运筹与管理 ›› 2025, Vol. 34 ›› Issue (12): 17-24.DOI: 10.12005/orms.2025.0370

• 理论分析与方法探讨 • 上一篇    下一篇

基于非对称成本的鲁棒两阶段最小成本共识模型

李焕欢1, 纪颖2, 屈绍建3,4   

  1. 1.青岛理工大学 管理工程学院,山东 青岛 266520;
    2.上海大学 管理学院,上海 200444;
    3.南京信息工程大学 管理工程学院,江苏 南京 210044;
    4.安徽建筑大学 经济管理学院,安徽 合肥 230022
  • 收稿日期:2024-06-22 出版日期:2025-12-25 发布日期:2026-04-29
  • 通讯作者: 纪颖(1981-),女,吉林吉林人,博士,教授,研究方向:群体决策,供应链管理,组合优化。Email: jiying_1981@126.com。
  • 作者简介:李焕欢(1993-),女,山东青岛人,博士,研究方向:群决策理论与应用,鲁棒优化,随机规划。
  • 基金资助:
    中国博士后科学基金项目(2023M741865);青岛市博士后科学基金项目(QDBSH20220202211);国家自然科学基金资助项目(72171149,72171123)
       

Robust Two-stage Minimum Cost Consensus Model Based on Asymmetric Costs

LI Huanhuan1, JI Ying2, QU Shaojian3,4   

  1. 1. School of Management Engineering, Qingdao University of Technology, Qingdao 266520, China;
    2. School of Management, Shanghai University, Shanghai 200444, China;
    3. School of Management Science and Engineering, Nanjing University of Information Science and Technology, Nanjing 210044, China;
    4. School of Economics and Management, Anhui Jianzhu University, Hefei 230022, China
  • Received:2024-06-22 Online:2025-12-25 Published:2026-04-29

摘要: 面对现实中亟须解决的决策问题,决策者之间的意见可能存在很大差异,很难直接获得一个可接受的解决方案。对于未来可能出现的各种情景,决策者无法准确预测实际情况,会提前准备多种决策方案。此外,受到外部因素的干扰,很难获得调整成本在每种情景下的准确值。为此,本文重点关注非对称调整成本背景下不确定性影响因素及随机情景对总成本和共识的影响,构造了基于非对称成本鲁棒两阶段最小成本共识模型。首先,分析不确定决策环境的关键影响因素,生成几种随机情景,同时考虑每种情景中的扰动因素。其次,综合运用鲁棒优化、随机规划的思想,引入盒子集、多面体集和交叉集,构建基于非对称调整成本的鲁棒两阶段最小成本共识模型,并给出每种不确定集下的具体鲁棒等价模型,并应用Benders分解算法进行求解。最后,结合不确定决策背景下碳减排治理调查数据,验证鲁棒两阶段最小成本共识模型在碳减排治理问题中的效果,据此提出不确定环境下制造业的各企业代表专家的最优意见调整策略。

关键词: 群体决策与协商, 最小成本共识模型, 不确定成本, 两阶段随机规划, 鲁棒优化

Abstract: Consensus plays a crucial role in group decision-making.For decision-making problems that need to be solved in reality, the opinions of decision-makers may differ greatly from each other, and it is difficult to obtain an acceptable solution directly. For possible future situations, decision-makers will prepare multiple decision options in advance, but cannot accurately predict the actual situation. In addition, due to the interference of external factors, it is difficult to obtain the exact value of the adjustment cost in each case. This suggests that it is challenging for decision-makers to obtain real data, and the obtained data are often inaccurate. In the application of real-world decision problems, the decision-makers often don’t know the exact values of the parameters in the optimization model before giving the initial opinions. In order to effectively address the individual characteristics of uncertainty and complexity, two-stage stochastic programming and robust optimization are applied to deal with uncertainty in decision-making problems, and both techniques excel in solving such uncertainty problems. The former considers stochastic scenarios during the decision-making process, and it uses expectation as a preference criterion to minimize the expected total cost of obtaining the preferred solution. The latter considers parameter uptake throughout the decision-making process, where uncertainty can be modeled by the worst-case scenario in the cost uncertainty set, and finds a stable solution that satisfies all the optimization constraints in the worst-case scenario.
Firstly, the key influencing factors of the uncertain decision-making environment are analyzed. We generate several stochastic scenarios and introduce perturbations to unit costs in each scenario. This is used to improve a situation where it is difficult to accurately carry out modeling based on model-driven approaches. Secondly, robust optimization and stochastic programming are combined to focus on the constraints of asymmetric adjustment costs and uncertain decision environments. By introducing box set, polyhedral set and intersection set, a robust two-stage minimum cost consensus model based on asymmetric adjustment costs is constructed. The specific robust counterpart model under each uncertainty set is given, which provides the corresponding strategies in terms of cost compensation and optimal opinion adjustment. Finally, by combining the survey data of carbon emission reduction governance under uncertain background, the effectiveness of the robust two-stage minimum cost consensus model in the carbon emission reduction governance problem is verified. Based on this, the optimal opinion adjustment strategy of the experts representing each company in the manufacturing industry in uncertain environments is proposed. In order to better illustrate the effectiveness of the proposed model, it is compared with the previous models in the numerical experiment section, and it is found that the novel consensus model under the intersection set can cost less to reach consensus. However, if the decision-makers are more conservative, they can refer to the model under the box set.
This paper is concerned with the impact of uncertainty influences and stochastic scenarios on consensus costs and consensus in the context of asymmetric adjustment costs. A robust two-stage minimum cost consensus model that considers asymmetric cost uncertainty is constructed. The experimental results show that the novel model is more suitable for uncertain decision-making environments and can help decision-makers obtain more reliable choices. This paper does not take into account other factors that influence uncertainty in real-world decision-making situations. Future research can further investigate the impact of other uncertainty factors on total cost and consensus by considering extended models with uncertainty and information asymmetry, such as initial opinions, total adjustment cost thresholds and experts’ tolerance levels.

Key words: group decisions and negotiations, minimum cost consensus model, uncertainty cost, two-stage stochastic programming, robust optimization

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