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Griffith Feeney <feeney@demographer> Talk at Statistics South Africa Friday 6 July 2012

The New HMD-LQ Model Life Tables and Their Application to the Analysis of Census Household Deaths Data. Griffith Feeney <feeney@demographer.com> Talk at Statistics South Africa Friday 6 July 2012. Overview. Age pattern of human mortality Model life table families The HMD-LQ model

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Griffith Feeney <feeney@demographer> Talk at Statistics South Africa Friday 6 July 2012

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  1. The New HMD-LQ Model Life Tables and Their Application to the Analysis of Census Household Deaths Data Griffith Feeney <feeney@demographer.com> Talk at Statistics South Africa Friday 6 July 2012

  2. Overview • Age pattern of human mortality • Model life table families • The HMD-LQ model • Household deaths data • HMD-LQ analysis of HH deaths data • Observations, Next Steps, Conclusion

  3. Age Pattern of Human Mortality • Age-specific death rates – Deaths in age group divided by person years lived in age group • Primary input required for construction of life tables • Standard age groups are 0, 1-4, 5-9, and subsequent 5 year groups

  4. Model Life Table Families • Parameterized collection of age schedules of mortality • Intention is to fit empirical schedules • Coale-Demeny 1966, United Nations 1982

  5. The HMD-LQ Model • New kid on the block – Will it displace Coale-Demeny? • The Name - Human Mortality Database Log Quadratic • Here’s how it works … • But first, the reference - Population Studies, Vol. 66, Issue 12, December 2011

  6. http://demog.berkeley.edu/~jrw/Eprints/

  7. demog.berkeley.edu/˜ jrw/LogQuad/

  8. How Well Does It Work? • What goodness of fit can we expect? • Begin by fitting to 3 HMD life tables, which it was constructed to fit • Can’t expect better fits to non-HMD life tables • Fit to the same three tables I showed you to illustrate the age pattern of mortality

  9. Household Deaths Data • HHD data – derived from population census question on deaths in households • E.g., “Any deaths in this household during the past 12 months?” • If yes, record age (completed years) and sex of each decedent • Tabulate deaths by sex and age (0, 1-4, 5 year groups to old open ended group)

  10. South Africa 2011 Census

  11. Namibia 2011 Census

  12. Examples of HH Deaths Data • Let’s look at some examples of HHD data • By which I mean look at Log ASDR plots • Here are examples from 7 censuses in 4 countries • Rates shown are calculated without adjustment for completeness of reporting

  13. Application of the HMD-LQ Model to HH Deaths Data • Idea: Measure the size of the “hump” • Define measure of goodness of fit, choose parameter h to minimize this • Excel implementation of HMD-LQ • What measure of goodness of fit is appropriate, given that we do not expect the model to fit the “hump”?

  14. Observations • Fit to ASDRs from age 0-20 years is okay • Fit to ASDRs over 50-60 years is not good • What explanation? Model or data? • The “hump” is observed in high HIV prevalence countries • This and epidemiology of HIV-AIDS suggests it reflects AIDS-related deaths

  15. Thoughts on Next Steps • Estimate completeness of reporting - Hill’s 1987 Generalized Growth Balance Method • Refit HMD-LQ to rates adjusted for completeness of reporting • Use model fit to estimate excess deaths • Model excess deaths implied by fit, e.g., with Weibull distribution • Model overall mortality by HMD-LQ plus Weibull “hump”

  16. Conclusions • Existence of “hump” established • Hump reflects HIV/AIDS deaths – evidence is circumstancial, but powerful • Household deaths data may prove to be a powerful tool for assessing adult mortality impact of HIV/AIDS

  17. Thank you! • Questions? • Comments? • Look for files containing these slides and related material at demographer.com/talks/20120706StatsSA

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