Mean log deviation: Difference between revisions

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Definition: Twice the MLD was written as MDL
 
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Latest revision as of 22:14, 18 December 2023

Template:Short description In statistics and econometrics, the mean log deviation (MLD) is a measure of income inequality. The MLD is zero when everyone has the same income, and takes larger positive values as incomes become more unequal, especially at the high end.

Definition

The MLD of household income has been defined as[1]

MLD=1Ni=1Nlnxxi

where N is the number of households, xi is the income of household i, and x is the mean of xi. Naturally the same formula can be used for positive variables other than income and for units of observation other than households.

Equivalent definitions are

MLD=1Ni=1N(lnxlnxi)=lnxlnx

where lnx is the mean of ln(x). The last definition shows that MLD is nonnegative, since lnxlnx by Jensen's inequality.

MLD has been called "the standard deviation of ln(x)",[1] (SDL) but this is not correct. The SDL is

SDL=1Ni=1N(lnxilnx)2

and this is not equal to the MLD.

In particular, if a random variable X follows a log-normal distribution with mean and standard deviation of log(X) being μ and σ, respectively, then

EX=exp{μ+σ2/2}.

Thus, asymptotically, MLD converges to:

ln{exp[μ+σ2/2]}μ=σ2/2

For the standard log-normal, SDL converges to 1 while MLD converges to 1/2.

The MLD is a special case of the generalized entropy index. Specifically, the MLD is the generalized entropy index with α=0.

References

Template:Reflist

  1. 1.0 1.1 Jonathan Haughton and Shahidur R. Khandker. 2009. The Handbook on Poverty and Inequality. Washington, DC: The World Bank.