首页> 外文学位 >Exiting the health insurance market as a rational choice: Demand for health insurance in a learning model.
【24h】

Exiting the health insurance market as a rational choice: Demand for health insurance in a learning model.

机译:退出健康保险市场是一个合理的选择:学习模型中对健康保险的需求。

获取原文
获取原文并翻译 | 示例

摘要

It is widely believed that individuals exit the insurance market due to adverse shock to their income, insurance premium or both. This dissertation studies the role of imperfect information and subsequent learning about health endowment on individuals' decisions to continue health insurance coverage. We show that rational individuals may exit the insurance market even in the absence of adverse shocks to income and/or insurance premium. We assume that unknown health endowment and age are the only determinants of losses due to expenditures on medical care.; Individuals receive noisy signals about their endowment by observing these losses as they advance in age. Following Jovanovic (1982), we develop a model in which individuals incorporate this new information in the decision making process by using Bayesian Learning to update their beliefs about their health. Favorable new information diminishes the valuation of continuing insurance coverage; similarly, unfavorable new information increases its valuation. As individuals grow older, they accumulate additional information, which increases the precision of their beliefs. Beliefs that are more precise react imperceptibly to new information. Therefore, new information influences the beliefs of young people more than of old. Moreover, for a given belief, increased precision induces a mean preserving decrease in risk, reducing the demand for health insurance. Since precision increases as individuals age, we call it the learning effect of age. The other effect of growing older is the biological depreciation of health, which increases the size of loss. This increases the demand for health insurance and we call it the aging effect of age. Consequently, there is a continuous trade off between the gain in precision and increase in loss as individuals grow older. Bayesian Learning implies that the learning effect weakens with age. However, biological depreciation strengthens with age. Hence, we expect that, the aging effect will override the learning effect at a unique point over the life span of an individual. Thus, unlike previous studies, we predict that controlling for changes in income, premium and new information, middle-aged individuals are least likely to renew insurance coverage.; In the last part of the dissertation, we use a panel component of MEPS data for 1997-2000 to test our model. We select individuals who are single, non-elderly, ineligible for public insurance and privately insured in the reference period and estimate their probability of insuring in the subsequent period. We construct a measure for new information and find that the likelihood of continuing coverage increases for adverse surprises. This relationship between new information and continuing coverage is stronger for young people than for old. We find that for the young, the probability of continuing coverage increases by 5.33% points and for the old by 0.37% points, when new information is changed from 5th percentile to 95 th percentile and all other variables are held at their mean values. We also find that the impact of age on the likelihood of continuing insurance coverage is non-monotonic. It decreases until 37 years of age (95%CI 34, 39 years of age), and then increases, as predicted by the theoretical model. Thus, we find some empirical evidence that unanticipated new information affects the demand for insurance and the interaction between learning and biological depreciation as individuals age.
机译:人们普遍认为,个人由于对收入,保险费或两者的不利冲击而退出保险市场。本文研究了不完善的信息以及随后的关于健康end赋的学习在个人决定继续健康保险方面的作用。我们表明,即使在没有对收入和/或保险费产生不利冲击的情况下,理性个体也可能退出保险市场。我们假设未知的医疗health赋和年龄是决定医疗支出的损失的唯一决定因素。通过观察随着年龄的增长而遭受的损失,个人会收到有关其捐赠的嘈杂信号。根据Jovanovic(1982),我们建立了一个模型,在该模型中,个人通过使用贝叶斯学习来更新他们对健康的信念,从而将这些新信息纳入决策过程。有利的新信息会降低持续保险的估值;同样,不利的新信息也会增加其估值。随着个人年龄的增长,他们会积累更多的信息,从而提高了信仰的准确性。更精确的信念会对新信息产生潜移默化的反应。因此,新信息对年轻人信念的影响大于对老人的信念。而且,对于给定的信念,提高精度会导致平均风险保持降低,从而减少了对健康保险的需求。由于精度随着个体年龄的增长而增加,因此我们将其称为年龄的学习效果。变老的另一个影响是健康的生物学下降,这增加了损失的大小。这增加了对健康保险的需求,我们称之为年龄的老龄化效应。因此,随着个人年龄的增长,精度的提高与损失的增加之间存在着持续的权衡。贝叶斯学习意味着学习效果随着年龄的增长而减弱。但是,生物折旧随着年龄增长而增强。因此,我们期望,在个体的整个生命周期中,衰老效应将在其唯一的点上超越学习效应。因此,与以往的研究不同,我们预测控制收入,保费和新信息的变化,中年人最不可能续签保险。在论文的最后部分,我们使用1997- 2000年MEPS数据的面板成分来测试我们的模型。我们选择在参考期间内单身,非老年人,不符合公共保险资格和私人保险的个人,并估计其在随后时期的保险可能性。我们构造了一种用于获取新信息的措施,并发现由于意外意外而继续覆盖的可能性增加。对于年轻人来说,新信息与持续报道之间的关系要强于老年人。我们发现,当新信息从第5个百分位数更改为第95个百分位数,并且所有其他变量均保持其平均值时,对于年轻人来说,连续覆盖的可能性增加了5.33%,而对于老年人来说,持续覆盖的可能性增加了0.37%。我们还发现,年龄对继续投保的可能性的影响不是单调的。如理论模型所预测,它会降低到37岁(95%CI 34,39岁),然后增加。因此,我们发现一些经验证据表明,随着个人年龄的增长,新信息会影响保险需求以及学习与生物折旧之间的相互作用。

著录项

  • 作者

    Jain, Rahul.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Gerontology.; Economics General.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;经济学;
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号