Abstract:The approximate effects of measurement error on a variety of measures of inequality and poverty are derived. They are shown to depend on the measurement error variance and functionals of the errorcontaminated income distribution, but not on the form of the measurement error distribution, and to be accurate within a rich class of error-free income distributions and measurement error distributions. The functionals of the error-contaminated income distribution that approximate the measurement error induced distor… Show more
“…Clearly because expenditures are measured with error this may differ from a measure based on true expenditures. See Chesher and Schluter (2002) for methods to estimate the sensitivity of welfare measures to mismeasurement in y. u ch = c + ch complete enumeration areas are added, independently of previous EAs.…”
Section: Properties and Precision Of The Estimatormentioning
“…Clearly because expenditures are measured with error this may differ from a measure based on true expenditures. See Chesher and Schluter (2002) for methods to estimate the sensitivity of welfare measures to mismeasurement in y. u ch = c + ch complete enumeration areas are added, independently of previous EAs.…”
Section: Properties and Precision Of The Estimatormentioning
“…Such level of measurement error is highly unlikely. Bound et al, 2001, give much lower orders of magnitude for measurement error in income, closer to 20%, and this is the range considered by Chesher and Schluter, 2002 in their application to Indonesian data. Hence, it is unlikely that measurement error explains the high observed inequality in the PSF survey.…”
“…It is of interest to note that if both the observed income and the contamination terms are log-normal this implies that the true income distribution also has this form. Further the J-divergence of a log-normal distribution is simply equal to σ 2 y and hence this form of measurement error simply leads to an overstatement of inequality by σ 2 λ (see Chesher and Schluter (2002) or van Praag et al (1983) for similar results). The intuition behind this finding is clear: even when uncorrelated with income, data contamination introduces a new source of variation that acts via Jensen's inequality to increase the overall inequality (Arnold, 1980).…”
Section: Simulating the Effect Of Underreportingmentioning
confidence: 95%
“…It is of interest to note that if both the observed income and the contamination terms are log‐normal this implies that the true income distribution also has this form. Further the J ‐divergence of a log‐normal distribution is simply equal to and hence this form of measurement error simply leads to an overstatement of inequality by (see Chesher and Schluter () or van Praag et al . () for similar results).…”
Section: Income Divergence In the Usa Germany And Britainmentioning
The paper uses a symmetric entropy statistic to study income inequality. The index quantifies the information content of a two-way message that transforms the empirical income distribution into an egalitarian reference distribution, and then back to the original. This allows the measure to be interpreted as an average of n income-to-mean divergences such that the inequality estimate can be broken down into contributions across population subgroups. Various properties of the index are analysed and an application comparing the USA, Germany and Britain is provided. We focus on the sensitivity of inequality to the tails of the income distribution and show that the extreme right-hand tail accounts for a large and generally increasing proportion of total inequality. This result holds even if incomes are measured at the household level, averaged over a 5-year period and taken after government taxes and transfers.
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