Survey attrition and attrition bias in Young Lives

Longitudinal studies, such as the Young Lives study of childhood poverty, help us to analyse welfare dynamics in ways that are not possible using time-series or cross-sectional samples. However, analysis based on panel datasets can be heavily compromised by sample attrition. On the one hand, the num...

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Main Authors: Outes-Leon, I, Dercon, S
Format: Report
Language:English
Published: Young Lives 2009
Subjects:
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author Outes-Leon, I
Dercon, S
author_facet Outes-Leon, I
Dercon, S
author_sort Outes-Leon, I
collection OXFORD
description Longitudinal studies, such as the Young Lives study of childhood poverty, help us to analyse welfare dynamics in ways that are not possible using time-series or cross-sectional samples. However, analysis based on panel datasets can be heavily compromised by sample attrition. On the one hand, the number of respondents who do not participate in each round of data collection (wave non-response) will inevitably cumulate over time, resulting in falling sample sizes, which will undermine the precision of any research undertaken using such samples. On the other hand, unless it is random, attrition might lead to biased inferences. Analysts often presuppose that attrition is correlated with observable characteristics such as household education, health or economic well-being, resulting in samples that include only a selected group of households. However, even if that is the case, non-random attrition does not necessarily lead to attrition bias. Attrition bias is model-specific and, as previous studies have shown, biases might be absent even if attrition rates are high. We investigate the incidence and potential bias arising from attrition in Young Lives following the completion of the second round of data collection. Young Lives is a study concerned with analysing childhood poverty in four countries, Ethiopia, India, Vietnam and Peru. The study, which measures a range of child, household, and household-member characteristics , is following two cohorts of children in each country over 15 years – a younger cohort of 2,000 children who were born in 2001 to 2002 (i.e. aged 6 to 18 months when first surveyed) and 1,000 older children born in 1994-95 (i.e. aged 7.5 to 8.5 at the start of the survey). Sample attrition is particularly concerning in the context of a longitudinal study such as Young Lives where cohort sample sizes are modest and individuals are tracked over a relatively long period of time. This paper seeks to: • document the rates of attrition of the Young Lives study following completion of the second round of data collection; • investigate the extent to which sample attrition is non-random; • analyse whether non-random attrition in the Young Lives sample might lead to attrition bias.
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spelling oxford-uuid:f48ddfdc-a37a-43ba-9e85-4b6b6bbae0de2022-03-27T12:20:43ZSurvey attrition and attrition bias in Young LivesReporthttp://purl.org/coar/resource_type/c_93fcuuid:f48ddfdc-a37a-43ba-9e85-4b6b6bbae0deStatistics (social sciences)Children and youthEnglishOxford University Research Archive - ValetYoung Lives2009Outes-Leon, IDercon, SLongitudinal studies, such as the Young Lives study of childhood poverty, help us to analyse welfare dynamics in ways that are not possible using time-series or cross-sectional samples. However, analysis based on panel datasets can be heavily compromised by sample attrition. On the one hand, the number of respondents who do not participate in each round of data collection (wave non-response) will inevitably cumulate over time, resulting in falling sample sizes, which will undermine the precision of any research undertaken using such samples. On the other hand, unless it is random, attrition might lead to biased inferences. Analysts often presuppose that attrition is correlated with observable characteristics such as household education, health or economic well-being, resulting in samples that include only a selected group of households. However, even if that is the case, non-random attrition does not necessarily lead to attrition bias. Attrition bias is model-specific and, as previous studies have shown, biases might be absent even if attrition rates are high. We investigate the incidence and potential bias arising from attrition in Young Lives following the completion of the second round of data collection. Young Lives is a study concerned with analysing childhood poverty in four countries, Ethiopia, India, Vietnam and Peru. The study, which measures a range of child, household, and household-member characteristics , is following two cohorts of children in each country over 15 years – a younger cohort of 2,000 children who were born in 2001 to 2002 (i.e. aged 6 to 18 months when first surveyed) and 1,000 older children born in 1994-95 (i.e. aged 7.5 to 8.5 at the start of the survey). Sample attrition is particularly concerning in the context of a longitudinal study such as Young Lives where cohort sample sizes are modest and individuals are tracked over a relatively long period of time. This paper seeks to: • document the rates of attrition of the Young Lives study following completion of the second round of data collection; • investigate the extent to which sample attrition is non-random; • analyse whether non-random attrition in the Young Lives sample might lead to attrition bias.
spellingShingle Statistics (social sciences)
Children and youth
Outes-Leon, I
Dercon, S
Survey attrition and attrition bias in Young Lives
title Survey attrition and attrition bias in Young Lives
title_full Survey attrition and attrition bias in Young Lives
title_fullStr Survey attrition and attrition bias in Young Lives
title_full_unstemmed Survey attrition and attrition bias in Young Lives
title_short Survey attrition and attrition bias in Young Lives
title_sort survey attrition and attrition bias in young lives
topic Statistics (social sciences)
Children and youth
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AT dercons surveyattritionandattritionbiasinyounglives