Abstract

Conventional wisdom says that the middle classes in many developed countries have recently suffered losses, in terms of both the share of the total population belonging to the middle class, and also their share in total income. Here, distribution-free methods are developed for inference on these shares, by means of deriving expressions for their asymptotic variances of sample estimates, and the covariance of the estimates. Asymptotic inference can be undertaken based on asymptotic normality. Bootstrap inference can be expected to be more reliable, and appropriate bootstrap procedures are proposed. As an illustration, samples of individual earnings drawn from Canadian census data are used to test various hypotheses about the middle-class shares, and confidence intervals for them are computed. It is found that, for the earlier censuses, sample sizes are large enough for asymptotic and bootstrap inference to be almost identical, but that, in the twenty-first century, the bootstrap fails on account of a strange phenomenon whereby many presumably different incomes in the data are rounded to one and the same value. Another difference between the centuries is the appearance of heavy right-hand tails in the income distributions of both men and women.

Highlights

  • There has been much discussion in many countries about the fate of the middle class, variously defined

  • A couple of decades ago, it was pointed out by Foster and Wolfson (2010) that, in both countries, a decline of the middle class had led to a polarisation of the income distribution

  • In 2001, the asymptotic and bootstrap intervals are very close, but, in 2006, the bootstrap intervals extend far to the right of the asymptotic ones. The reason for these phenomena with the 2001 and 2006 data emerges from looking at the distributions of the bootstrap statistics, of which kernel density plots in 2006 for males and for females are shown in Figures 1 and 2 respectively

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Summary

Introduction

There has been much discussion in many countries about the fate of the middle class, variously defined. Distribution-free plug-in estimators are presented for the population and income shares of the middle class, according to three different sorts of definition of the middle class—based on the median income, based on the mean income, and based on quantiles of the income distribution. These estimators are shown to be consistent and asymptotically normal, and feasible estimators are given for the asymptotic variance.

Asymptotic Analysis
Definition in Terms of the Median
Definition in Terms of the Mean
Definition by Quantiles
Accuracy Measured by Simulation
Inference
Confidence Intervals
Smoothing
Hypothesis Tests
Findings
Conclusions
Full Text
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