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Erschienen in: Social Indicators Research 1/2022

16.10.2021 | Original Research

An Empirical Validation Method for Narrowing the Range of Poverty Thresholds

verfasst von: Geranda Notten, Julie Kaplan

Erschienen in: Social Indicators Research | Ausgabe 1/2022

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Abstract

Determining the threshold separating poor from non-poor populations is one of the most influential choices when measuring poverty. Commonly used selection criteria leave considerable room for discretion or are not appropriate as academic standards. This vacuum in academic guidance leads to arbitrary and/or ideologically driven choices. This can greatly influence the measurement of a societal phenomenon, and thus research and public policy decisions over a period that extends well beyond the mandate of those making that threshold decision. This paper sets out an empirical validation method that contributes to reducing the range of thresholds and thereby aids decision-makers in making that normative decision. Our method uses an absolute concept of empirical validity and requires that the microdata for measuring poverty hold additional information closely associated with poverty. The method builds on insights from theory on measurement error that, for any given threshold, some persons are wrongly identified as poor (false positives) and others are wrongly identified as not poor (false negatives), and that the reduction of one error can only be attained by increasing the other. Our method uses the additional microdata to disaggregate the population into (likely) false positives and (likely) false negatives and analyzes marginal changes in this composition as the poverty threshold becomes stricter. Using Canadian data, we show that this approach substantially narrows the range of thresholds for two unidimensional poverty indicators, namely a material deprivation and an income poverty indicator. The underlying principle of the method extends to other (unidimensional) social indicators. The analysis itself can also serve other purposes, such as deepening our understanding of poverty and the cost-effectiveness of policies to reduce it.

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Fußnoten
1
The dimensionality of an indicator reflects a continuum and this paper focuses on poverty indicators situated (more) on the unidimensional side, leaving the question on whether the approach developed here would also be useful for multidimensional indicators for future research.
 
2
This paper uses the term “likelihood of poverty” colloquially, thus conferring the meaning “the chances that” rather than its narrower and probabilistic meaning in statistics jargon.
 
3
We use the wording ‘strictness’ in this definition because an increase in strictness may reflect either an increase or a decrease in the numerical value depending on the poverty indicator used. For instance, a stricter material deprivation threshold implies a higher numerical value (e.g., from one to two deprivations) whereas a stricter income poverty threshold implies a lower numerical value (e.g., from two to one currency units). Furthermore, depending on the poverty indicator, the scale can be ordinal or cardinal.
 
4
See Notten, Charest and Heisz (2017) for more detailed information on the data, methods and results.
 
5
The income threshold values (in Canadian Dollars) are $14,325 (30 percent), $19,100 (40 percent), $23,875 (50 percent), $28,650 (60 percent) and $33,425 (70 percent).
 
6
The income poverty rate at the 50 percent of median threshold in this paper differs from the official LIM rates published by Statistics Canada (see Table https://​www150.​statcan.​gc.​ca/​t1/​tbl1/​en/​tv.​action?​pid=​1110013501, accessed 23 May 2018). This is because income in the CSEW data is self-reported while the official income poverty data are calculated largely using tax files. This is also because we calculate the before-tax LIM rate as the data do not have the preferable after-tax information whereas the CANSIM tables list the after-tax LIM rate. Unpublished calculations with the data source used for official poverty statistics give a before-tax LIM rate of 17.6 percent compared to 15.9 percent in our paper.
 
7
This lack of overlap between the two indicators of material poverty is well documented in the literature and has given rise to a broad consensus that income and material deprivation indicators are complements rather than substitutes (e.g., Cancian and Meyer, 2004; Fusco et al., 2011; Nolan and Whelan, 2011). This paper focuses on how to set a poverty threshold of a unidimensional indicator, and thus leaves aside considerations on what set of indicators to use in monitoring progress on poverty and/or the relevance of a multidimensional indicator of poverty.
 
8
We apply this argument in the spirit of Sen’s (2001) capability theory; it thus only applies to cases in which a person has the freedom of choice between adequate and realistically feasible alternatives.
 
9
We thank an anonymous reviewer for pointing out that in classifying group B as “high” we give an income below the poverty threshold more weight than the absence of experiencing economic hardship. Group B is very small; categorizing group B as “low” or, alternatively, not counting the group towards any of the two measurement error groups would not change the threshold range for the material deprivation indicator (see Table S3, supplementary appendix).
 
10
Table S3 in the supplementary appendix shows the evolution of the composition of each of the six profiles in the materially deprived population at each threshold.
 
11
Tables S5 to S10 and accompanying descriptions in the supplementary appendix explain these robustness checks in further detail. A Monte Carlo Simulation, which consisted of performing the empirical validation exercise using 1,000 replicate samples drawn from our dataset, indicates that the chance of identifying an optimal threshold of two using the definitions outlined in step two is 91% (Table S12).
 
12
Because our data hold only before-tax total income the income distribution reflects government income transfers received but not income taxes paid. Since we use a relative threshold, we define the threshold range as percentages of the median. For absolute or hybrid thresholds, the range of threshold could be set differently.
 
13
A strict equality of weights for the error groups would identify the 40 percent of the median as optimal.
 
Literatur
Zurück zum Zitat Alkire, S., & Foster, J. (2011). Counting and Multidimensional Poverty Measurement. Journal of Public Economics, 95(7–8), 476–487.CrossRef Alkire, S., & Foster, J. (2011). Counting and Multidimensional Poverty Measurement. Journal of Public Economics, 95(7–8), 476–487.CrossRef
Zurück zum Zitat Alkire, S., Foster, J. E., Seth, S., Santos, M. E., Roche, J., & Ballon, P. (2015). Multidimensional Poverty Measurement and Analysis: Chapter 3–Overview of Methods for Multidimensional Poverty Assessment. Alkire, S., Foster, J. E., Seth, S., Santos, M. E., Roche, J., & Ballon, P. (2015). Multidimensional Poverty Measurement and Analysis: Chapter 3–Overview of Methods for Multidimensional Poverty Assessment.
Zurück zum Zitat Alkire, S., and Santos, M. E. (2009). ‘Poverty and Inequality Measurement’. in An introduction to the human development and capability approach: Freedom and agency. IDRC. Alkire, S., and Santos, M. E. (2009). ‘Poverty and Inequality Measurement’. in An introduction to the human development and capability approach: Freedom and agency. IDRC.
Zurück zum Zitat Alkire, S., and Santos, M. E. (2010). Acute multidimensional poverty: A new index for developing countries. United Nations Development Programme Human Development Report Office Background Paper (2010/11). Alkire, S., and Santos, M. E. (2010). Acute multidimensional poverty: A new index for developing countries. United Nations Development Programme Human Development Report Office Background Paper (2010/11).
Zurück zum Zitat Atkinson, A. (2003). Multidimensional deprivation: Contrasting social welfare and counting approaches. The Journal of Economic Inequality, 1(1), 51–65.CrossRef Atkinson, A. (2003). Multidimensional deprivation: Contrasting social welfare and counting approaches. The Journal of Economic Inequality, 1(1), 51–65.CrossRef
Zurück zum Zitat Atkinson, A., Cantillon, B., Marlier, E., and Nolan, B. (2002). Social Indicators: The EU and Social Inclusion. OUP Oxford. Atkinson, A., Cantillon, B., Marlier, E., and Nolan, B. (2002). Social Indicators: The EU and Social Inclusion. OUP Oxford.
Zurück zum Zitat Banerjee, A., Chitnis, U. B., Jadhav, S. L., Bhawalkar, J. S., & Chaudhury, S. (2009). Hypothesis testing, type I and type II errors. Industrial Psychiatry Journal, 18(2), 127.CrossRef Banerjee, A., Chitnis, U. B., Jadhav, S. L., Bhawalkar, J. S., & Chaudhury, S. (2009). Hypothesis testing, type I and type II errors. Industrial Psychiatry Journal, 18(2), 127.CrossRef
Zurück zum Zitat Beduk, S. (2018). Missing the unhealthy? Examining empirical validity of material deprivation indices (MDIs) using a partial criterion variable. Social Indicators Research, 135(1), 91–115.CrossRef Beduk, S. (2018). Missing the unhealthy? Examining empirical validity of material deprivation indices (MDIs) using a partial criterion variable. Social Indicators Research, 135(1), 91–115.CrossRef
Zurück zum Zitat Brodersen, J., Schwartz, L. M., Heneghan, C., O’Sullivan, J. W., Aronson, J. K., and Woloshin, S. (2018). Overdiagnosis: What It Is and What It Isn’t. Royal Society of Medicine. Brodersen, J., Schwartz, L. M., Heneghan, C., O’Sullivan, J. W., Aronson, J. K., and Woloshin, S. (2018). Overdiagnosis: What It Is and What It Isn’t. Royal Society of Medicine.
Zurück zum Zitat Cancian, M., & Meyer, D. R. (2004). Alternative measures of economic success among TANF participants: Avoiding poverty, hardship, and dependence on public assistance. Journal of Policy Analysis and Management, 23(3), 531–548.CrossRef Cancian, M., & Meyer, D. R. (2004). Alternative measures of economic success among TANF participants: Avoiding poverty, hardship, and dependence on public assistance. Journal of Policy Analysis and Management, 23(3), 531–548.CrossRef
Zurück zum Zitat Coady, D., Grosh, M., and Hoddinott, J. (2004). Targeting of transfers in developing countries: Review of lessons and experience. The World Bank. Coady, D., Grosh, M., and Hoddinott, J. (2004). Targeting of transfers in developing countries: Review of lessons and experience. The World Bank.
Zurück zum Zitat Colquhoun, D. (2017). The reproducibility of research and the misinterpretation of p-values. Royal Society Open Science, 4(12), 171085.CrossRef Colquhoun, D. (2017). The reproducibility of research and the misinterpretation of p-values. Royal Society Open Science, 4(12), 171085.CrossRef
Zurück zum Zitat Davidson, R., & Duclos, J.-Y. (2000). Statistical inference for stochastic dominance and for the measurement of poverty and inequality. Econometrica, 68(6), 1435–1464.CrossRef Davidson, R., & Duclos, J.-Y. (2000). Statistical inference for stochastic dominance and for the measurement of poverty and inequality. Econometrica, 68(6), 1435–1464.CrossRef
Zurück zum Zitat Fisher, G. M. (1992). The development and history of the poverty thresholds. Social Security Bulletin, 55, 3. Fisher, G. M. (1992). The development and history of the poverty thresholds. Social Security Bulletin, 55, 3.
Zurück zum Zitat Fusco, Alessio, Anne-Catherine Guio, and Eric Marlier. 2011. “Income Poverty and Material Deprivation in European Countries.” LISER. Fusco, Alessio, Anne-Catherine Guio, and Eric Marlier. 2011. “Income Poverty and Material Deprivation in European Countries.” LISER.
Zurück zum Zitat Gordon, David. 2006. ‘The Concept and Measurement of Poverty’. Poverty and Social Exclusion in Britain. The Millennium Survey, Policy Press, Bristol 29–69. Gordon, David. 2006. ‘The Concept and Measurement of Poverty’. Poverty and Social Exclusion in Britain. The Millennium Survey, Policy Press, Bristol 29–69.
Zurück zum Zitat Guio, A.-C. (2009). What Can be learned from deprivation indicators in Europe. Indicator Subgroup of the Social Protection Committee 10. Guio, A.-C. (2009). What Can be learned from deprivation indicators in Europe. Indicator Subgroup of the Social Protection Committee 10.
Zurück zum Zitat Guio, A.-C., Gordon, D., & Marlier, E. (2012). Measuring Material Deprivation in the EU: Indicators for the Whole Population and Child-Specific Indicators. Publications Office of the European Union. Guio, A.-C., Gordon, D., & Marlier, E. (2012). Measuring Material Deprivation in the EU: Indicators for the Whole Population and Child-Specific Indicators. Publications Office of the European Union.
Zurück zum Zitat Guio, A.-C., Marlier, E., Gordon, D., Fahmy, E., Nandy, S., & Pomati, M. (2016). Improving the measurement of material deprivation at the European union level. Journal of European Social Policy, 26(3), 219–333.CrossRef Guio, A.-C., Marlier, E., Gordon, D., Fahmy, E., Nandy, S., & Pomati, M. (2016). Improving the measurement of material deprivation at the European union level. Journal of European Social Policy, 26(3), 219–333.CrossRef
Zurück zum Zitat Nandy, S., & Pomati, M. (2015). Applying the consensual method of estimating poverty in a low income African setting. Social Indicators Research, 124(3), 693–726.CrossRef Nandy, S., & Pomati, M. (2015). Applying the consensual method of estimating poverty in a low income African setting. Social Indicators Research, 124(3), 693–726.CrossRef
Zurück zum Zitat National Research Council. (1995). Measuring Poverty: A New Approach. National Academies Press. National Research Council. (1995). Measuring Poverty: A New Approach. National Academies Press.
Zurück zum Zitat Nolan, B., and Whelan, C. T. (2011). Poverty and Deprivation in Europe. OUP Catalogue. Nolan, B., and Whelan, C. T. (2011). Poverty and Deprivation in Europe. OUP Catalogue.
Zurück zum Zitat Notten, G., and Kaplan, J. (2021). Material Deprivation: Measuring Poverty by Counting Necessities Households Cannot Afford. Canadian Public Policy 1–17. Notten, G., and Kaplan, J. (2021). Material Deprivation: Measuring Poverty by Counting Necessities Households Cannot Afford. Canadian Public Policy 1–17.
Zurück zum Zitat Notten, G., Charest, J. and Heisz, A. (2017). Material Deprivation in Canada. University of Ottawa Department of Economics. Notten, G., Charest, J. and Heisz, A. (2017). Material Deprivation in Canada. University of Ottawa Department of Economics.
Zurück zum Zitat Notten, G. (2015). Child poverty in Ontario: The value added of material deprivation indicators for comparative policy analysis in North America. Journal of Comparative Policy Analysis: Research and Practice, 17(5), 533–551. Notten, G. (2015). Child poverty in Ontario: The value added of material deprivation indicators for comparative policy analysis in North America. Journal of Comparative Policy Analysis: Research and Practice, 17(5), 533–551.
Zurück zum Zitat Notten, G., & De Neubourg, C. (2011). Monitoring absolute and relative poverty:“Not Enough” is not the same as “Much Less.” Review of Income and Wealth, 57(2), 247–269.CrossRef Notten, G., & De Neubourg, C. (2011). Monitoring absolute and relative poverty:“Not Enough” is not the same as “Much Less.” Review of Income and Wealth, 57(2), 247–269.CrossRef
Zurück zum Zitat Notten, G., & Roelen, K. (2012). A new tool for monitoring (Child) poverty: Measures of cumulative deprivation. Child Indicators Research, 5(2), 335–355.CrossRef Notten, G., & Roelen, K. (2012). A new tool for monitoring (Child) poverty: Measures of cumulative deprivation. Child Indicators Research, 5(2), 335–355.CrossRef
Zurück zum Zitat Saunders, P., & Naidoo, Y. (2009). Poverty, deprivation and consistent poverty. Economic Record, 85(271), 417–432.CrossRef Saunders, P., & Naidoo, Y. (2009). Poverty, deprivation and consistent poverty. Economic Record, 85(271), 417–432.CrossRef
Zurück zum Zitat Sen, A. (1976). Poverty: An ordinal approach to measurement. Econometrica: Journal of the Econometric Society 219–31. Sen, A. (1976). Poverty: An ordinal approach to measurement. Econometrica: Journal of the Econometric Society 219–31.
Zurück zum Zitat Sen, A. (2001). Development as Freedom. Oxford Paperbacks. Sen, A. (2001). Development as Freedom. Oxford Paperbacks.
Zurück zum Zitat Smeeding, T. (2006). Poor people in rich nations: The United States in comparative perspective. Journal of Economic Perspectives, 20(1), 69–90.CrossRef Smeeding, T. (2006). Poor people in rich nations: The United States in comparative perspective. Journal of Economic Perspectives, 20(1), 69–90.CrossRef
Zurück zum Zitat Townsend, P. (1979). Poverty in the United Kingdom: A survey of household resources and standards of living. Univ of California Press. Townsend, P. (1979). Poverty in the United Kingdom: A survey of household resources and standards of living. Univ of California Press.
Metadaten
Titel
An Empirical Validation Method for Narrowing the Range of Poverty Thresholds
verfasst von
Geranda Notten
Julie Kaplan
Publikationsdatum
16.10.2021
Verlag
Springer Netherlands
Erschienen in
Social Indicators Research / Ausgabe 1/2022
Print ISSN: 0303-8300
Elektronische ISSN: 1573-0921
DOI
https://doi.org/10.1007/s11205-021-02817-1

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