Literature DB >> 22592944

Statistical security for Social Security.

Samir Soneji1, Gary King.   

Abstract

The financial viability of Social Security, the single largest U.S. government program, depends on accurate forecasts of the solvency of its intergenerational trust fund. We begin by detailing information necessary for replicating the Social Security Administration's (SSA's) forecasting procedures, which until now has been unavailable in the public domain. We then offer a way to improve the quality of these procedures via age- and sex-specific mortality forecasts. The most recent SSA mortality forecasts were based on the best available technology at the time, which was a combination of linear extrapolation and qualitative judgments. Unfortunately, linear extrapolation excludes known risk factors and is inconsistent with long-standing demographic patterns, such as the smoothness of age profiles. Modern statistical methods typically outperform even the best qualitative judgments in these contexts. We show how to use such methods, enabling researchers to forecast using far more information, such as the known risk factors of smoking and obesity and known demographic patterns. Including this extra information makes a substantial difference. For example, by improving only mortality forecasting methods, we predict three fewer years of net surplus, $730 billion less in Social Security Trust Funds, and program costs that are 0.66% greater for projected taxable payroll by 2031 compared with SSA projections. More important than specific numerical estimates are the advantages of transparency, replicability, reduction of uncertainty, and what may be the resulting lower vulnerability to the politicization of program forecasts. In addition, by offering with this article software and detailed replication information, we hope to marshal the efforts of the research community to include ever more informative inputs and to continue to reduce uncertainties in Social Security forecasts.

Entities:  

Mesh:

Year:  2012        PMID: 22592944     DOI: 10.1007/s13524-012-0106-z

Source DB:  PubMed          Journal:  Demography        ISSN: 0070-3370


  28 in total

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7.  Forecasting the effects of obesity and smoking on U.S. life expectancy.

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9.  The future of death in America.

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Review 10.  Deciphering death: a commentary on Gompertz (1825) 'On the nature of the function expressive of the law of human mortality, and on a new mode of determining the value of life contingencies'.

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  9 in total

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Authors:  Adrian E Raftery
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2.  The future of death in America.

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3.  The future of life expectancy and life expectancy inequalities in England and Wales: Bayesian spatiotemporal forecasting.

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7.  Awareness of Indian government initiated social security schemes utilization among villagers of Kanpur rural region: An evaluative cross sectional study.

Authors:  Rohan Sachdev; Kriti Garg; Samiksha Shwetam; Aaryan R Srivastava; Akash Srivastava
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8.  Projecting the effect of changes in smoking and obesity on future life expectancy in the United States.

Authors:  Samuel H Preston; Andrew Stokes; Neil K Mehta; Bochen Cao
Journal:  Demography       Date:  2014-02

9.  Forecasting the prevalence of overweight and obesity in India to 2040.

Authors:  Shammi Luhar; Ian M Timæus; Rebecca Jones; Solveig Cunningham; Shivani A Patel; Sanjay Kinra; Lynda Clarke; Rein Houben
Journal:  PLoS One       Date:  2020-02-24       Impact factor: 3.240

  9 in total

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