An efficient stopping rule for mitigating risk factors: Applications in pharmaceutical and generalized green supply chains

Q1 Decision Sciences
Avi Herbon, Dmitry Tsadikovich
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引用次数: 0

Abstract

Risks in supply chains are first identified and then prioritized based on their probability of occurrence and their impact. Attempts to mitigate risks in the absence of complete and accurate information about their likelihood and impact may constitute a significant waste of resources. Since the resources available for risk management are usually limited, firms need to know how to allocate these funds appropriately. That is, a strategy is required to determine which risks are a priority in terms of acquiring complete and accurate information. We develop a model that incorporates two conflicting terms to address this issue. The first, captured by entropy, measures the resources wasted due to risk factors for which there is inaccurate information about the probability of occurrence and impact. The second is the cost associated with the efforts expended in collecting accurate information about risk factors. To solve the model, we propose a stopping-rule algorithm. Its efficiency is verified using data gathered from a real-world pharmaceutical and generalized green supply chains. Numerous computerized experiments show that the stopping-rule algorithm prevails over the widely used risk-management Pareto rule, and that the algorithm is able to achieve the optimal solution in 94% of investigated cases.
降低风险因素的有效停止规则:在制药和广义绿色供应链中的应用
首先识别供应链中的风险,然后根据其发生的可能性和影响对其进行优先排序。在没有关于其可能性和影响的完整和准确信息的情况下试图减轻风险,可能会造成资源的严重浪费。由于可用于风险管理的资源通常是有限的,公司需要知道如何适当地分配这些资金。也就是说,就获取完整和准确的信息而言,需要一个策略来确定哪些风险是优先考虑的。我们开发了一个包含两个相互冲突的术语的模型来解决这个问题。第一个是由熵捕获的,它衡量由于风险因素而浪费的资源,这些风险因素关于发生和影响的概率的信息不准确。第二个是与收集有关风险因素的准确信息所花费的努力相关的成本。为了求解该模型,我们提出了一种停止规则算法。它的效率是通过从现实世界的制药和广义绿色供应链收集的数据来验证的。大量计算机实验表明,停止规则算法优于广泛使用的风险管理帕累托规则,并且该算法能够在94%的调查案例中获得最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Decision Making Applications in Management and Engineering
Decision Making Applications in Management and Engineering Decision Sciences-General Decision Sciences
CiteScore
14.40
自引率
0.00%
发文量
35
审稿时长
14 weeks
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