Gini-coefficient of national income distribution around the world (using 2009 info)
Salary review committee to start on clean slate
SINGAPORE: Chairman of the committee to review salaries of political appointment holders, Mr Gerard Ee, said his committee intends to start on a clean slate.
SINGAPORE: Chairman of the committee to review salaries of political appointment holders, Mr Gerard Ee, said his committee intends to start on a clean slate.
income inequality was higher than the OECD average in the mid 2000s the UK was somewhat unusual among OECD nations in having falling income inequality between the mid 1990s and mid 2000s Yesterday Kate Green chair of of the Campaign to End Child Poverty said We welcome the fact that Conservatives are taking seriously the scandal of four million children in poverty in the
http://www.leftfootforward.org/2009/11/camerons-use-of-severe-poverty-stats-do-not-pass-ifs-muster
List of countries by income equality - Wikipedia, the free ...
The Gini coefficient is a number between 0 and 1, where 0 corresponds with ... Inequality in income or expenditure / Gini index, Human Development Report 2007 ...
The Gini coefficient is a number between 0 and 1, where 0 corresponds with ... Inequality in income or expenditure / Gini index, Human Development Report 2007 ...
The Gini coefficient is a measure of statistical dispersion developed by the Italian statistician and sociologist Corrado Gini and published in his 1912 paper "Variability and Mutability" (Italian: Variabilit e mutabilit).12
such as land taken by the state from peasants and farmers due to poor wage and working conditions The Gini coefficient would suggest that income disparities could be the major cause However the Asia Wall Street Journal subscription required argues that while income disparities have increased that less Chinese live in poverty than before the major economic reforms
http://dawnsearlylight.blogs.com/del/2005/10/japans_koizumi_.html
Gini coefficient: Definition from Answers.com
Gini coefficient In a Lorenz curve , a measure of the difference between a given distribution of some variable, like population or income, and a
Gini coefficient In a Lorenz curve , a measure of the difference between a given distribution of some variable, like population or income, and a
The Gini coefficient is a measure of the inequality of a distribution a value of 0 expressing total equality and a value of 1 maximal inequality. It has found application in the study of inequalities in disciplines as diverse as sociology economics health science ecology chemistry engineering and agriculture.3
on inequality in Asia PDF The purpose of the report was to determine if economic growth in Asia matched the perception of inequality Using percentage change in the Gini Coefficient The report notes that these figures are quite low Latin American countries have Gini figures of greater than fifty The report writes that it is not a case of the rich getting richer and
http://www.southsearepublic.org/tag/Gini%20Coefficient/read
Gini coefficient - Wikipedia, the free encyclopedia
The Gini coefficient is a measure of inequality developed by the Italian statistician Corrado Gini and published in his 1912 paper "Variabilità e mutabilità" ...
The Gini coefficient is a measure of inequality developed by the Italian statistician Corrado Gini and published in his 1912 paper "Variabilità e mutabilità" ...
It is commonly used as a measure of inequality of income or wealth.4 Worldwide Gini coefficients for income range from approximately 0.23 (Sweden) to 0.70 (Namibia) although not every country has been assessed.
Contents
1 Definition
2 Calculation
3 Generalised inequality index
4 Gini coefficient of income distributions
4.1 US income Gini indices over time
4.2 EU Gini index
5 Advantages and disadvantages
5.1 Advantages of Gini coefficient as a measure of inequality
5.2 Disadvantages of Gini coefficient as a measure of inequality
5.2.1 General problems of measurement
5.2.2 Credit risk
6 Other uses
7 See also
8 References
9 Further reading
10 External links
Definition
Graphical representation of the Gini coefficient.
The graph shows that the Gini is equal to the area marked 'A' divided by the sum of the areas marked 'A' and 'B' (that is Gini A/(A+B)). It is also equal to 2*A as A+B 0.5 (since the axes scale from 0 to 1).
argument and Michaels himself arguing that his article is based on a lie and then later arguing that Michael s lit crit approach ignores reality I think that Michaels is onto something The Gini Coefficient is a standard measure of inequality The higher the number the higher the level of inequality We all know that there are stark black white wealth differences But what
http://blacksmythe.com/blog/page/8
Gini-Coefficient
Labor Department data shows the U.S. Gini Coefficient is rising. ... The Gini Coefficient is named after Corrado Gini, an Italian economist who published it in 1912. ...
Labor Department data shows the U.S. Gini Coefficient is rising. ... The Gini Coefficient is named after Corrado Gini, an Italian economist who published it in 1912. ...
The Gini coefficient is usually defined mathematically based on the Lorenz curve which plots the proportion of the total income of the population (y axis) that is cumulatively earned by the bottom x% of the population (see diagram). The line at 45 degrees thus represents perfect equality of incomes. The Gini coefficient can then be thought of as the ratio of the area that lies between the line of equality and the Lorenz curve (marked 'A' in the diagram) over the total area under the line of equality (marked 'A' and 'B' in the diagram); i.e. GA/(A+B).
Gini coefficient
The Gini index is the Gini coefficient expressed as a percentage, and is. equal to the Gini coefficient multiplied by 100. (The Gini coefficient is equal to half ...
The Gini index is the Gini coefficient expressed as a percentage, and is. equal to the Gini coefficient multiplied by 100. (The Gini coefficient is equal to half ...
The Gini coefficient can range from 0 to 1; it is sometimes multiplied by 100 to range between 0 and 100. A low Gini coefficient indicates a more equal distribution with 0 corresponding to complete equality while higher Gini coefficients indicate more unequal distribution with 1 corresponding to complete inequality. To be validly computed no negative goods can be distributed. Thus if the Gini coefficient is being used to describe household income inequality then no household can have a negative income. When used as a measure of income inequality the most unequal society will be one in which a single person receives 100% of the total income and the remaining people receive none (G1); and the most equal society will be one in which every person receives the same income (G0).
Gini coefficient - Definition | WordIQ.com
The Gini coefficient is a measure of inequality developed by the Italian statistician Corrado Gini and published in his 1912 paper "Variabilità e mutabilità" ...
The Gini coefficient is a measure of inequality developed by the Italian statistician Corrado Gini and published in his 1912 paper "Variabilità e mutabilità" ...
Some find it more intuitive (and it is mathematically equivalent) to think of the Gini coefficient as half of the relative mean difference. The mean difference is the average absolute difference between two items selected randomly from a population and the relative mean difference is the mean difference divided by the average to normalize for scale.
Calculation
The Gini Coefficient
The Gini coefficient ranges between 0, where there is no concentration (perfect equality), and 1 where there is total concentration (perfect inequality) ...
The Gini coefficient ranges between 0, where there is no concentration (perfect equality), and 1 where there is total concentration (perfect inequality) ...
The Gini index is defined as a ratio of the areas on the Lorenz curve diagram. If the area between the line of perfect equality and the Lorenz curve is A and the area under the Lorenz curve is B then the Gini index is A/(A+B). Since A+B 0.5 the Gini index G A/(0.5) 2A 1-2B. If the Lorenz curve is represented by the function Y L(X) the value of B can be found with integration and:
Gini coefficient - eNotes.com Reference
The Gini coefficient is a measure of the inequality of a distribution, a value of 0 expressing total equality and a value of 1 maximal inequality. ...
The Gini coefficient is a measure of the inequality of a distribution, a value of 0 expressing total equality and a value of 1 maximal inequality. ...
In some cases this equation can be applied to calculate the Gini coefficient without direct reference to the Lorenz curve. For example:
For a population uniform on the values yi i 1 to n indexed in non-decreasing order ( yi yi+1):
This may be simplified to:
For a discrete probability function f(y) where yi i 1 to n are the points with nonzero probabilities and which are indexed in increasing order ( yi < yi+1):
where
and
For a cumulative distribution function F(y) that is piecewise differentiable has a mean and is zero for all negative values of y:
Since the Gini coefficient is half the relative mean difference it can also be calculated using formulas for the relative mean difference. For a random sample S consisting of values yi i 1 to n that are indexed in non-decreasing order ( yi yi+1) the statistic:
is a consistent estimator of the population Gini coefficient but is not in general unbiased. Like G G(S) has a simpler form:
.
Gini coefficient of inequality
The Gini coefficient was developed by the Italian Statistician Corrado Gini (Gini, 1912) as a summary measure of income inequality in society. ...
The Gini coefficient was developed by the Italian Statistician Corrado Gini (Gini, 1912) as a summary measure of income inequality in society. ...
There does not exist a sample statistic that is in general an unbiased estimator of the population Gini coefficient like the relative mean difference.
For some functional forms the Gini index can be calculated explicitly. For example if y follows a lognormal distribution with the standard deviation of logs equal to then where () is the cumulative distribution function of the standard normal distribution.
Sometimes the entire Lorenz curve is not known and only values at certain intervals are given. In that case the Gini coefficient can be approximated by using various techniques for interpolating the missing values of the Lorenz curve. If ( X k Yk ) are the known points on the Lorenz curve with the X k indexed in increasing order ( X k - 1 < X k ) so that:
Xk is the cumulated proportion of the population variable for k 0...n with X0 0 Xn 1.
Yk is the cumulated proportion of the income variable for k 0...n with Y0 0 Yn 1.
Yk should be indexed in non-decreasing order (Yk>Yk-1)
If the Lorenz curve is approximated on each interval as a line between consecutive points then the area B can be approximated with trapezoids and:
is the resulting approximation for G. More accurate results can be obtained using other methods to approximate the area B such as approximating the Lorenz curve with a quadratic function across pairs of intervals or building an appropriately smooth approximation to the underlying distribution function that matches the known data. If the population mean and boundary values for each interval are also known these can also often be used to improve the accuracy of the approximation.
The Gini coefficient calculated from a sample is a statistic and its standard error or confidence intervals for the population Gini coefficient should be reported. These can be calculated using bootstrap techniques but those proposed have been mathematically complicated and computationally onerous even in an era of fast computers. Ogwang (2000) made the process more efficient by setting up a trick regression model in which the incomes in the sample are ranked with the lowest income being allocated rank 1. The model then expresses the rank (dependent variable) as the sum of a constant A and a normal error term whose variance is inversely proportional to yk;
Ogwang showed that G can be expressed as a function of the weighted least squares estimate of the constant A and that this can be used to speed up the calculation of the jackknife estimate for the standard error. Giles (2004) argued that the standard error of the estimate of A can be used to derive that of the estimate of G directly without using a jackknife at all. This method only requires the use of ordinary least squares regression after ordering the sample data. The results compare favorably with the estimates from the jackknife with agreement improving with increasing sample size. The paper describing this method can be found here: http://web.uvic.ca/econ/ewp0202.pdf
However it has since been argued that this is dependent on the models assumptions about the error distributions (Ogwang 2004) and the independence of error terms (Reza & Gastwirth 2006) and that these assumptions are often not valid for real data sets. It may therefore be better to stick with jackknife methods such as those proposed by Yitzhaki (1991) and Karagiannis and Kovacevic (2000). The debate continues.
The Gini coefficient can be calculated if you know the mean of a distribution the number of people (or percentiles) and the income of each person (or percentile). Princeton development economist Angus Deaton (1997 139) simplified the Gini calculation to one easy formula:
where u is mean income of the population Pi is the income rank P of person i with income X such that the richest person receives a rank of 1 and the poorest a rank of N. This effectively gives higher weight to poorer people in the income distribution which allows the Gini to meet the Transfer Principle.
Generalised inequality index
See also: Generalized entropy index
The Gini coefficient and other standard inequality indices reduce to a common form. Perfect equalitythe absence of inequalityexists when and only when the inequality ratio equals 1 for all j units in some population; for example there is perfect income equality when everyones income xj equals the mean income so that rj 1 for everyone). Measures of inequality then are measures of the average deviations of the rj 1 from 1; the greater the average deviation the greater the inequality. Based on these observations the inequality indices have this common form:5
where pj weights the units by their population share and f(rj) is a function of the deviation of each units rj from 1 the point of equality. The insight of this generalised inequality index is that inequality indices differ because they employ different functions of the distance of the inequality ratios (the rj) from 1.
Gini coefficient of income distributions
See also: List of countries by income equality
While developed European nations and Canada tend to have Gini indices between 24 and 36 the United States' and Mexico's Gini indices are both above 40 indicating that the United States and Mexico have greater inequality. Using the Gini can help quantify differences in welfare and compensation policies and philosophies. However it should be borne in mind that the Gini coefficient can be misleading when used to make political comparisons between large and small countries (see criticisms section).
The Gini index for the entire world has been estimated by various parties to be between 56 and 66.67
US income Gini indices over time
Gini indices for the United States at various times according to the US Census Bureau:8910
1929: 45.0 (estimated)
1947: 37.6 (estimated)
1967: 39.7 (first year reported)
1968: 38.6 (lowest index reported)
1970: 39.4
1980: 40.3
1990: 42.8
(Recalculations made in 1992 added a significant upward shift for later values)
2000: 46.2
2005: 46.9
2006: 47.0 (highest index reported)
2007: 46.3
2008: 46.69
2009: 46.8
EU Gini index
In 2005 the Gini index for the EU was estimated at 31.11
Advantages and disadvantages
This section contains a pro and con list. Please help improve it by integrating both sides into a more neutral presentation. (February 2011)
This section may contain original research. Please improve it by verifying the claims made and adding references. Statements consisting only of original research may be removed. More details may be available on the talk page. (December 2010)
Advantages of Gini coefficient as a measure of inequality
The Gini coefficient's main advantage is that it is a measure of inequality by means of a ratio analysis. This makes it easily interpretable and avoids references to a statistical average or position unrepresentative of most of the population such as per capita income or gross domestic product. The simplicity of Gini makes it easy to use for comparison across diverse countries and also allows comparison of income distributions across different groups as well as countries; for example the Gini coefficient for urban areas differs from that of rural areas in many countries (though not in the United States). Like any time-based measure Gini coefficients can be used to compare income distribution over time thus it is possible to see if inequality is increasing or decreasing independent of absolute incomes. The Gini coefficient satisfies four principles suggested to be important:12
Anonymity: it does not matter who the high and low earners are.
Scale independence: the Gini coefficient does not consider the size of the economy the way it is measured or whether it is a rich or poor country on average.
Population independence: it does not matter how large the population of the country is.
Transfer principle: if income (less than the difference) is transferred from a rich person to a poor person the resulting distribution is more equal.
Disadvantages of Gini coefficient as a measure of inequality
The weaknesses of Gine largely lie in its relative nature: It loses information about absolute national and personal incomes. Countries may have identical Gini coefficients but differ greatly in wealth. Basic necessities may be equal (available to all) in a rich country while in the poor country even basic necessities are unequally available. In addition Gini does not address causes: income equality may reflect differences in opportunity or capability. For example some countries may have a social class structure that presents barriers to upward mobility; some people may have more skills than others. By measuring inequality in income the Gini ignores the differential efficiency of use of household income. By ignoring wealth (except as it contributes to income) the Gini can create the appearance of inequality when the people compared are at different stages in their life. Wealthy countries (e.g. Sweden) can appear more equal yet have high Gini coefficients for wealth (for instance 77% of the share value owned by households is held by just 5% of Swedish shareholding households).13dead link These factors are not assessed in income-based Gini.
Gini has some negative mathematical characteristics. For instance different sets of people cannot be averaged to obtain the Gini coefficient of all the people in the sets: if a Gini coefficient were to be calculated for each person it would always be zero. For a large economically diverse country a much higher coefficient will be calculated for the country as a whole than will be calculated for each of its regions. (The coefficient is usually applied to measurable nominal income rather than local purchasing power tending to increase the calculated coefficient across larger areas.)
As is the case for any single measure of a distribution economies with similar incomes and Gini coefficients can still have very different income distributions. This results from differing shapes of the Lorenz curve. For example consider a society where half of individuals had no income and the other half shared all the income equally (i.e. whose Lorenz curve is linear from (00) to (0.50) and then linear to (11)). As is easily calculated this society has Gini coefficient 0.5 -- the same as that of a society in which 75% of people equally shared 25% of income while the remaining 25% equally shared 75% (i.e. whose Lorenz curve is linear from (00) to (0.750.25) and then linear to (11)).
Too often only the Gini coefficient is quoted without describing the proportions of the quantiles used for measurement. As with other inequality coefficients the Gini coefficient is influenced by the granularity of the measurements. For example five 20% quantiles (low granularity) will usually yield a lower Gini coefficient than twenty 5% quantiles (high granularity) taken from the same distribution. This is an often encountered problem with measurements.
Care should be taken in using the Gini coefficient as a measure of egalitarianism as it is properly a measure of income dispersion. For example if two equally egalitarian countries pursue different immigration policies the country accepting a higher proportion of low-income or impoverished migrants will be assessed as less equal (gain a higher Gini coefficient).
Expanding on the importance of life-span measures the Gini coefficient as a point-estimate of equality at a certain time ignores life-span changes in income. Typically increases in the proportion of young or old members of a society will drive apparent changes in equality. Because of this factors such as age distribution within a population and mobility within income classes can create the appearance of differential equality when none exist taking into account demographic effects. Thus a given economy may have a higher Gini coefficient at any one point in time compared to another while the Gini coefficient calculated over individuals' lifetime income is actually lower than the apparently more equal (at a given point in time) economy's.14 Essentially what matters is not just inequality in any particular year but the composition of the distribution over time.
General problems of measurement
Comparing income distributions among countries may be difficult because benefits systems may differ. For example some countries give benefits in the form of money while others give food stamps which might not be counted by some economists and researchers as income in the Lorenz curve and therefore not taken into account in the Gini coefficient. Income in the United States is counted before benefits while in France it is counted after benefits which may lead the United States to appear somewhat more unequal vis-a-vis France. In another example the Soviet Union was measured to have relatively high income inequality: by some estimates in the late 1970s Gini coefficient of its urban population was as high as 0.3815 which is higher than many Western countries today. This number would not reflect those benefits received by Soviet citizens that were not monetized for measurement which may include child care for children as young as two months elementary secondary and higher education cradle-to-grave medical care and heavily subsidized or provided housing. In this example a more accurate comparison between the 1970s Soviet Union and Western countries may require one to assign monetary values to all benefits a difficult task in the absence of free markets. Similar problems arise whenever a comparison between pure free-market economies and partially socialist economies is attempted. Benefits may take various and unexpected forms: for example major oil producers such as Venezuela and Iran provide indirect benefits to its citizens by subsidizing the retail price of gasoline.
Similarly in some societies people may have significant income in other forms than money for example through subsistence farming or bartering. Like non-monetary benefits the value of these incomes is difficult to quantify. Different quantifications of these incomes will yield different Gini coefficients.
The measure will give different results when applied to individuals instead of households. When different populations are not measured with consistent definitions comparison is not meaningful.
As for all statistics there may be systematic and random errors in the data. The meaning of the Gini coefficient decreases as the data become less accurate. Also countries may collect data differently making it difficult to compare statistics between countries.
As one result of this criticism in addition to or in competition with the Gini coefficient entropy measures are frequently used (e.g. the Theil Index and the Atkinson index). These measures attempt to compare the distribution of resources by intelligent agents in the market with a maximum entropy random distribution which would occur if these agents acted like non-intelligent particles in a closed system following the laws of statistical physics.
Credit risk
The Gini coefficient is also commonly used for the measurement of the discriminatory power of rating systems in credit risk management.
The discriminatory power refers to a credit risk model's ability to differentiate between defaulting and non-defaulting clients. The above formula G1 may be used for the final model and also at individual model factor level to quantify the discriminatory power of individual factors. This is as a result of too many non defaulting clients falling into the lower points scale e.g. factor has a 10 point scale and 30% of non defaulting clients are being assigned the lowest points available e.g. 0 or negative points. This indicates that the factor is behaving in a counter-intuitive manner and would require further investigation at the model development stage.16
Other uses
Although the Gini coefficient is most popular in economics it can in theory be applied in any field of science that studies a distribution. For example in ecology the Gini coefficient has been used as a measure of biodiversity where the cumulative proportion of species is plotted against cumulative proportion of individuals.17 In health it has been used as a measure of the inequality of health related quality of life in a population.18 In education it has been used as a measure of the inequality of universities.19 In chemistry it has been used to express the selectivity of protein kinase inhibitors against a panel of kinases.20 In engineering it has been used to evaluate the fairness achieved by Internet routers in scheduling packet transmissions from different flows of traffic.21 In statistics building decision trees it is used to measure the purity of possible child nodes with the aim of maximising the average purity of two child nodes when splitting and it has been compared with other equality measures.22
See also
Human Poverty Index
Pareto distribution
Robin Hood index
ROC analysis
Social welfare provision
The Spirit Level: Why More Equal Societies Almost Always Do Better
Suits index
Welfare economics
Economic inequality
List of countries by income equality
List of countries by distribution of wealth
List of countries by Human Development Index
List of U.S. states by income equality
References
Gini C. (1912) (Italian: Variabilit e mutabilit (Variability and Mutability) C. Cuppini Bologna 156 pages. Reprinted in Memorie di metodologica statistica (Ed. Pizetti E Salvemini T). Rome: Libreria Eredi Virgilio Veschi (1955).
Gini C (1909) Concentration and dependency ratios (in Italian). English translation in Rivista di Politica Economica 87 (1997) 769-789.
Sadras V.O. Bongiovanni R. 2004. Use of Lorenz curves and Gini coefficients to assess yield inequality within paddocks. Field Crops Res. 90 303-310.
Gini C. (1936) On the Measure of Concentration with Special Reference to Income and Statistics Colorado College Publication General Series No. 208 73-79.
Firebaugh Glenn (1999). "Empirics of World Income Inequality". American Journal of Sociology 104 (6): 15971630. doi:10.1086/210218 . See also (2003). "Inequality: What it is and how it is measured". The New Geography of Global Income Inequality. Cambridge MA: Harvard University Press. ISBN 0674010671 .
Bob Sutcliffe (April 2007). "Postscript to the article World inequality and globalization (Oxford Review of Economic Policy Spring 2004)". http://siteresources.worldbank.org/INTDECINEQ/Resources/PSBSutcliffe.pdf. Retrieved 2007-12-13
United Nations Development Programme
"Gini Ratios for Households by Race and Hispanic Origin of Householder: 1967 to 2007". Historical Income Tables - Households. United States Census Bureau. http://www.census.gov/hhes/www/income/histinc/h04.html.
"Table 3. Income Distribution Measures Using Money Income and Equivalence-Adjusted Income: 2007 and 2008". Income Poverty and Health Insurance Coverage in the United States: 2008. United States Census Bureau. p. 17. http://www.census.gov/prod/2009pubs/p60-236.pdf.
"Income Poverty and Health Insurance Coverage in the United States: 2009". Newsroom. United States Census Bureau. http://www.census.gov/newsroom/releases/archives/incomewealth/cb10-144.html.
"Monitoring quality of life in Europe - Gini index". Eurofound. 26 August 2009. http://www.eurofound.europa.eu/areas/qualityoflife/eurlife/index.phptemplate3&radioindic158&idDomain3 .
Ray Debraj (1998). Development Economics. Princeton NJ: Princeton University Press. p. 188. ISBN 0691017069 .
(Data from the Statistics Sweden)
Blomquist N. (1981). "A comparison of distributions of annual and lifetime income: Sweden around 1970". Review of Income and Wealth 27 (3): 243264. doi:10.1111/j.1475-4991.1981.tb00227.x .
Millar James R. (1987). Politics work and daily life in the USSR. New York: Cambridge University Press. p. 193. ISBN 0521348900 .
The Analytics of risk model validationspecify
Wittebolle Lieven; et al. (2009). "Initial community evenness favours functionality under selective stress". Nature 458 (7238): 623626. doi:10.1038/nature07840. PMID 19270679.
Asada Yukiko (2005). "Assessment of the health of Americans: the average health-related quality of life and its inequality across individuals and groups". Population Health Metrics 3: 7. doi:10.1186/1478-7954-3-7. PMC 1192818. PMID 16014174.
Halffman Willem; Leydesdorff L (2010). "Is Inequality Among Universities Increasing Gini Coefficients and the Elusive Rise of Elite Universities". Minerva 48 (1): 5572. doi:10.1007/s11024-010-9141-3. PMC 2850525. PMID 20401157.
Graczyk Piotr (2007). "Gini Coefficient: A New Way To Express Selectivity of Kinase Inhibitors against a Family of Kinases". Journal of Medicinal Chemistry 50 (23): 57735779. doi:10.1021/jm070562u. PMID 17948979.
Shi Hongyuan; Sethu Harish (2003). "Greedy Fair Queueing: A Goal-Oriented Strategy for Fair Real-Time Packet Scheduling". Proceedings of the 24th IEEE Real-Time Systems Symposium. IEEE Computer Society. pp. 345356. ISBN 0-7695-2044-8
Gonzalez Luis; et al. (2010). "The Similarity between the Square of the Coeficient of Variation and the Gini Index of a General Random Variable". Journal of Quantitative Methods for Economics and Business Administration 10: 518. ISSN 1886-516X. http://www.upo.es/RevMetCuant/art.phpid40.
Further reading
Amiel Y.; Cowell F.A. (1999). Thinking about Inequality. Cambridge. ISBN 0521466962.
Anand Sudhir (1983). Inequality and Poverty in Malaysia. New York: Oxford University Press. ISBN 0195201531.
Brown Malcolm (1994). "Using Gini-Style Indices to Evaluate the Spatial Patterns of Health Practitioners: Theoretical Considerations and an Application Based on Alberta Data". Social Science Medicine 38 (9): 12431256. doi:10.1016/0277-9536(94)90189-9. PMID 8016689.
Chakravarty S. R. (1990). Ethical Social Index Numbers. New York: Springer-Verlag. ISBN 0387522743.
Deaton Angus (1997). Analysis of Household Surveys. Baltimore MD: Johns Hopkins University Press. ISBN 0585237875.
Dixon PM Weiner J. Mitchell-Olds T Woodley R. (1987). "Bootstrapping the Gini coefficient of inequality". Ecology (Ecological Society of America) 68 (5): 15481551. doi:10.2307/1939238. JSTOR 1939238.
Dorfman Robert (1979). "A Formula for the Gini Coefficient". The Review of Economics and Statistics (The MIT Press) 61 (1): 146149. doi:10.2307/1924845. JSTOR 1924845.
Firebaugh Glenn (2003). The New Geography of Global Income Inequality. Cambridge MA: Harvard University Press. ISBN 0674010671.
Gastwirth Joseph L. (1972). "The Estimation of the Lorenz Curve and Gini Index". The Review of Economics and Statistics (The MIT Press) 54 (3): 306316. doi:10.2307/1937992. JSTOR 1937992.
Giles David (2004). "Calculating a Standard Error for the Gini Coefficient: Some Further Results". Oxford Bulletin of Economics and Statistics 66 (3): 425433. doi:10.1111/j.1468-0084.2004.00086.x.
Gini Corrado (1912). "Variabilit e mutabilit" Reprinted in Memorie di metodologica statistica (Ed. Pizetti E Salvemini T). Rome: Libreria Eredi Virgilio Veschi (1955).
Gini Corrado (1921). "Measurement of Inequality of Incomes". The Economic Journal (Blackwell Publishing) 31 (121): 124126. doi:10.2307/2223319. JSTOR 2223319.
Giorgi G. M. (1990). A bibliographic portrait of the Gini ratio Metron 48 183-231.
Karagiannis E. and Kovacevic M. (2000). "A Method to Calculate the Jackknife Variance Estimator for the Gini Coefficient". Oxford Bulletin of Economics and Statistics 62: 119122. doi:10.1111/1468-0084.00163.
Mills Jeffrey A.; Zandvakili Sourushe (1997). "Statistical Inference via Bootstrapping for Measures of Inequality". Journal of Applied Econometrics 12 (2): 133150. doi:10.1002/(SICI)1099-1255(199703)12:2<133::AID-JAE433>3.0.CO;2-H.
Modarres Reza and Gastwirth Joseph L. (2006). "A Cautionary Note on Estimating the Standard Error of the Gini Index of Inequality". Oxford Bulletin of Economics and Statistics 68 (3): 385390. doi:10.1111/j.1468-0084.2006.00167.x.
Morgan James (1962). "The Anatomy of Income Distribution". The Review of Economics and Statistics (The MIT Press) 44 (3): 270283. doi:10.2307/1926398. JSTOR 1926398.
Ogwang Tomson (2000). "A Convenient Method of Computing the Gini Index and its Standard Error". Oxford Bulletin of Economics and Statistics 62: 123129. doi:10.1111/1468-0084.00164.
Ogwang Tomson (2004). "Calculating a Standard Error for the Gini Coefficient: Some Further Results: Reply". Oxford Bulletin of Economics and Statistics 66 (3): 435437. doi:10.1111/j.1468-0084.2004.00087.x.
Xu Kuan (January 2004). How Has the Literature on Gini's Index Evolved in the Past 80 Years. Department of Economics Dalhousie University. http://economics.dal.ca/RePEc/dal/wparch/howgini.pdf. Retrieved 2006-06-01. The Chinese version of this paper appears in Xu Kuan (2003). "How Has the Literature on Gini's Index Evolved in the Past 80 Years". China Economic Quarterly 2: 757778.
Yitzhaki S. (1991). "Calculating Jackknife Variance Estimators for Parameters of the Gini Method". Journal of Business and Economic Statistics (American Statistical Association) 9 (2): 235239. doi:10.2307/1391792. JSTOR 1391792.
External links
Deutsche Bundesbank: Do banks diversify loan portfolios 2005 (on using e.g. the Gini coefficient for risk evaluation of loan portfolios)
Forbes Article In praise of inequality
Measuring Software Project Risk With The Gini Coefficient an application of the Gini coefficient to software
The World Bank: Measuring Inequality
Travis Hale University of Texas Inequality Project:The Theoretical Basics of Popular Inequality Measures online computation of examples: 1A 1B
United States Census Bureau List of Gini Coefficients by State for Families and Households
Article from The Guardian analysing inequality in the UK 1974 - 2006
World Income Inequality Database
Income Distribution and Poverty in OECD Countries
Software:
A Matlab Inequality Package including code for computing Gini Atkinson Theil indexes and for plotting the Lorenz Curve. Many examples are available.
Free Online Calculator computes the Gini Coefficient plots the Lorenz curve and computes many other measures of concentration for any dataset
Free Calculator: Online and downloadable scripts (Python and Lua) for Atkinson Gini and Hoover inequalities
Users of the R data analysis software can install the "ineq" package which allows for computation of a variety of inequality indices including Gini Atkinson Theil.
LORENZ 2.0 is a Mathematica notebook available from C. Damgaard which draws sample Lorenz curves and calculates Gini coefficients and Lorenz asymmetry coefficients from data in an Excel sheet Lorenzfordownload2.zip.




















