Phantoms never die: living with unreliable population data

Link: https://www.macs.hw.ac.uk/~andrewc/papers/JRSS2016B.pdf

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Summary:

The analysis of national mortality trends is critically dependent on the quality of the population, exposures and deaths data that underpin death rates. We develop a framework that allows us to assess data reliability and to identify anomalies, illustrated, by way of example, using England and Wales population data. First, we propose a set of graphical diagnostics that help to pinpoint anomalies. Second, we develop a simple Bayesian model that allows us to quantify objectively the size of any anomalies. Two-dimensional graphical diagnostics and modelling techniques are shown to improve significantly our ability to identify and quantify anomalies. An important conclusion is that significant anomalies in population data can often be linked to uneven patterns of births of people in cohorts born in the distant past. In the case of England and Wales, errors of more than 9% in the estimated size of some birth cohorts can be attributed to an uneven pattern of births. We propose methods that can use births data to improve estimates of the underlying population exposures. Finally, we consider the effect of anomalies on mortality forecasts and annuity values, and we find significant effects for some cohorts. Our methodology has general applicability to other sources of population data, such as the Human Mortality Database.

Keywords: Baby boom;Cohort–births–deaths exposures methodology; Convexity adjustment ratio; Deaths; Graphical diagnostics; Population data

Author(s): Andrew J.G.Cairns, Heriot-Watt University, Edinburgh, UK David Blake, Cass Business School, London, UK Kevin Dowd Durham University Business School, UK and Amy R. Kessler Prudential Retirement, Newark, USA

Publication Date: 2016

Publication Site: Journal of the Royal Statistical Society

J. R. Statist. Soc. A (2016) 179, Part 4, pp. 975–1005

CMI mortality monitor – week 28 of 2022

Link: https://www.actuaries.org.uk/system/files/field/document/Mortality%20summary%20pandemic%20monitor%20Week%2028%202022%20v01%202022-07-26.pdf

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Excerpt:

Data sources
The provisional weekly deaths are available from:
• ONS (England & Wales)
https://www.ons.gov.uk/peoplepopulationandcommunity/birthsdeathsandmarriages/deaths/datasets/wee
klyprovisionalfiguresondeathsregisteredinenglandandwales
• NRS (Scotland)
https://www.nrscotland.gov.uk/covid19stats
• NISRA (Northern Ireland)
https://www.nisra.gov.uk/statistics/death-statistics/weekly-death-registrations-northern-ireland

Author(s): Continuous Mortality Investigation

Publication Date: July 2022

Publication Site: Actuaries UK

Total deaths in the UK from 2000 to 2020

Link: https://www.ons.gov.uk/aboutus/transparencyandgovernance/freedomofinformationfoi/totaldeathsintheukfrom2000to2020

YearUnited KingdomEngland and WalesEnglandWalesScotlandNorthern Ireland
2018616,014541,589505,85934,40658,50315,922
2017607,172533,253498,88233,24857,88316,036
2016597,206525,048490,79133,06656,72815,430
2015602,782529,655495,30933,19857,57915,548
2014570,341501,424468,87531,43954,23914,678
2013576,458506,790473,55232,13854,70014,968
2012569,024499,331466,77931,50254,93714,756
2011552,232484,367452,86230,42653,66114,204
2010561,666493,242461,01731,19753,96714,457
2009559,617491,348459,24131,00653,85614,413
2008579,697509,090475,76332,06655,70014,907
2007574,687504,052470,72132,14855,98614,649
2006572,224502,599470,32631,08355,09314,532
2005582,964512,993479,67832,16255,74714,224
2004584,791514,250480,71732,31756,18714,354
2003612,085539,151504,12733,81058,47214,462
2002608,045535,356500,79233,31458,10314,586
2001604,393532,498497,87833,24957,38214,513
2000610,579537,877503,02633,50157,79914,903

Date Accessed: 28 January 2021

Publication Site: Office for National Statistics, UK