医院破产的概率:随机方法

IF 2.1 Q2 BUSINESS, FINANCE
Ramalingam Shanmugam, Brad Beauvais, Diane Dolezel, Rohit Pradhan, Zo Ramamonjiarivelo
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引用次数: 0

摘要

在当代环境中,医疗保健行业的领导者面临着许多财务挑战,导致财务窘迫,近年来破产的例子屡见不鲜。人们对可能导致组织经济衰退的具体条件还不甚了解。虽然有各种预测财务困境的模型,但现有的回归方法可能不够充分,尤其是当财务变量遵循非正常频率模式时。此外,回归法还会因多重共线性而遇到困难。因此,需要另一种随机方法来预测医院破产的概率。我们提出的新方法包括几个关键步骤,以更好地评估医院的财务健康状况。首先,我们计算并解释二元对数正态数据中医院收入与支出之间的关系。接下来,我们估算收入与支出不匹配导致的破产风险。我们还确定了医院支出超过该州支出中位数水平的可能性。最后,我们对医院的财务记忆水平进行评估,以了解其财务稳定程度。我们相信,我们预测医院破产的新方法可能有助于医院领导者和政策制定者做出明智的决策,并积极管理风险,以确保其机构的可持续性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Probability of Hospital Bankruptcy: A Stochastic Approach
Healthcare leaders are faced with many financial challenges in the contemporary environment, leading to financial distress and notable instances of bankruptcies in recent years. What is not well understood are the specific conditions that may lead to organizational economic failure. Though there are various models that predict financial distress, existing regression methods may be inadequate, especially when the finance variables follow a nonnormal frequency pattern. Furthermore, the regression approach encounters difficulties due to multicollinearity. Therefore, an alternate stochastic approach for predicting the probability of hospital bankruptcy is needed. The new method we propose involves several key steps to better assess financial health in hospitals. First, we compute and interpret the relationship between the hospital’s revenues and expenses for bivariate lognormal data. Next, we estimate the risk of bankruptcy due to the mismatch between revenues and expenses. We also determine the likelihood of a hospital’s expenses exceeding the state’s median expenses level. Lastly, we evaluate the hospital’s financial memory level to understand its level of financial stability. We believe that our novel approach to anticipating hospital bankruptcy may be useful for both hospital leaders and policymakers in making informed decisions and proactively managing risks to ensure the sustainability and stability of their institutions.
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
100
审稿时长
11 weeks
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