Generalized entropy index explained

The generalized entropy index has been proposed as a measure of income inequality in a population.[1] It is derived from information theory as a measure of redundancy in data. In information theory a measure of redundancy can be interpreted as non-randomness or data compression; thus this interpretation also applies to this index. In addition, interpretation of biodiversity as entropy has also been proposed leading to uses of generalized entropy to quantify biodiversity.[2]

Formula

The formula for general entropy for real values of

\alpha

is:

GE(\alpha) = \begin\frac\sum_^N\left[\left(\frac{y_i}{\overline{y}}\right)^\alpha - 1\right],& \alpha \ne 0, 1,\\\frac\sum_^N\frac\ln\frac,& \alpha=1,\\-\frac\sum_^N\ln\frac,& \alpha=0.\endwhere N is the number of cases (e.g., households or families),

yi

is the income for case i and

\alpha

is a parameter which regulates the weight given to distances between incomes at different parts of the income distribution. For large

\alpha

the index is especially sensitive to the existence of large incomes, whereas for small

\alpha

the index is especially sensitive to the existence of small incomes.

Properties

The GE index satisfies the following properties:

  1. The index is symmetric in its arguments:

GE(\alpha;y1,\ldots,yN)=GE(\alpha;y\sigma(1),\ldots,y\sigma(N))

for any permutation

\sigma

.
  1. The index is non-negative, and is equal to zero only if all incomes are the same:

GE(\alpha;y1,\ldots,yN)=0

iff

yi=\mu

for all

i

.
  1. The index satisfies the principle of transfers: if a transfer

\Delta>0

is made from an individual with income

yi

to another one with income

yj

such that

yi-\Delta>yj+\Delta

, then the inequality index cannot increase.
  1. The index satisfies population replication axiom: if a new population is formed by replicating the existing population an arbitrary number of times, the inequality remains the same:

GE(\alpha;\{y1,\ldots,yN\},\ldots,\{y1,\ldots,yN\})=GE(\alpha;y1,\ldots,yN)

  1. The index satisfies mean independence, or income homogeneity, axiom: if all incomes are multiplied by a positive constant, the inequality remains the same:

GE(\alpha;y1,\ldots,yN)=GE(\alpha;ky1,\ldots,kyN)

for any

k>0

.
  1. The GE indices are the only additively decomposable inequality indices. This means that overall inequality in the population can be computed as the sum of the corresponding GE indices within each group, and the GE index of the group mean incomes:

GE(\alpha;ygi:g=1,\ldots,G,i=1,\ldots,Ng)=

G
\sum
g=1

wgGE(\alpha;yg1,\ldots,

y
gNg

)+GE(\alpha;\mu1,\ldots,\muG)

where

g

indexes groups,

i

, individuals within groups,

\mug

is the mean income in group

g

, and the weights

wg

depend on

\mug,\mu,N

and

Ng

. The class of the additively-decomposable inequality indices is very restrictive. Many popular indices, including Gini index, do not satisfy this property.[3]

Relationship to other indices

An Atkinson index for any inequality aversion parameter can be derived from a generalized entropy index under the restriction that

\epsilon=1-\alpha

- i.e. an Atkinson index with high inequality aversion is derived from a GE index with small

\alpha

.

The formula for deriving an Atkinson index with inequality aversion parameter

\epsilon

under the restriction

\epsilon=1-\alpha

is given by:A=1-[\epsilon(\epsilon-1)GE(\alpha) + 1]^ \qquad \epsilon\ne1A= 1-e^ \qquad \epsilon=1

Note that the generalized entropy index has several income inequality metrics as special cases. For example, GE(0) is the mean log deviation a.k.a. Theil L index, GE(1) is the Theil T index, and GE(2) is half the squared coefficient of variation.

See also

Notes and References

  1. Shorrocks. A. F.. Anthony Shorrocks. The Class of Additively Decomposable Inequality Measures. Econometrica. 1980. 48. 3. 613–625. 1913126. 10.2307/1913126.
  2. Pielou. E.C.. The measurement of diversity in different types of biological collections. Journal of Theoretical Biology. December 1966. 13. 131–144. 10.1016/0022-5193(66)90013-0. 1966JThBi..13..131P .
  3. STEPHEN . JENKINS . CALCULATING INCOME DISTRIBUTION INDICES FROM MICRO-DATA . . .