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Asymptotically Distribution-Free Statistical Test for Generalized Lorenz Curves: An Alternative Approach

Kuan Xu
Dalhousie University - Department of Economics



Journal of Income Distribution, Vol. 7, No. 1, 1997

Abstract:     
A generalized Lorenz (GL) curve differs from a Lorenz curve in that the former is a rescaled version of the latter. A GL curve represents the relationship between the average income computed from a cumulative percentage of the population and the corresponding cumulative percentage. GL dominance is a useful criterion for ranking GL curves either for an economy over time or for a number of economies at one point in time. Relative to a dominated GL curve, a dominating GL curve indicates both that total income for the population is higher and that it is more equally distributed. Hence, it is obviously more desirable in a certain social sense. While sound statistical tests are essential for making statistical inference about GL dominance from sample GL curve estimates, the lack of a suitable joint test procedure for GL dominance is an unsolved problem in income distribution literature. This paper aims at solving this problem and provides an illustrative empirical example to show how to apply this test procedure in empirical research.

JEL Classifications: C12, I32

Accepted Paper Series

Date posted: January 23, 1999 ; Last revised: August 13, 1999

Suggested Citation

Xu, Kuan, Asymptotically Distribution-Free Statistical Test for Generalized Lorenz Curves: An Alternative Approach. Journal of Income Distribution, Vol. 7, No. 1, 1997. Available at SSRN: http://ssrn.com/abstract=142932


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Contact Information

Kuan Xu (Contact Author)
Dalhousie University - Department of Economics ( email )
Halifax, Nova Scotia B3H 3J5
Canada
902-494-6995 (Phone)
902-494-6917 (Fax)
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