Mean log deviation

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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

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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.

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

References

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