Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy

We give simple upper and lower bounds on life expectancy. In a life-table population, if e(0) is the life expectancy at birth, M is the median length of life, and e(M) is the expected remaining life at age M, then (M+e(M))/2≤e(0)≤M+e(M)/2. In general, for any age x, if e(...

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Main Author: Joel E. Cohen
Format: Article
Language:English
Published: Max Planck Institute for Demographic Research 2011-02-01
Series:Demographic Research
Subjects:
Online Access:http://www.demographic-research.org/volumes/vol24/11/
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spelling doaj-8be65587122e47e38cfe02b5e8b65fd92020-11-24T22:30:18ZengMax Planck Institute for Demographic ResearchDemographic Research1435-98712011-02-012411Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancyJoel E. CohenWe give simple upper and lower bounds on life expectancy. In a life-table population, if e(0) is the life expectancy at birth, M is the median length of life, and e(M) is the expected remaining life at age M, then (M+e(M))/2≤e(0)≤M+e(M)/2. In general, for any age x, if e(x) is the expected remaining life at age x, and ℓ(x) is the fraction of a cohort surviving to age x at least, then (x+e(x))≤l(x)≤e(0)≤x+l(x)∙e(x). For any two ages 0≤w≤x≤ω, (x-w+e(x))∙ℓ(x)/ℓ(w)≤e(w)≤x-w+e(x)∙ℓ(x)/ℓ(w) . These inequalities give bounds on e(0) without detailed knowledge of the course of mortality prior to age x, provided ℓ(x) can be estimated. Such bounds could be useful for estimating life expectancy where the input of eggs or neonates can be estimated but mortality cannot be observed before late juvenile or early adult ages. http://www.demographic-research.org/volumes/vol24/11/inequalitieslife expectancylife tablestationary population
collection DOAJ
language English
format Article
sources DOAJ
author Joel E. Cohen
spellingShingle Joel E. Cohen
Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
Demographic Research
inequalities
life expectancy
life table
stationary population
author_facet Joel E. Cohen
author_sort Joel E. Cohen
title Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
title_short Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
title_full Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
title_fullStr Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
title_full_unstemmed Life expectancy: Lower and upper bounds from surviving fractions and remaining life expectancy
title_sort life expectancy: lower and upper bounds from surviving fractions and remaining life expectancy
publisher Max Planck Institute for Demographic Research
series Demographic Research
issn 1435-9871
publishDate 2011-02-01
description We give simple upper and lower bounds on life expectancy. In a life-table population, if e(0) is the life expectancy at birth, M is the median length of life, and e(M) is the expected remaining life at age M, then (M+e(M))/2≤e(0)≤M+e(M)/2. In general, for any age x, if e(x) is the expected remaining life at age x, and ℓ(x) is the fraction of a cohort surviving to age x at least, then (x+e(x))≤l(x)≤e(0)≤x+l(x)∙e(x). For any two ages 0≤w≤x≤ω, (x-w+e(x))∙ℓ(x)/ℓ(w)≤e(w)≤x-w+e(x)∙ℓ(x)/ℓ(w) . These inequalities give bounds on e(0) without detailed knowledge of the course of mortality prior to age x, provided ℓ(x) can be estimated. Such bounds could be useful for estimating life expectancy where the input of eggs or neonates can be estimated but mortality cannot be observed before late juvenile or early adult ages.
topic inequalities
life expectancy
life table
stationary population
url http://www.demographic-research.org/volumes/vol24/11/
work_keys_str_mv AT joelecohen lifeexpectancylowerandupperboundsfromsurvivingfractionsandremaininglifeexpectancy
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