard error and q is the 97.5% quantile of a t distribution with n-1 degrees of freedom. Back-transformation leads to a confidence interval for  ,

 
with  

Extremal principle of entropy to fix the free parameter σ

In applications,   is a parameter to be determined. For growing processes balanced by production and dissipation, the use of an extremal principle of Shannon entropy shows that[41]

 

This value can then be used to give some scaling relation between the inflexion point and maximum point of the log-normal distribution.[41] This relationship is determined by the base of natural logarithm,  , and exhibits some geometrical similarity to the minimal surface energy principle. These scaling relations are useful for predicting a number of growth processes (epidemic spreading, droplet splashing, population growth, swirling rate of the bathtub vortex, distribution of language characters, velocity profile of turbulences, etc.). For example, the log-normal function with such   fits well with the size of secondarily produced droplets during droplet impact [42] and the spreading of an epidemic disease.[43]

The value   is used to provide a probabilistic solution for the Drake equation.[44]

Occurrence and applications

The log-normal distribution is important in the description of natural phenomena. Many natural growth processes are driven by the accumulation of many small percentage changes which become additive on a log scale. Under appropriate regularity conditions, the distribution of the resulting accumulated changes will be increasingly well approximated by a log-normal, as noted in the section above on "Multiplicative Central Limit Theorem". This is also known as Gibrat's law, after Robert Gibrat (1904–1980) who formulated it for companies.[45] If the rate of accumulation of these small changes does not vary over time, growth becomes independent of size. Even if that's not true, the size distributions at any age of things that grow over time tends to be log-normal.

A second justification is based on the observation that fundamental natural laws imply multiplications and divisions of positive variables. Examples are the simple gravitation law connecting masses and distance with the resulting force, or the formula for equilibrium concentrations of chemicals in a solution that connects concentrations of educts and products. Assuming log-normal distributions of the variables involved leads to consistent models in these cases.

Even if none of these justifications apply, the log-normal distribution is often a plausible and empirically adequate model. Examples include the following:

Human behaviors

  • The length of comments posted in Internet discussion forums follows a log-normal distribution.[46]
  • Users' dwell time on online articles (jokes, news etc.) follows a log-normal distribution.[47]
  • The length of chess games tends to follow a log-normal distribution.[48]
  • Onset durations of acoustic comparison stimuli that are matched to a standard stimulus follow a log-normal distribution.[17]
  • Rubik's Cube solves, both general or by person, appear to follow a log-normal distribution.[citation needed]

In biology and medicine

  • Measures of size of living tissue (length, skin area, weight).[49]
  • For highly communicable epidemics, such as SARS in 2003, if public intervention control policies are involved, the number of hospitalized cases is shown to satisfy the log-normal distribution with no free parameters if an entropy is assumed and the standard deviation is determined by the principle of maximum rate of entropy production.[50]
  • The length of inert appendages (hair, claws, nails, teeth) of biological specimens, in the direction of growth.[citation needed]
  • The normalised RNA-Seq readcount for any genomic region can be well approximated by log-normal distribution.
  • The PacBio sequencing read length follows a log-normal distribution.[51]
  • Certain physiological measurements, such as blood pressure of adult humans (after separation on male/female subpopulations).[52]
  • Several pharmacokinetic variables, such as Cmax, elimination half-life and the elimination rate constant.[53]
  • In neuroscience, the distribution of firing rates across a population of neurons is often approximately log-normal. This has been first observed in the cortex and striatum [54] and later in hippocampus and entorhinal cortex,[55] and elsewhere in the brain.[56][57] Also, intrinsic gain distributions and synaptic weight distributions appear to be log-normal[58] as well.
  • In operating-rooms management, the distribution of surgery duration.
  • In the size of avalanches of fractures in the cytoskeleton of living cells, showing log-normal distributions, with significantly higher size in cancer cells than healthy ones. [59]

In colloidal chemistry and polymer chemistry

Consequently, reference ranges for measurements in healthy individuals are more accurately estimated by assuming a log-normal distribution than by assuming a symmetric distribution about the mean.

 
Fitted cumulative log-normal distribution to annually maximum 1-day rainfalls, see distribution fitting

Hydrology

  • In hydrology, the log-normal distribution is used to analyze extreme values of such variables as monthly and annual maximum values of daily rainfall and river discharge volumes.[60]
The image on the right, made with CumFreq, illustrates an example of fitting the log-normal distribution to ranked annually maximum one-day rainfalls showing also the 90% confidence belt based on the binomial distribution.[61]
The rainfall data are represented by plotting positions as part of a cumulative frequency analysis.

Social sciences and demographics

  • In economics, there is evidence that the income of 97%–99% of the population is distributed log-normally.[62] (The distribution of higher-income individuals follows a Pareto distribution).[63]
  • If an income distribution follows a log-normal distribution with standard deviation  , then the Gini coefficient, commonly use to evaluate income inequality, can be computed as   where   is the error function, since  , where   is the cumulative distribution function of a standard normal distribution.
  • In finance, in particular the Black–Scholes model, changes in the logarithm of exchange rates, price indices, and stock market indices are assumed normal[64] (these variables behave like compound interest, not like simple interest, and so are multiplicative). However, some mathematicians such as Benoit Mandelbrot have argued [65] that log-Lévy distributions, which possesses heavy tails would be a more appropriate model, in particular for the analysis for stock market crashes. Indeed, stock price distributions typically exhibit a fat tail.[66] The fat tailed distribution of changes during stock market crashes invalidate the assumptions of the central limit theorem.
  • In scientometrics, the number of citations to journal articles and patents follows a discrete log-normal distribution.[67][68]
  • City sizes (population) satisfy Gibrat's Law.[69] The growth process of city sizes is proportionate and invariant with respect to size. From the central limit theorem therefore, the log of city size is normally distributed.
  • The number of sexual partners appears to be best described by a log-normal distribution.[70]

Technology

  • In reliability analysis, the log-normal distribution is often used to model times to repair a maintainable system.[71]
  • In wireless communication, "the local-mean power expressed in logarithmic values, such as dB or neper, has a normal (i.e., Gaussian) distribution."[72] Also, the random obstruction of radio signals due to large buildings and hills, called shadowing, is often modeled as a log-normal distribution.
  • Particle size distributions produced by comminution with random impacts, such as in ball milling.[citation needed]
  • The file size distribution of publicly available audio and video data files (MIME types) follows a log-normal distribution over five orders of magnitude.[73]
  • In computer networks and Internet traffic analysis, log-normal is shown as a good statistical model to represent the amount of traffic per unit time. This has been shown by applying a robust statistical approach on a large groups of real Internet traces. In this context, the log-normal distribution has shown a good performance in two main use cases: (1) predicting the proportion of time traffic will exceed a given level (for service level agreement or link capacity estimation) i.e. link dimensioning based on bandwidth provisioning and (2) predicting 95th percentile pricing.[74]

See also

Notes

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normal, distribution, probability, theory, normal, lognormal, distribution, continuous, probability, distribution, random, variable, whose, logarithm, normally, distributed, thus, random, variable, normally, distributed, then, normal, distribution, equivalentl. In probability theory a log normal or lognormal distribution is a continuous probability distribution of a random variable whose logarithm is normally distributed Thus if the random variable X is log normally distributed then Y ln X has a normal distribution 1 2 Equivalently if Y has a normal distribution then the exponential function of Y X exp Y has a log normal distribution A random variable which is log normally distributed takes only positive real values It is a convenient and useful model for measurements in exact and engineering sciences as well as medicine economics and other topics e g energies concentrations lengths prices of financial instruments and other metrics Log normalProbability density functionIdentical parameter m displaystyle mu but differing parameters s displaystyle sigma Cumulative distribution functionm 0 displaystyle mu 0 NotationLognormal m s 2 displaystyle operatorname Lognormal mu sigma 2 Parametersm displaystyle mu in infty infty s gt 0 displaystyle sigma gt 0 Supportx 0 displaystyle x in 0 infty PDF1 x s 2 p exp ln x m 2 2 s 2 displaystyle frac 1 x sigma sqrt 2 pi exp left frac left ln left x right mu right 2 2 sigma 2 right CDF1 2 1 erf ln x m s 2 displaystyle frac 1 2 left 1 operatorname erf left frac ln x mu sigma sqrt 2 right right Quantileexp m 2 s 2 erf 1 2 p 1 displaystyle exp mu sqrt 2 sigma 2 operatorname erf 1 2p 1 Meanexp m s 2 2 displaystyle exp left mu frac sigma 2 2 right Medianexp m displaystyle exp mu Modeexp m s 2 displaystyle exp mu sigma 2 Variance exp s 2 1 exp 2 m s 2 displaystyle exp sigma 2 1 exp 2 mu sigma 2 Skewness exp s 2 2 exp s 2 1 displaystyle exp sigma 2 2 sqrt exp sigma 2 1 Ex kurtosisexp 4 s 2 2 exp 3 s 2 3 exp 2 s 2 6 displaystyle exp 4 sigma 2 2 exp 3 sigma 2 3 exp 2 sigma 2 6 Entropylog 2 s e m 1 2 2 p displaystyle log 2 sigma e mu tfrac 1 2 sqrt 2 pi MGFdefined only for numbers with a non positive real part see textCFrepresentation n 0 i t n n e n m n 2 s 2 2 displaystyle sum n 0 infty frac it n n e n mu n 2 sigma 2 2 is asymptotically divergent but sufficient for numerical purposesFisher information 1 s 2 0 0 2 s 2 displaystyle begin pmatrix 1 sigma 2 amp 0 0 amp 2 sigma 2 end pmatrix Method of Momentsm log E X Var X E X 2 1 displaystyle mu log left frac operatorname E X sqrt frac operatorname Var X operatorname E X 2 1 right s log Var X E X 2 1 displaystyle sigma sqrt log left frac operatorname Var X operatorname E X 2 1 right The distribution is occasionally referred to as the Galton distribution or Galton s distribution after Francis Galton 3 The log normal distribution has also been associated with other names such as McAlister Gibrat and Cobb Douglas 3 A log normal process is the statistical realization of the multiplicative product of many independent random variables each of which is positive This is justified by considering the central limit theorem in the log domain sometimes called Gibrat s law The log normal distribution is the maximum entropy probability distribution for a random variate X for which the mean and variance of ln X are specified 4 Contents 1 Definitions 1 1 Generation and parameters 1 2 Probability density function 1 3 Cumulative distribution function 1 4 Multivariate log normal 1 5 Characteristic function and moment generating function 2 Properties 2 1 Probability in different domains 2 2 Probabilities of functions of a log normal variable 2 3 Geometric or multiplicative moments 2 4 Arithmetic moments 2 5 Mode median quantiles 2 6 Partial expectation 2 7 Conditional expectation 2 8 Alternative parameterizations 2 8 1 Examples for re parameterization 2 9 Multiple reciprocal power 2 10 Multiplication and division of independent log normal random variables 2 11 Multiplicative central limit theorem 2 12 Other 3 Related distributions 4 Statistical inference 4 1 Estimation of parameters 4 2 Statistics 4 2 1 Scatter intervals 4 2 2 Confidence interval for m 4 3 Extremal principle of entropy to fix the free parameter s 5 Occurrence and applications 5 1 Human behaviors 5 2 In biology and medicine 5 3 In colloidal chemistry and polymer chemistry 5 4 Hydrology 5 5 Social sciences and demographics 5 6 Technology 6 See also 7 Notes 8 Further reading 9 External linksDefinitions EditGeneration and parameters Edit Let Z displaystyle Z be a standard normal variable and let m displaystyle mu and s gt 0 displaystyle sigma gt 0 be two real numbers Then the distribution of the random variable X e m s Z displaystyle X e mu sigma Z is called the log normal distribution with parameters m displaystyle mu and s displaystyle sigma These are the expected value or mean and standard deviation of the variable s natural logarithm not the expectation and standard deviation of X displaystyle X itself Relation between normal and log normal distribution If Y m s Z displaystyle Y mu sigma Z is normally distributed then X e Y displaystyle X sim e Y is log normally distributed This relationship is true regardless of the base of the logarithmic or exponential function if log a X displaystyle log a X is normally distributed then so is log b X displaystyle log b X for any two positive numbers a b 1 displaystyle a b neq 1 Likewise if e Y displaystyle e Y is log normally distributed then so is a Y displaystyle a Y where 0 lt a 1 displaystyle 0 lt a neq 1 In order to produce a distribution with desired mean m X displaystyle mu X and variance s X 2 displaystyle sigma X 2 one uses m ln m X 2 m X 2 s X 2 displaystyle mu ln left frac mu X 2 sqrt mu X 2 sigma X 2 right and s 2 ln 1 s X 2 m X 2 displaystyle sigma 2 ln left 1 frac sigma X 2 mu X 2 right Alternatively the multiplicative or geometric parameters m e m displaystyle mu e mu and s e s displaystyle sigma e sigma can be used They have a more direct interpretation m displaystyle mu is the median of the distribution and s displaystyle sigma is useful for determining scatter intervals see below Probability density function Edit A positive random variable X is log normally distributed i e X Lognormal m x s x 2 displaystyle X sim operatorname Lognormal mu x sigma x 2 if the natural logarithm of X is normally distributed with mean m displaystyle mu and variance s 2 displaystyle sigma 2 ln X N m s 2 displaystyle ln X sim mathcal N mu sigma 2 Let F displaystyle Phi and f displaystyle varphi be respectively the cumulative probability distribution function and the probability density function of the N 0 1 distribution then we have that 1 3 f X x d d x Pr X x d d x Pr ln X ln x d d x F ln x m s f ln x m s d d x ln x m s f ln x m s 1 s x 1 x s 2 p exp ln x m 2 2 s 2 displaystyle begin aligned f X x amp frac rm d rm d x Pr X leq x frac rm d rm d x Pr ln X leq ln x frac rm d rm d x Phi left frac ln x mu sigma right 6pt amp varphi left frac ln x mu sigma right frac rm d rm d x left frac ln x mu sigma right varphi left frac ln x mu sigma right frac 1 sigma x 6pt amp frac 1 x sigma sqrt 2 pi exp left frac ln x mu 2 2 sigma 2 right end aligned Cumulative distribution function Edit The cumulative distribution function is F X x F ln x m s displaystyle F X x Phi left frac ln x mu sigma right where F displaystyle Phi is the cumulative distribution function of the standard normal distribution i e N 0 1 This may also be expressed as follows 1 1 2 1 erf ln x m s 2 1 2 erfc ln x m s 2 displaystyle frac 1 2 left 1 operatorname erf left frac ln x mu sigma sqrt 2 right right frac 1 2 operatorname erfc left frac ln x mu sigma sqrt 2 right where erfc is the complementary error function Multivariate log normal Edit If X N m S displaystyle boldsymbol X sim mathcal N boldsymbol mu boldsymbol Sigma is a multivariate normal distribution then Y i exp X i displaystyle Y i exp X i has a multivariate log normal distribution 5 6 The exponential is applied elementwise to the random vector X displaystyle boldsymbol X The mean of Y displaystyle boldsymbol Y is E Y i e m i 1 2 S i i displaystyle operatorname E boldsymbol Y i e mu i frac 1 2 Sigma ii and its covariance matrix is Var Y i j e m i m j 1 2 S i i S j j e S i j 1 displaystyle operatorname Var boldsymbol Y ij e mu i mu j frac 1 2 Sigma ii Sigma jj e Sigma ij 1 Since the multivariate log normal distribution is not widely used the rest of this entry only deals with the univariate distribution Characteristic function and moment generating function Edit All moments of the log normal distribution exist and E X n e n m n 2 s 2 2 displaystyle operatorname E X n e n mu n 2 sigma 2 2 This can be derived by letting z ln x m n s 2 s displaystyle z tfrac ln x mu n sigma 2 sigma within the integral However the log normal distribution is not determined by its moments 7 This implies that it cannot have a defined moment generating function in a neighborhood of zero 8 Indeed the expected value E e t X displaystyle operatorname E e tX is not defined for any positive value of the argument t displaystyle t since the defining integral diverges The characteristic function E e i t X displaystyle operatorname E e itX is defined for real values of t but is not defined for any complex value of t that has a negative imaginary part and hence the characteristic function is not analytic at the origin Consequently the characteristic function of the log normal distribution cannot be represented as an infinite convergent series 9 In particular its Taylor formal series diverges n 0 i t n n e n m n 2 s 2 2 displaystyle sum n 0 infty frac it n n e n mu n 2 sigma 2 2 However a number of alternative divergent series representations have been obtained 9 10 11 12 A closed form formula for the characteristic function f t displaystyle varphi t with t displaystyle t in the domain of convergence is not known A relatively simple approximating formula is available in closed form and is given by 13 f t exp W 2 i t s 2 e m 2 W i t s 2 e m 2 s 2 1 W i t s 2 e m displaystyle varphi t approx frac exp left frac W 2 it sigma 2 e mu 2W it sigma 2 e mu 2 sigma 2 right sqrt 1 W it sigma 2 e mu where W displaystyle W is the Lambert W function This approximation is derived via an asymptotic method but it stays sharp all over the domain of convergence of f displaystyle varphi Properties Edit a y displaystyle y is a log normal variable with m 1 s 0 5 displaystyle mu 1 sigma 0 5 p sin y gt 0 displaystyle p sin y gt 0 is computed by transforming to the normal variable x ln y displaystyle x ln y then integrating its density over the domain defined by sin e x gt 0 displaystyle sin e x gt 0 blue regions using the numerical method of ray tracing 14 b amp c The pdf and cdf of the function sin y displaystyle sin y of the log normal variable can also be computed in this way Probability in different domains Edit The probability content of a log normal distribution in any arbitrary domain can be computed to desired precision by first transforming the variable to normal then numerically integrating using the ray trace method 14 Matlab code Probabilities of functions of a log normal variable Edit Since the probability of a log normal can be computed in any domain this means that the cdf and consequently pdf and inverse cdf of any function of a log normal variable can also be computed 14 Matlab code Geometric or multiplicative moments Edit The geometric or multiplicative mean of the log normal distribution is GM X e m m displaystyle operatorname GM X e mu mu It equals the median The geometric or multiplicative standard deviation is GSD X e s s displaystyle operatorname GSD X e sigma sigma 15 16 By analogy with the arithmetic statistics one can define a geometric variance GVar X e s 2 displaystyle operatorname GVar X e sigma 2 and a geometric coefficient of variation 15 GCV X e s 1 displaystyle operatorname GCV X e sigma 1 has been proposed This term was intended to be analogous to the coefficient of variation for describing multiplicative variation in log normal data but this definition of GCV has no theoretical basis as an estimate of CV displaystyle operatorname CV itself see also Coefficient of variation Note that the geometric mean is smaller than the arithmetic mean This is due to the AM GM inequality and is a consequence of the logarithm being a concave function In fact E X e m 1 2 s 2 e m e s 2 GM X GVar X displaystyle operatorname E X e mu frac 1 2 sigma 2 e mu cdot sqrt e sigma 2 operatorname GM X cdot sqrt operatorname GVar X 17 In finance the term e 1 2 s 2 displaystyle e frac 1 2 sigma 2 is sometimes interpreted as a convexity correction From the point of view of stochastic calculus this is the same correction term as in Itō s lemma for geometric Brownian motion Arithmetic moments Edit For any real or complex number n the n th moment of a log normally distributed variable X is given by 3 E X n e n m 1 2 n 2 s 2 displaystyle operatorname E X n e n mu frac 1 2 n 2 sigma 2 Specifically the arithmetic mean expected square arithmetic variance and arithmetic standard deviation of a log normally distributed variable X are respectively given by 1 E X e m 1 2 s 2 E X 2 e 2 m 2 s 2 Var X E X 2 E X 2 E X 2 e s 2 1 e 2 m s 2 e s 2 1 SD X Var X E X e s 2 1 e m 1 2 s 2 e s 2 1 displaystyle begin aligned operatorname E X amp e mu tfrac 1 2 sigma 2 4pt operatorname E X 2 amp e 2 mu 2 sigma 2 4pt operatorname Var X amp operatorname E X 2 operatorname E X 2 operatorname E X 2 e sigma 2 1 e 2 mu sigma 2 e sigma 2 1 4pt operatorname SD X amp sqrt operatorname Var X operatorname E X sqrt e sigma 2 1 e mu tfrac 1 2 sigma 2 sqrt e sigma 2 1 end aligned The arithmetic coefficient of variation CV X displaystyle operatorname CV X is the ratio SD X E X displaystyle tfrac operatorname SD X operatorname E X For a log normal distribution it is equal to 2 CV X e s 2 1 displaystyle operatorname CV X sqrt e sigma 2 1 This estimate is sometimes referred to as the geometric CV GCV 18 19 due to its use of the geometric variance Contrary to the arithmetic standard deviation the arithmetic coefficient of variation is independent of the arithmetic mean The parameters m and s can be obtained if the arithmetic mean and the arithmetic variance are known m ln E X 2 E X 2 ln E X 2 Var X E X 2 s 2 ln E X 2 E X 2 ln 1 Var X E X 2 displaystyle begin aligned mu amp ln left frac operatorname E X 2 sqrt operatorname E X 2 right ln left frac operatorname E X 2 sqrt operatorname Var X operatorname E X 2 right 4pt sigma 2 amp ln left frac operatorname E X 2 operatorname E X 2 right ln left 1 frac operatorname Var X operatorname E X 2 right end aligned A probability distribution is not uniquely determined by the moments E Xn enm 1 2 n2s2 for n 1 That is there exist other distributions with the same set of moments 3 In fact there is a whole family of distributions with the same moments as the log normal distribution citation needed Mode median quantiles Edit Comparison of mean median and mode of two log normal distributions with different skewness The mode is the point of global maximum of the probability density function In particular by solving the equation ln f 0 displaystyle ln f 0 we get that Mode X e m s 2 displaystyle operatorname Mode X e mu sigma 2 Since the log transformed variable Y ln X displaystyle Y ln X has a normal distribution and quantiles are preserved under monotonic transformations the quantiles of X displaystyle X are q X a e m s q F a m s q F a displaystyle q X alpha e mu sigma q Phi alpha mu sigma q Phi alpha where q F a displaystyle q Phi alpha is the quantile of the standard normal distribution Specifically the median of a log normal distribution is equal to its multiplicative mean 20 Med X e m m displaystyle operatorname Med X e mu mu Partial expectation Edit The partial expectation of a random variable X displaystyle X with respect to a threshold k displaystyle k is defined as g k k x f X x X gt k d x displaystyle g k int k infty xf X x vert X gt k dx Alternatively by using the definition of conditional expectation it can be written as g k E X X gt k P X gt k displaystyle g k operatorname E X mid X gt k P X gt k For a log normal random variable the partial expectation is given by g k k x f X x X gt k d x e m 1 2 s 2 F m s 2 ln k s displaystyle g k int k infty xf X x vert X gt k dx e mu tfrac 1 2 sigma 2 Phi left frac mu sigma 2 ln k sigma right where F displaystyle Phi is the normal cumulative distribution function The derivation of the formula is provided in the Talk page The partial expectation formula has applications in insurance and economics it is used in solving the partial differential equation leading to the Black Scholes formula Conditional expectation Edit The conditional expectation of a log normal random variable X displaystyle X with respect to a threshold k displaystyle k is its partial expectation divided by the cumulative probability of being in that range E X X lt k e m s 2 2 F ln k m s 2 s F ln k m s E X X k e m s 2 2 F m s 2 ln k s 1 F ln k m s E X X k 1 k 2 e m s 2 2 F ln k 2 m s 2 s F ln k 1 m s 2 s F ln k 2 m s F ln k 1 m s displaystyle begin aligned E X mid X lt k amp e mu frac sigma 2 2 cdot frac Phi left frac ln k mu sigma 2 sigma right Phi left frac ln k mu sigma right 8pt E X mid X geqslant k amp e mu frac sigma 2 2 cdot frac Phi left frac mu sigma 2 ln k sigma right 1 Phi left frac ln k mu sigma right 8pt E X mid X in k 1 k 2 amp e mu frac sigma 2 2 cdot frac Phi left frac ln k 2 mu sigma 2 sigma right Phi left frac ln k 1 mu sigma 2 sigma right Phi left frac ln k 2 mu sigma right Phi left frac ln k 1 mu sigma right end aligned Alternative parameterizations EditIn addition to the characterization by m s displaystyle mu sigma or m s displaystyle mu sigma here are multiple ways how the log normal distribution can be parameterized ProbOnto the knowledge base and ontology of probability distributions 21 22 lists seven such forms Overview of parameterizations of the log normal distributions LogNormal1 m s with mean m and standard deviation s both on the log scale 23 P x m s 1 x s 2 p exp ln x m 2 2 s 2 displaystyle P x boldsymbol mu boldsymbol sigma frac 1 x sigma sqrt 2 pi exp left frac ln x mu 2 2 sigma 2 right LogNormal2 m y with mean m and variance y both on the log scale P x m v 1 x v 2 p exp ln x m 2 2 v displaystyle P x boldsymbol mu boldsymbol v frac 1 x sqrt v sqrt 2 pi exp left frac ln x mu 2 2v right LogNormal3 m s with median m on the natural scale and standard deviation s on the log scale 23 P x m s 1 x s 2 p exp ln 2 x m 2 s 2 displaystyle P x boldsymbol m boldsymbol sigma frac 1 x sigma sqrt 2 pi exp left frac ln 2 x m 2 sigma 2 right LogNormal4 m cv with median m and coefficient of variation cv both on the natural scale P x m c v 1 x ln c v 2 1 2 p exp ln 2 x m 2 ln c v 2 1 displaystyle P x boldsymbol m boldsymbol cv frac 1 x sqrt ln cv 2 1 sqrt 2 pi exp left frac ln 2 x m 2 ln cv 2 1 right LogNormal5 m t with mean m and precision t both on the log scale 24 P x m t t 2 p 1 x exp t 2 ln x m 2 displaystyle P x boldsymbol mu boldsymbol tau sqrt frac tau 2 pi frac 1 x exp left frac tau 2 ln x mu 2 right LogNormal6 m sg with median m and geometric standard deviation sg both on the natural scale 25 P x m s g 1 x ln s g 2 p exp ln 2 x m 2 ln 2 s g displaystyle P x boldsymbol m boldsymbol sigma g frac 1 x ln sigma g sqrt 2 pi exp left frac ln 2 x m 2 ln 2 sigma g right LogNormal7 mN sN with mean mN and standard deviation sN both on the natural scale 26 P x m N s N 1 x 2 p ln 1 s N 2 m N 2 exp ln x ln m N 1 s N 2 m N 2 2 2 ln 1 s N 2 m N 2 displaystyle P x boldsymbol mu N boldsymbol sigma N frac 1 x sqrt 2 pi ln left 1 sigma N 2 mu N 2 right exp left frac Big ln x ln frac mu N sqrt 1 sigma N 2 mu N 2 Big 2 2 ln 1 sigma N 2 mu N 2 right Examples for re parameterization Edit Consider the situation when one would like to run a model using two different optimal design tools for example PFIM 27 and PopED 28 The former supports the LN2 the latter LN7 parameterization respectively Therefore the re parameterization is required otherwise the two tools would produce different results For the transition LN2 m v LN7 m N s N displaystyle operatorname LN2 mu v to operatorname LN7 mu N sigma N following formulas hold m N exp m v 2 textstyle mu N exp mu v 2 and s N exp m v 2 exp v 1 textstyle sigma N exp mu v 2 sqrt exp v 1 For the transition LN7 m N s N LN2 m v displaystyle operatorname LN7 mu N sigma N to operatorname LN2 mu v following formulas hold m ln m N 1 s N 2 m N 2 textstyle mu ln left mu N sqrt 1 sigma N 2 mu N 2 right and v ln 1 s N 2 m N 2 textstyle v ln 1 sigma N 2 mu N 2 All remaining re parameterisation formulas can be found in the specification document on the project website 29 Multiple reciprocal power Edit Multiplication by a constant If X Lognormal m s 2 displaystyle X sim operatorname Lognormal mu sigma 2 then a X Lognormal m ln a s 2 displaystyle aX sim operatorname Lognormal mu ln a sigma 2 for a gt 0 displaystyle a gt 0 Reciprocal If X Lognormal m s 2 displaystyle X sim operatorname Lognormal mu sigma 2 then 1 X Lognormal m s 2 displaystyle tfrac 1 X sim operatorname Lognormal mu sigma 2 Power If X Lognormal m s 2 displaystyle X sim operatorname Lognormal mu sigma 2 then X a Lognormal a m a 2 s 2 displaystyle X a sim operatorname Lognormal a mu a 2 sigma 2 for a 0 displaystyle a neq 0 Multiplication and division of independent log normal random variables Edit If two independent log normal variables X 1 displaystyle X 1 and X 2 displaystyle X 2 are multiplied divided the product ratio is again log normal with parameters m m 1 m 2 displaystyle mu mu 1 mu 2 m m 1 m 2 displaystyle mu mu 1 mu 2 and s displaystyle sigma where s 2 s 1 2 s 2 2 displaystyle sigma 2 sigma 1 2 sigma 2 2 This is easily generalized to the product of n displaystyle n such variables More generally if X j Lognormal m j s j 2 displaystyle X j sim operatorname Lognormal mu j sigma j 2 are n displaystyle n independent log normally distributed variables then Y j 1 n X j Lognormal j 1 n m j j 1 n s j 2 displaystyle Y textstyle prod j 1 n X j sim operatorname Lognormal Big textstyle sum j 1 n mu j sum j 1 n sigma j 2 Big Multiplicative central limit theorem Edit See also Gibrat s law The geometric or multiplicative mean of n displaystyle n independent identically distributed positive random variables X i displaystyle X i shows for n displaystyle n to infty approximately a log normal distribution with parameters m E ln X i displaystyle mu E ln X i and s 2 var ln X i n displaystyle sigma 2 mbox var ln X i n assuming s 2 displaystyle sigma 2 is finite In fact the random variables do not have to be identically distributed It is enough for the distributions of ln X i displaystyle ln X i to all have finite variance and satisfy the other conditions of any of the many variants of the central limit theorem This is commonly known as Gibrat s law Other Edit A set of data that arises from the log normal distribution has a symmetric Lorenz curve see also Lorenz asymmetry coefficient 30 The harmonic H displaystyle H geometric G displaystyle G and arithmetic A displaystyle A means of this distribution are related 31 such relation is given by H G 2 A displaystyle H frac G 2 A Log normal distributions are infinitely divisible 32 but they are not stable distributions which can be easily drawn from 33 Related distributions EditIf X N m s 2 displaystyle X sim mathcal N mu sigma 2 is a normal distribution then exp X Lognormal m s 2 displaystyle exp X sim operatorname Lognormal mu sigma 2 If X Lognormal m s 2 displaystyle X sim operatorname Lognormal mu sigma 2 is distributed log normally then ln X N m s 2 displaystyle ln X sim mathcal N mu sigma 2 is a normal random variable Let X j Lognormal m j s j 2 displaystyle X j sim operatorname Lognormal mu j sigma j 2 be independent log normally distributed variables with possibly varying s displaystyle sigma and m displaystyle mu parameters and Y j 1 n X j textstyle Y sum j 1 n X j The distribution of Y displaystyle Y has no closed form expression but can be reasonably approximated by another log normal distribution Z displaystyle Z at the right tail 34 Its probability density function at the neighborhood of 0 has been characterized 33 and it does not resemble any log normal distribution A commonly used approximation due to L F Fenton but previously stated by R I Wilkinson and mathematical justified by Marlow 35 is obtained by matching the mean and variance of another log normal distribution s Z 2 ln e 2 m j s j 2 e s j 2 1 e m j s j 2 2 2 1 m Z ln e m j s j 2 2 s Z 2 2 displaystyle begin aligned sigma Z 2 amp ln left frac sum e 2 mu j sigma j 2 e sigma j 2 1 sum e mu j sigma j 2 2 2 1 right mu Z amp ln left sum e mu j sigma j 2 2 right frac sigma Z 2 2 end aligned In the case that all X j displaystyle X j have the same variance parameter s j s displaystyle sigma j sigma these formulas simplify to s Z 2 ln e s 2 1 e 2 m j e m j 2 1 m Z ln e m j s 2 2 s Z 2 2 displaystyle begin aligned sigma Z 2 amp ln left e sigma 2 1 frac sum e 2 mu j sum e mu j 2 1 right mu Z amp ln left sum e mu j right frac sigma 2 2 frac sigma Z 2 2 end aligned For a more accurate approximation one can use the Monte Carlo method to estimate the cumulative distribution function the pdf and the right tail 36 37 The sum of correlated log normally distributed random variables can also be approximated by a log normal distribution citation needed S E i X i i E X i i e m i s i 2 2 s Z 2 1 S 2 i j cor i j s i s j E X i E X j 1 S 2 i j cor i j s i s j e m i s i 2 2 e m j s j 2 2 m Z ln S s Z 2 2 displaystyle begin aligned S amp operatorname E left sum i X i right sum i operatorname E X i sum i e mu i sigma i 2 2 sigma Z 2 amp 1 S 2 sum i j operatorname cor ij sigma i sigma j operatorname E X i operatorname E X j 1 S 2 sum i j operatorname cor ij sigma i sigma j e mu i sigma i 2 2 e mu j sigma j 2 2 mu Z amp ln left S right sigma Z 2 2 end aligned If X Lognormal m s 2 displaystyle X sim operatorname Lognormal mu sigma 2 then X c displaystyle X c is said to have a Three parameter log normal distribution with support x c displaystyle x in c infty 38 E X c E X c displaystyle operatorname E X c operatorname E X c Var X c Var X displaystyle operatorname Var X c operatorname Var X The log normal distribution is a special case of the semi bounded Johnson s SU distribution 39 If X Y Rayleigh Y displaystyle X mid Y sim operatorname Rayleigh Y with Y Lognormal m s 2 displaystyle Y sim operatorname Lognormal mu sigma 2 then X Suzuki m s displaystyle X sim operatorname Suzuki mu sigma Suzuki distribution A substitute for the log normal whose integral can be expressed in terms of more elementary functions 40 can be obtained based on the logistic distribution to get an approximation for the CDF F x m s e m x p s 3 1 1 displaystyle F x mu sigma left left frac e mu x right pi sigma sqrt 3 1 right 1 This is a log logistic distribution Statistical inference EditEstimation of parameters Edit For determining the maximum likelihood estimators of the log normal distribution parameters m and s we can use the same procedure as for the normal distribution Note thatL m s i 1 n 1 x i f m s ln x i displaystyle L mu sigma prod i 1 n frac 1 x i varphi mu sigma ln x i where f displaystyle varphi is the density function of the normal distribution N m s 2 displaystyle mathcal N mu sigma 2 Therefore the log likelihood function is ℓ m s x 1 x 2 x n i ln x i ℓ N m s ln x 1 ln x 2 ln x n displaystyle ell mu sigma mid x 1 x 2 ldots x n sum i ln x i ell N mu sigma mid ln x 1 ln x 2 dots ln x n Since the first term is constant with regard to m and s both logarithmic likelihood functions ℓ displaystyle ell and ℓ N displaystyle ell N reach their maximum with the same m displaystyle mu and s displaystyle sigma Hence the maximum likelihood estimators are identical to those for a normal distribution for the observations ln x 1 ln x 2 ln x n displaystyle ln x 1 ln x 2 dots ln x n m i ln x i n s 2 i ln x i m 2 n displaystyle widehat mu frac sum i ln x i n qquad widehat sigma 2 frac sum i left ln x i widehat mu right 2 n For finite n these estimators are biased Whereas the bias for m displaystyle widehat mu is negligible a less biased estimator for s displaystyle sigma is obtained as for the normal distribution by replacing the denominator n by n 1 in the equation for s 2 displaystyle widehat sigma 2 When the individual values x 1 x 2 x n displaystyle x 1 x 2 ldots x n are not available but the sample s mean x displaystyle bar x and standard deviation s is then the corresponding parameters are determined by the following formulas obtained from solving the equations for the expectation E X displaystyle operatorname E X and variance Var X displaystyle operatorname Var X for m displaystyle mu and s displaystyle sigma m ln x 1 s 2 x 2 s 2 ln 1 s 2 x 2 displaystyle mu ln left bar x Big sqrt 1 frac widehat sigma 2 bar x 2 right qquad sigma 2 ln left 1 frac widehat sigma 2 bar x 2 right Statistics Edit The most efficient way to analyze log normally distributed data consists of applying the well known methods based on the normal distribution to logarithmically transformed data and then to back transform results if appropriate Scatter intervals Edit A basic example is given by scatter intervals For the normal distribution the interval m s m s displaystyle mu sigma mu sigma contains approximately two thirds 68 of the probability or of a large sample and m 2 s m 2 s displaystyle mu 2 sigma mu 2 sigma contain 95 Therefore for a log normal distribution m s m s m s displaystyle mu sigma mu cdot sigma mu times sigma contains 2 3 and m s 2 m s 2 m s 2 displaystyle mu sigma 2 mu cdot sigma 2 mu times sigma 2 contains 95 of the probability Using estimated parameters then approximately the same percentages of the data should be contained in these intervals Confidence interval for m Edit Using the principle note that a confidence interval for m displaystyle mu is m q s e displaystyle widehat mu pm q cdot widehat mathop se where s e s n displaystyle mathop se widehat sigma sqrt n is the standard error and q is the 97 5 quantile of a t distribution with n 1 degrees of freedom Back transformation leads to a confidence interval for m displaystyle mu m sem q displaystyle widehat mu times operatorname sem q with sem s 1 n displaystyle operatorname sem widehat sigma 1 sqrt n Extremal principle of entropy to fix the free parameter s Edit In applications s displaystyle sigma is a parameter to be determined For growing processes balanced by production and dissipation the use of an extremal principle of Shannon entropy shows that 41 s 1 6 displaystyle sigma frac 1 sqrt 6 This value can then be used to give some scaling relation between the inflexion point and maximum point of the log normal distribution 41 This relationship is determined by the base of natural logarithm e 2 718 displaystyle e 2 718 ldots and exhibits some geometrical similarity to the minimal surface energy principle These scaling relations are useful for predicting a number of growth processes epidemic spreading droplet splashing population growth swirling rate of the bathtub vortex distribution of language characters velocity profile of turbulences etc For example the log normal function with such s displaystyle sigma fits well with the size of secondarily produced droplets during droplet impact 42 and the spreading of an epidemic disease 43 The value s 1 6 textstyle sigma 1 big sqrt 6 is used to provide a probabilistic solution for the Drake equation 44 Occurrence and applications EditThe log normal distribution is important in the description of natural phenomena Many natural growth processes are driven by the accumulation of many small percentage changes which become additive on a log scale Under appropriate regularity conditions the distribution of the resulting accumulated changes will be increasingly well approximated by a log normal as noted in the section above on Multiplicative Central Limit Theorem This is also known as Gibrat s law after Robert Gibrat 1904 1980 who formulated it for companies 45 If the rate of accumulation of these small changes does not vary over time growth becomes independent of size Even if that s not true the size distributions at any age of things that grow over time tends to be log normal A second justification is based on the observation that fundamental natural laws imply multiplications and divisions of positive variables Examples are the simple gravitation law connecting masses and distance with the resulting force or the formula for equilibrium concentrations of chemicals in a solution that connects concentrations of educts and products Assuming log normal distributions of the variables involved leads to consistent models in these cases Even if none of these justifications apply the log normal distribution is often a plausible and empirically adequate model Examples include the following Human behaviors Edit The length of comments posted in Internet discussion forums follows a log normal distribution 46 Users dwell time on online articles jokes news etc follows a log normal distribution 47 The length of chess games tends to follow a log normal distribution 48 Onset durations of acoustic comparison stimuli that are matched to a standard stimulus follow a log normal distribution 17 Rubik s Cube solves both general or by person appear to follow a log normal distribution citation needed In biology and medicine Edit Measures of size of living tissue length skin area weight 49 For highly communicable epidemics such as SARS in 2003 if public intervention control policies are involved the number of hospitalized cases is shown to satisfy the log normal distribution with no free parameters if an entropy is assumed and the standard deviation is determined by the principle of maximum rate of entropy production 50 The length of inert appendages hair claws nails teeth of biological specimens in the direction of growth citation needed The normalised RNA Seq readcount for any genomic region can be well approximated by log normal distribution The PacBio sequencing read length follows a log normal distribution 51 Certain physiological measurements such as blood pressure of adult humans after separation on male female subpopulations 52 Several pharmacokinetic variables such as Cmax elimination half life and the elimination rate constant 53 In neuroscience the distribution of firing rates across a population of neurons is often approximately log normal This has been first observed in the cortex and striatum 54 and later in hippocampus and entorhinal cortex 55 and elsewhere in the brain 56 57 Also intrinsic gain distributions and synaptic weight distributions appear to be log normal 58 as well In operating rooms management the distribution of surgery duration In the size of avalanches of fractures in the cytoskeleton of living cells showing log normal distributions with significantly higher size in cancer cells than healthy ones 59 In colloidal chemistry and polymer chemistry Edit Particle size distributions Molar mass distributions Consequently reference ranges for measurements in healthy individuals are more accurately estimated by assuming a log normal distribution than by assuming a symmetric distribution about the mean Fitted cumulative log normal distribution to annually maximum 1 day rainfalls see distribution fitting Hydrology Edit In hydrology the log normal distribution is used to analyze extreme values of such variables as monthly and annual maximum values of daily rainfall and river discharge volumes 60 The image on the right made with CumFreq illustrates an example of fitting the log normal distribution to ranked annually maximum one day rainfalls showing also the 90 confidence belt based on the binomial distribution 61 dd The rainfall data are represented by plotting positions as part of a cumulative frequency analysis dd Social sciences and demographics Edit In economics there is evidence that the income of 97 99 of the population is distributed log normally 62 The distribution of higher income individuals follows a Pareto distribution 63 If an income distribution follows a log normal distribution with standard deviation s displaystyle sigma then the Gini coefficient commonly use to evaluate income inequality can be computed as G erf s 2 displaystyle G operatorname erf left frac sigma 2 right where erf displaystyle operatorname erf is the error function since G 2 F s 2 1 displaystyle G 2 Phi left frac sigma sqrt 2 right 1 where F x displaystyle Phi x is the cumulative distribution function of a standard normal distribution In finance in particular the Black Scholes model changes in the logarithm of exchange rates price indices and stock market indices are assumed normal 64 these variables behave like compound interest not like simple interest and so are multiplicative However some mathematicians such as Benoit Mandelbrot have argued 65 that log Levy distributions which possesses heavy tails would be a more appropriate model in particular for the analysis for stock market crashes Indeed stock price distributions typically exhibit a fat tail 66 The fat tailed distribution of changes during stock market crashes invalidate the assumptions of the central limit theorem In scientometrics the number of citations to journal articles and patents follows a discrete log normal distribution 67 68 City sizes population satisfy Gibrat s Law 69 The growth process of city sizes is proportionate and invariant with respect to size From the central limit theorem therefore the log of city size is normally distributed The number of sexual partners appears to be best described by a log normal distribution 70 Technology Edit In reliability analysis the log normal distribution is often used to model times to repair a maintainable system 71 In wireless communication the local mean power expressed in logarithmic values such as dB or neper has a normal i e Gaussian distribution 72 Also the random obstruction of radio signals due to large buildings and hills called shadowing is often modeled as a log normal distribution Particle size distributions produced by comminution with random impacts such as in ball milling citation needed The file size distribution of publicly available audio and video data files MIME types follows a log normal distribution over five orders of magnitude 73 In computer networks and Internet traffic analysis log normal is shown as a good statistical model to represent the amount of traffic per unit time This has been shown by applying a robust statistical approach on a large groups of real Internet traces In this context the log normal distribution has shown a good performance in two main use cases 1 predicting the proportion of time traffic will exceed a given level for service level agreement or link capacity estimation i e link dimensioning based on bandwidth provisioning and 2 predicting 95th percentile pricing 74 See also EditHeavy tailed distribution Log distance path loss model Modified lognormal power 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