Stochastic Claims Reserve in the Healthcare System: A Methodology Applied to Italian Data

IF 2 Q2 BUSINESS, FINANCE Risks Pub Date : 2024-01-29 DOI:10.3390/risks12020024
Claudio Mazzi, Angelo Damone, Andrea Vandelli, Gastone Ciuti, Milena Vainieri
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Abstract

One of the challenges in the healthcare sector is making accurate forecasts across insurance years for claims reserve. Healthcare claims present huge variability and heterogeneity influenced by random decisions of the courts and intrinsic characteristics of the damaged parties, which makes traditional methods for estimating reserves inadequate. We propose a new methodology to estimate claim reserves in the healthcare insurance system based on generalized linear models using the Overdispersed Poisson distribution function. In this context, we developed a method to estimate the parameters of the quasi-likelihood function using a Gauss–Newton algorithm optimized through a genetic algorithm. The genetic algorithm plays a crucial role in glimpsing the position of the global minimum to ensure a correct convergence of the Gauss–Newton method, where the choice of the initial guess is fundamental. This methodology is applied as a case study to the healthcare system of the Tuscany region. The results were validated by comparing them with state-of-the-art measurement of the confidence intervals of the Overdispersed Poisson distribution parameters with better outcomes. Hence, local healthcare authorities could use the proposed and improved methodology to allocate resources dedicated to healthcare and global management.
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医疗保健系统中的随机索赔储备金:意大利数据应用方法
医疗保健行业面临的挑战之一是准确预测各保险年度的理赔准备金。受法院随机判决和受损方固有特征的影响,医疗保险理赔具有巨大的可变性和异质性,这使得传统的准备金估算方法显得力不从心。我们提出了一种基于广义线性模型、使用超分散泊松分布函数估算医疗保险系统理赔准备金的新方法。在此背景下,我们开发了一种使用遗传算法优化的高斯-牛顿算法估算准似然比函数参数的方法。遗传算法在瞥见全局最小值的位置以确保高斯-牛顿方法的正确收敛方面起着至关重要的作用,而初始猜测的选择是基础。该方法作为案例研究应用于托斯卡纳地区的医疗保健系统。通过与最先进的超分散泊松分布参数置信区间测量方法进行比较,结果得到了验证。因此,地方医疗机构可以利用所提出的改进方法来分配医疗保健和全球管理所需的资源。
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来源期刊
Risks
Risks Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
3.80
自引率
22.70%
发文量
205
审稿时长
11 weeks
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