Products
  • Wolfram|One

    The definitive Wolfram Language and notebook experience

  • Mathematica

    The original technical computing environment

  • Notebook Assistant + LLM Kit

    All-in-one AI assistance for your Wolfram experience

  • Compute Services
  • System Modeler
  • Finance Platform
  • Wolfram|Alpha Notebook Edition
  • Application Server
  • Enterprise Private Cloud
  • Wolfram Engine
  • Wolfram Player
  • Wolfram Cloud App
  • Wolfram Player App

More mobile apps

Core Technologies of Wolfram Products

  • Wolfram Language
  • Computable Data
  • Wolfram Notebooks
  • AI & Linguistic Understanding

Deployment Options

  • Wolfram Cloud
  • wolframscript
  • Wolfram Engine Community Edition
  • Wolfram LLM API
  • WSTPServer
  • Wolfram|Alpha APIs

From the Community

  • Function Repository
  • Community Paclet Repository
  • Example Repository
  • Neural Net Repository
  • Prompt Repository
  • Wolfram Demonstrations
  • Data Repository
  • Group & Organizational Licensing
  • All Products
Consulting & Solutions

We deliver solutions for the AI era—combining symbolic computation, data-driven insights and deep technical expertise

  • Data & Computational Intelligence
  • Model-Based Design
  • Algorithm Development
  • Wolfram|Alpha for Business
  • Blockchain Technology
  • Education Technology
  • Quantum Computation

Wolfram Consulting

Wolfram Solutions

  • Data Science
  • Artificial Intelligence
  • Biosciences
  • Healthcare Intelligence
  • Sustainable Energy
  • Control Systems
  • Enterprise Wolfram|Alpha
  • Blockchain Labs

More Wolfram Solutions

Wolfram Solutions For Education

  • Research Universities
  • Colleges & Teaching Universities
  • Junior & Community Colleges
  • High Schools
  • Educational Technology
  • Computer-Based Math

More Solutions for Education

  • Contact Us
Learning & Support

Get Started

  • Wolfram Language Introduction
  • Fast Intro for Programmers
  • Fast Intro for Math Students
  • Wolfram Language Documentation

More Learning

  • Highlighted Core Areas
  • Demonstrations
  • YouTube
  • Daily Study Groups
  • Wolfram Schools and Programs
  • Books

Grow Your Skills

  • Wolfram U

    Courses in computing, science, life and more

  • Community

    Learn, solve problems and share ideas.

  • Blog

    News, views and insights from Wolfram

  • Resources for

    Software Developers

Tech Support

  • Contact Us
  • Support FAQs
  • Support FAQs
  • Contact Us
Company
  • About Wolfram
  • Career Center
  • All Sites & Resources
  • Connect & Follow
  • Contact Us

Work with Us

  • Student Ambassador Initiative
  • Wolfram for Startups
  • Student Opportunities
  • Jobs Using Wolfram Language

Educational Programs for Adults

  • Summer School
  • Winter School

Educational Programs for Youth

  • Middle School Camp
  • High School Research Program
  • Computational Adventures

Read

  • Stephen Wolfram's Writings
  • Wolfram Blog
  • Wolfram Tech | Books
  • Wolfram Media
  • Complex Systems

Educational Resources

  • Wolfram MathWorld
  • Wolfram in STEM/STEAM
  • Wolfram Challenges
  • Wolfram Problem Generator

Wolfram Initiatives

  • Wolfram Science
  • Wolfram Foundation
  • History of Mathematics Project

Events

  • Stephen Wolfram Livestreams
  • Online & In-Person Events
  • Contact Us
  • Connect & Follow
Wolfram|Alpha
  • Your Account
  • User Portal
  • Wolfram Cloud
  • Products
    • Wolfram|One
    • Mathematica
    • Notebook Assistant + LLM Kit
    • Compute Services
    • System Modeler
    • Finance Platform
    • Wolfram|Alpha Notebook Edition
    • Application Server
    • Enterprise Private Cloud
    • Wolfram Engine
    • Wolfram Player
    • Wolfram Cloud App
    • Wolfram Player App

    More mobile apps

    • Core Technologies
      • Wolfram Language
      • Computable Data
      • Wolfram Notebooks
      • AI & Linguistic Understanding
    • Deployment Options
      • Wolfram Cloud
      • wolframscript
      • Wolfram Engine Community Edition
      • Wolfram LLM API
      • WSTPServer
      • Wolfram|Alpha APIs
    • From the Community
      • Function Repository
      • Community Paclet Repository
      • Example Repository
      • Neural Net Repository
      • Prompt Repository
      • Wolfram Demonstrations
      • Data Repository
    • Group & Organizational Licensing
    • All Products
  • Consulting & Solutions

    We deliver solutions for the AI era—combining symbolic computation, data-driven insights and deep technical expertise

    WolframConsulting.com

    Wolfram Solutions

    • Data Science
    • Artificial Intelligence
    • Biosciences
    • Healthcare Intelligence
    • Sustainable Energy
    • Control Systems
    • Enterprise Wolfram|Alpha
    • Blockchain Labs

    More Wolfram Solutions

    Wolfram Solutions For Education

    • Research Universities
    • Colleges & Teaching Universities
    • Junior & Community Colleges
    • High Schools
    • Educational Technology
    • Computer-Based Math

    More Solutions for Education

    • Contact Us
  • Learning & Support

    Get Started

    • Wolfram Language Introduction
    • Fast Intro for Programmers
    • Fast Intro for Math Students
    • Wolfram Language Documentation

    Grow Your Skills

    • Wolfram U

      Courses in computing, science, life and more

    • Community

      Learn, solve problems and share ideas.

    • Blog

      News, views and insights from Wolfram

    • Resources for

      Software Developers
    • Tech Support
      • Contact Us
      • Support FAQs
    • More Learning
      • Highlighted Core Areas
      • Demonstrations
      • YouTube
      • Daily Study Groups
      • Wolfram Schools and Programs
      • Books
    • Support FAQs
    • Contact Us
  • Company
    • About Wolfram
    • Career Center
    • All Sites & Resources
    • Connect & Follow
    • Contact Us

    Work with Us

    • Student Ambassador Initiative
    • Wolfram for Startups
    • Student Opportunities
    • Jobs Using Wolfram Language

    Educational Programs for Adults

    • Summer School
    • Winter School

    Educational Programs for Youth

    • Middle School Camp
    • High School Research Program
    • Computational Adventures

    Read

    • Stephen Wolfram's Writings
    • Wolfram Blog
    • Wolfram Tech | Books
    • Wolfram Media
    • Complex Systems
    • Educational Resources
      • Wolfram MathWorld
      • Wolfram in STEM/STEAM
      • Wolfram Challenges
      • Wolfram Problem Generator
    • Wolfram Initiatives
      • Wolfram Science
      • Wolfram Foundation
      • History of Mathematics Project
    • Events
      • Stephen Wolfram Livestreams
      • Online & In-Person Events
    • Contact Us
    • Connect & Follow
  • Wolfram|Alpha
  • Wolfram Cloud
  • Your Account
  • User Portal
Wolfram Language & System Documentation Center
LogMultinormalDistribution
  • See Also
    • MultinormalDistribution
    • LogNormalDistribution
    • BinormalDistribution
    • GeometricBrownianMotionProcess
  • Related Guides
    • Normal and Related Distributions
    • See Also
      • MultinormalDistribution
      • LogNormalDistribution
      • BinormalDistribution
      • GeometricBrownianMotionProcess
    • Related Guides
      • Normal and Related Distributions

LogMultinormalDistribution[μ,Σ]

represents a log-multinormal distribution with parameters μ and Σ.

Details
Details and Options Details and Options
Background & Context
Examples  
Basic Examples  
Scope  
Properties & Relations  
See Also
Related Guides
History
Cite this Page
BUILT-IN SYMBOL
  • See Also
    • MultinormalDistribution
    • LogNormalDistribution
    • BinormalDistribution
    • GeometricBrownianMotionProcess
  • Related Guides
    • Normal and Related Distributions
    • See Also
      • MultinormalDistribution
      • LogNormalDistribution
      • BinormalDistribution
      • GeometricBrownianMotionProcess
    • Related Guides
      • Normal and Related Distributions

LogMultinormalDistribution

LogMultinormalDistribution[μ,Σ]

represents a log-multinormal distribution with parameters μ and Σ.

Details

  • LogMultinormalDistribution[μ,Σ] is equivalent to TransformedDistribution[Exp[{u1,u2,…,un}],{u1,u2,…,un}MultinormalDistribution[μ,Σ]].
  • LogMultinormalDistribution allows μ to be any vector of real numbers, and Σ any symmetric positive definite × matrix of real numbers with p=Length[μ].

Background & Context

  • LogMultinormalDistribution[μ,Σ] represents a continuous multivariate statistical distribution supported over the subset of consisting of all tuples satisfying and characterized by the property that each of the ^(th) marginal distributions is log-normal for . In other words, each of the variables satisfies xkLogNormalDistribution for . The log-multinormal distribution LogMultinormalDistribution[μ,Σ] is parametrized by a vector μ of real numbers and by a positive definite symmetric matrix Σ that satisfy nLength[μ]Length[Σ] and that define the associated mean, variance, and covariance of the distribution.
  • The log-multinormal distribution is sometimes referred to as the log multivariate normal distribution, a reference to the fact that the log-multinormal distribution is precisely the distribution of the random variate vector whose coordinates are random variates satisfying for and where the vector . Similarly, since the vector is log-multinormally distributed given a vector that is multinormally distributed, the distribution is sometimes referred to as the multivariate log-normal distribution. Though probability density function (PDF) of a log-multinormal distribution has an absolute maximum, it may have multiple "peaks" (i.e. relative maxima). In general, the tails of each of the associated marginal PDFs are "fat" in the sense that the marginal PDF decreases algebraically rather than exponentially for large values of . (This behavior can be made quantitatively precise by analyzing the SurvivalFunction of these marginal distributions.)
  • The study of multivariate positive distributions (i.e. those in which each of the coordinates of the variate vector are positive) became popular in the 1970s when Johnson and Kotz investigated the multivariate versions of the GammaDistribution, BetaDistribution, ParetoDistribution, and FRatioDistribution in applications such as economics, psychology, and reliability. In 2001, the log-multinormal distribution was introduced as an appealing alternative when modeling multi-variable, coordinate-wise positive phenomena due to the relatively simple forms of its PDF and its CDF (cumulative distribution function).
  • RandomVariate can be used to give one or more machine- or arbitrary-precision (the latter via the WorkingPrecision option) pseudorandom variates from a log-multinormal distribution. Distributed[x,LogMultinormalDistribution[μ,Σ]] , written more concisely as xLogMultinormalDistribution[μ,Σ], can be used to assert that a random variable x is distributed according to a log-multinormal distribution. Such an assertion can then be used in functions such as Probability, NProbability, Expectation, and NExpectation.
  • The probability density and cumulative distribution functions for log-multinormal distributions may be given using PDF[LogMultinormalDistribution[μ,Σ],x] and CDF[LogMultinormalDistribution[μ,Σ],x]. The mean, median, variance, raw moments, and central moments may be computed using Mean, Median, Variance, Moment, and CentralMoment, respectively.
  • DistributionFitTest can be used to test if a given dataset is consistent with a log-multinormal distribution, EstimatedDistribution to estimate a log-multinormal parametric distribution from given data, and FindDistributionParameters to fit data to a log-multinormal distribution. ProbabilityPlot can be used to generate a plot of the CDF of given data against the CDF of a symbolic log-multinormal distribution and QuantilePlot to generate a plot of the quantiles of given data against the quantiles of a symbolic log-multinormal distribution.
  • TransformedDistribution can be used to represent a transformed log-multinormal distribution, CensoredDistribution to represent the distribution of values censored between upper and lower values, and TruncatedDistribution to represent the distribution of values truncated between upper and lower values. CopulaDistribution can be used to build higher-dimensional distributions that contain a log-multinormal distribution, and ProductDistribution can be used to compute a joint distribution with independent component distributions involving log-multinormal distributions.
  • LogMultinormalDistribution is related to a number of other distributions. LogMultinormalDistribution is connected to NormalDistribution, BinormalDistribution, LogNormalDistribution, and MultinormalDistribution as discussed above, and its logarithmic behavior is qualitatively similar to that of LogLogisticDistribution, LogNormalDistribution, and LogGammaDistribution. The one-dimensional marginals PDF of LogMultinormalDistribution are LogNormalDistribution, while each of the multivariate marginals is again an instance of LogMultinormalDistribution. LogMultinormalDistribution can be realized as a transformation (TransformedDistribution) of each of MultinormalDistribution, BinormalDistribution, and LogNormalDistribution, while also being obtained as a product distribution (ProductDistribution) of LogNormalDistribution when Σ is a diagonal matrix. Because of its relation to the univariate distributions NormalDistribution and LogNormalDistribution, it is also related to DavisDistribution, LogLogisticDistribution, ExponentialDistribution, WeibullDistribution, GompertzMakehamDistribution, ExtremeValueDistribution, and GammaDistribution.

Examples

open all close all

Basic Examples  (4)

Probability density function:

Cumulative distribution function:

Mean and variance:

Covariance:

Scope  (6)

Generate a sample of pseudorandom vectors from a log-multinormal distribution:

Visualize the sample using a histogram:

Distribution parameters estimation:

Estimate the distribution parameters from sample data:

Goodness-of-fit test:

Skewness:

Limiting values:

Kurtosis:

Limiting values:

Hazard function:

Univariate marginals follow LogNormalDistribution:

Multivariate marginals follow a log-multinormal distribution:

Properties & Relations  (7)

Relationships to other distributions:

LogMultinormalDistribution is a transformation of MultinormalDistribution:

LogMultinormalDistribution is a transformation of BinormalDistribution:

One-dimensional marginal is LogNormalDistribution:

Special case with diagonal matrix is ProductDistribution of LogNormalDistribution:

LogMultinormalDistribution is related to LogNormalDistribution:

LogMultinormalDistribution is a slice distribution for GeometricBrownianMotionProcess:

See Also

MultinormalDistribution  LogNormalDistribution  BinormalDistribution  GeometricBrownianMotionProcess

Related Guides

    ▪
  • Normal and Related Distributions

History

Introduced in 2012 (9.0)

Wolfram Research (2012), LogMultinormalDistribution, Wolfram Language function, https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html.

Text

Wolfram Research (2012), LogMultinormalDistribution, Wolfram Language function, https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html.

CMS

Wolfram Language. 2012. "LogMultinormalDistribution." Wolfram Language & System Documentation Center. Wolfram Research. https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html.

APA

Wolfram Language. (2012). LogMultinormalDistribution. Wolfram Language & System Documentation Center. Retrieved from https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html

BibTeX

@misc{reference.wolfram_2025_logmultinormaldistribution, author="Wolfram Research", title="{LogMultinormalDistribution}", year="2012", howpublished="\url{https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html}", note=[Accessed: 01-May-2026]}

BibLaTeX

@online{reference.wolfram_2025_logmultinormaldistribution, organization={Wolfram Research}, title={LogMultinormalDistribution}, year={2012}, url={https://reference.wolfram.com/language/ref/LogMultinormalDistribution.html}, note=[Accessed: 01-May-2026]}

Top
Introduction for Programmers
Introductory Book
Wolfram Function Repository | Wolfram Data Repository | Wolfram Data Drop | Wolfram Language Products
Top
  • Products
  • Wolfram|One
  • Mathematica
  • Notebook Assistant + LLM Kit
  • Compute Services
  • System Modeler

  • Wolfram|Alpha Notebook Edition
  • Wolfram|Alpha Pro
  • Mobile Apps

  • Wolfram Engine
  • Wolfram Player

  • Volume & Site Licensing
  • Server Deployment Options
  • Consulting
  • Wolfram Consulting
  • Repositories
  • Data Repository
  • Function Repository
  • Community Paclet Repository
  • Neural Net Repository
  • Prompt Repository

  • Wolfram Language Example Repository
  • Notebook Archive
  • Wolfram GitHub
  • Learning
  • Wolfram U
  • Wolfram Language Documentation
  • Webinars & Training
  • Educational Programs

  • Wolfram Language Introduction
  • Fast Introduction for Programmers
  • Fast Introduction for Math Students
  • Books

  • Wolfram Community
  • Wolfram Blog
  • Public Resources
  • Wolfram|Alpha
  • Wolfram Problem Generator
  • Wolfram Challenges

  • Computer-Based Math
  • Computational Thinking
  • Computational Adventures

  • Demonstrations Project
  • Wolfram Data Drop
  • MathWorld
  • Wolfram Science
  • Wolfram Media Publishing
  • Customer Resources
  • Store
  • Product Downloads
  • User Portal
  • Your Account
  • Organization Access

  • Support FAQ
  • Contact Support
  • Company
  • About Wolfram
  • Careers
  • Contact
  • Events
Wolfram Community Wolfram Blog
Legal & Privacy Policy
WolframAlpha.com | WolframCloud.com
© 2026 Wolfram
© 2026 Wolfram | Legal & Privacy Policy |
English