Blinder–Oaxaca decomposition
   HOME

TheInfoList



OR:

The Kitagawa–Blinder–Oaxaca decomposition is a statistical method that explains the difference in the
mean There are several kinds of mean in mathematics, especially in statistics. Each mean serves to summarize a given group of data, often to better understand the overall value ( magnitude and sign) of a given data set. For a data set, the '' ar ...
s of a
dependent variable Dependent and independent variables are variables in mathematical modeling, statistical modeling and experimental sciences. Dependent variables receive this name because, in an experiment, their values are studied under the supposition or dema ...
between two groups by decomposing the gap into that part that is due to differences in the mean values of the independent variable within the groups, on the one hand, and group differences in the effects of the independent variable, on the other hand. The method was introduced by sociologist and demographer
Evelyn M. Kitagawa Evelyn Mae Kitagawa (1920 – September 15, 2007) was an American sociologist and demographer who worked as a professor at the University of Chicago and became president of the Population Association of America and chair of the U.S. Census Bureau ...
in 1955. Ronald Oaxaca introduced this method in economics in his doctoral thesis at
Princeton University Princeton University is a private research university in Princeton, New Jersey. Founded in 1746 in Elizabeth as the College of New Jersey, Princeton is the fourth-oldest institution of higher education in the United States and one of the ...
and eventually published in 1973. The decomposition technique also carries the name of
Alan Blinder Alan Stuart Blinder (, born October 14, 1945) is an American economics professor at Princeton University and is listed among the most influential economists in the world according to IDEAS/RePEc. He is a leading macroeconomist, politically liber ...
who proposed a similar approach in the same year. Oaxaca's original research question was the wage differential between two different groups of workers, but the method has since been applied to numerous other topics.


Method

The following three equations illustrate this decomposition. Estimate separate linear wage regressions for individuals ''i'' in groups ''A'' and ''B'': : \begin (1) \qquad \ln(\text_) & = X_ \beta_A + \mu_ \\ (2) \qquad \ln(\text_) & = X_ \beta_B + \mu_ \end where ''Χ'' is a vector of explanatory variables such as education, experience, industry, and occupation, ''β''''A'' and ''β''''B'' are vectors of coefficients and ''μ'' is an
error term In mathematics and statistics, an error term is an additive type of error. Common examples include: * errors and residuals in statistics, e.g. in linear regression * the error term in numerical integration In analysis, numerical integration ...
. Let ''b''''A'' and ''b''''B'' be respectively the regression estimates of ''β''''A'' and ''β''''B''. Then, since the average value of residuals in a linear regression is zero, we have: : \begin (3) \qquad & \operatorname(\ln(\text_A)) - \operatorname(\ln(\text_B)) \\ pt= & b_A \operatorname(X_A) - b_B \operatorname(X_B) \\ pt= & b_A (\operatorname(X_A) - \operatorname(X_B)) + \operatorname(X_B) (b_A - b_B) \end The first part of the last line of (3) is the impact of between-group differences in the explanatory variables ''X'', evaluated using the coefficients for group ''A''. The second part is the differential not explained by these differences in observed characteristics ''X''.


Interpretation

The unexplained differential in wages for the same values of explanatory variables should not be interpreted as the amount of the difference in wages due only to discrimination. This is because other explanatory variables not included in the regression (e.g. because they are unobserved) may also account for wage differences. For example,
David Card David Edward Card (born 1956) is a Canadian-American labour economist and professor of economics at the University of California, Berkeley. He was awarded half of the 2021 Nobel Memorial Prize in Economic Sciences "for his empirical contributio ...
and
Alan Krueger Alan Bennett Krueger (September 17, 1960 – March 16, 2019) was an American economist who was the James Madison Professor of Political Economy at Princeton University and Research Associate at the National Bureau of Economic Research. He served ...
found in a paper entitled, "School Quality and Black-White Relative Earnings: A Direct Assessment" that improvements in the quality of schools for Black men born in the Southern states of the United States between 1915 and 1966 increased the return to education for these men, leading to narrowing of the black-white earnings gap. In terms of wage regressions, the poor quality of schools for Black men had meant a lower value of the ''β'' coefficient on years of schooling for Black men than for White men. Thus, some of this lower ''β'' coefficient reflected a difference in the quality of education for Black workers which could have otherwise been interpreted as an effect of direct discrimination; differences in the quality of education for Black workers would reflect historical or 'indirect' discrimination against them.


See also

* Standardization (demographics)


References


Further reading

* * * * *Kevin Guo & Guillaume Basse. 2021. " The Generalized Oaxaca-Blinder Estimator." ''Journal of the American Statistical Association''. {{DEFAULTSORT:Oaxaca decomposition Regression analysis Observational study Causal inference