长记忆对基于指数寿命对冲的死亡率差异的影响

IF 1.3 4区 经济学 Q3 DEMOGRAPHY Journal of Demographic Economics Pub Date : 2023-08-10 DOI:10.1017/dem.2023.8
K. Zhou, J. S. Li
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引用次数: 0

摘要

摘要在多人群死亡率建模中,自回归移动平均(ARMA)过程通常用于建模不同人群之间死亡率差异随时间的演变。虽然这些过程只捕捉到短期的序列依赖性,但在我们的实证工作中发现,死亡率差异往往表现出统计学意义上显著的长期序列依赖,这表明有必要使用长记忆过程。在本文中,我们用长记忆过程对不同人群之间的死亡率差异进行建模,同时保持由此产生的死亡率预测的一致性。我们的结果表明,如果死亡率差异的动力学是由长记忆过程建模的,则均值回归将慢得多,长期预测的不确定性将更高。这些结果表明,在基于指数的寿命套期中,基于人群的真实风险水平可能大于我们在假设ARMA过程时的预期。我们还研究了如果死亡率差异遵循长记忆过程,基于指数的寿命对冲应该如何校准。研究发现,德尔塔对冲比方差最小化对冲更稳健,因为即使死亡率差异的真实过程是长记忆过程,前者仍然有效。
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The impact of long memory in mortality differentials on index-based longevity hedges
Abstract In multi-population mortality modeling, autoregressive moving average (ARMA) processes are typically used to model the evolution of mortality differentials between different populations over time. While such processes capture only short-term serial dependence, it is found in our empirical work that mortality differentials often exhibit statistically significant long-term serial dependence, suggesting the necessity for using long memory processes instead. In this paper, we model mortality differentials between different populations with long memory processes, while preserving coherence in the resulting mortality forecasts. Our results indicate that if the dynamics of mortality differentials are modeled by long memory processes, mean reversion would be much slower, and forecast uncertainty over the long run would be higher. These results imply that the true level of population basis risk in index-based longevity hedges may be larger than what we would expect when ARMA processes are assumed. We also study how index-based longevity hedges should be calibrated if mortality differentials follow long memory processes. It is found that delta hedges are more robust than variance-minimizing hedges, in the sense that the former remains effective even if the true processes for mortality differentials are long memory ones.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
26
期刊介绍: Demographic variables such as fertility, mortality, migration and family structures notably respond to economic incentives and in turn affect the economic development of societies. Journal of Demographic Economics welcomes both empirical and theoretical papers on issues relevant to Demographic Economics with a preference for combining abstract economic or demographic models together with data to highlight major mechanisms. The journal was first published in 1929 as Bulletin de l’Institut des Sciences Economiques. It later became known as Louvain Economic Review, and continued till 2014 to publish under this title. In 2015, it moved to Cambridge University Press, increased its international character and changed its focus exclusively to demographic economics.
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